This disclosure generally relates to devices and methods for capturing and processing images and audio from an environment of a user, and using information derived from captured images and audio.
Today, technological advancements make it possible for wearable devices to automatically capture images and audio, and store information that is associated with the captured images and audio. Certain devices have been used to digitally record aspects and personal experiences of one's life in an exercise typically called “lifelogging.” Some individuals log their life so they can retrieve moments from past activities, for example, social events, trips, etc. Lifelogging may also have significant benefits in other fields (e.g., business, fitness and healthcare, and social research). Lifelogging devices, while useful for tracking daily activities, may be improved with capability to enhance one's interaction in his environment with feedback and other advanced functionality based on the analysis of captured image and audio data.
Even though users can capture images and audio with their smartphones and some smartphone applications can process the captured information, smartphones may not be the best platform for serving as lifelogging apparatuses in view of their size and design. Lifelogging apparatuses should be small and light, so they can be easily worn. Moreover, with improvements in image capture devices, including wearable apparatuses, additional functionality may be provided to assist users in navigating in and around an environment, identifying persons and objects they encounter, and providing feedback to the users about their surroundings and activities. Therefore, there is a need for apparatuses and methods for automatically capturing and processing images and audio to provide useful information to users of the apparatuses, and for systems and methods to process and leverage information gathered by the apparatuses.
Embodiments consistent with the present disclosure provide devices and methods for automatically capturing and processing images and audio from an environment of a user, and systems and methods for processing information related to images and audio captured from the environment of the user.
In an embodiment, a system for selectively modifying audio signals may comprise at least one microphone configured to capture sounds from an environment of a user; and at least one processor. The at least one processor may be programmed to receive an audio signal representative of sounds captured by the at least one microphone; and determine a context associated with the captured sounds based on the audio signal. Subject to the context being included in a set of stored contexts, the at least one processor may be programmed to: determine at least one first speaker whose speech is to be amplified; identify at least one first portion of the audio signal associated with the determined at least one first speaker; amplify the at least one first portion of the audio signal; and transmit to a hearing interface device the amplified at least one first portion of the audio signal.
In an embodiment, a method for selectively modifying audio signals may comprise receiving at least one audio signal representative of the sounds captured by a microphone from an environment of a user; and determining a context associated with the captured sounds based on the audio signal. Subject to the context being included in a set of stored contexts, the method may comprise determining at least one first speaker whose speech is to be amplified; identifying at least one first portion of the audio signal associated with the determined at least one first speaker; amplifying the at least one first portion of the audio signal; and transmitting to a hearing interface device the amplified at least one first portion of the audio signal.
Consistent with other disclosed embodiments, non-transitory computer-readable storage media may store program instructions, which are executed by at least one processor and perform any of the methods described herein.
The foregoing general description and the following detailed description are exemplary and explanatory only and are not restrictive of the claims.
The accompanying drawings, which are incorporated in and constitute a part of this disclosure, illustrate various disclosed embodiments. In the drawings:
The following detailed description refers to the accompanying drawings. Wherever possible, the same reference numbers are used in the drawings and the following description to refer to the same or similar parts. While several illustrative embodiments are described herein, modifications, adaptations and other implementations are possible. For example, substitutions, additions or modifications may be made to the components illustrated in the drawings, and the illustrative methods described herein may be modified by substituting, reordering, removing, or adding steps to the disclosed methods. Accordingly, the following detailed description is not limited to the disclosed embodiments and examples. Instead, the proper scope is defined by the appended claims.
In some embodiments, apparatus 110 may communicate wirelessly or via a wire with a computing device 120. In some embodiments, computing device 120 may include, for example, a smartphone, or a tablet, or a dedicated processing unit, which may be portable (e.g., can be carried in a pocket of user 100). Although shown in
According to the disclosed embodiments, apparatus 110 may include an image sensor system 220 for capturing real-time image data of the field-of-view of user 100. In some embodiments, apparatus 110 may also include a processing unit 210 for controlling and performing the disclosed functionality of apparatus 110, such as to control the capture of image data, analyze the image data, and perform an action and/or output a feedback based on a hand-related trigger identified in the image data. According to the disclosed embodiments, a hand-related trigger may include a gesture performed by user 100 involving a portion of a hand of user 100. Further, consistent with some embodiments, a hand-related trigger may include a wrist-related trigger. Additionally, in some embodiments, apparatus 110 may include a feedback outputting unit 230 for producing an output of information to user 100.
As discussed above, apparatus 110 may include an image sensor 220 for capturing image data. The term “image sensor” refers to a device capable of detecting and converting optical signals in the near-infrared, infrared, visible, and ultraviolet spectrums into electrical signals. The electrical signals may be used to form an image or a video stream (i.e. image data) based on the detected signal. The term “image data” includes any form of data retrieved from optical signals in the near-infrared, infrared, visible, and ultraviolet spectrums. Examples of image sensors may include semiconductor charge-coupled devices (CCD), active pixel sensors in complementary metal-oxide-semiconductor (CMOS), or N-type metal-oxide-semiconductor (NMOS, Live MOS). In some cases, image sensor 220 may be part of a camera included in apparatus 110.
Apparatus 110 may also include a processor 210 for controlling image sensor 220 to capture image data and for analyzing the image data according to the disclosed embodiments. As discussed in further detail below with respect to
In some embodiments, the information or feedback information provided to user 100 may include time information. The time information may include any information related to a current time of day and, as described further below, may be presented in any sensory perceptive manner. In some embodiments, time information may include a current time of day in a preconfigured format (e.g., 2:30 pm or 14:30). Time information may include the time in the user's current time zone (e.g., based on a determined location of user 100), as well as an indication of the time zone and/or a time of day in another desired location. In some embodiments, time information may include a number of hours or minutes relative to one or more predetermined times of day. For example, in some embodiments, time information may include an indication that three hours and fifteen minutes remain until a particular hour (e.g., until 6:00 pm), or some other predetermined time. Time information may also include a duration of time passed since the beginning of a particular activity, such as the start of a meeting or the start of a jog, or any other activity. In some embodiments, the activity may be determined based on analyzed image data. In other embodiments, time information may also include additional information related to a current time and one or more other routine, periodic, or scheduled events. For example, time information may include an indication of the number of minutes remaining until the next scheduled event, as may be determined from a calendar function or other information retrieved from computing device 120 or server 250, as discussed in further detail below.
Feedback outputting unit 230 may include one or more feedback systems for providing the output of information to user 100. In the disclosed embodiments, the audible or visual feedback may be provided via any type of connected audible or visual system or both.
Feedback of information according to the disclosed embodiments may include audible feedback to user 100 (e.g., using a Bluetooth™ or other wired or wirelessly connected speaker, or a bone conduction headphone). Feedback outputting unit 230 of some embodiments may additionally or alternatively produce a visible output of information to user 100, for example, as part of an augmented reality display projected onto a lens of glasses 130 or provided via a separate heads up display in communication with apparatus 110, such as a display 260 provided as part of computing device 120, which may include an onboard automobile heads up display, an augmented reality device, a virtual reality device, a smartphone, PC, table, etc.
The term “computing device” refers to a device including a processing unit and having computing capabilities. Some examples of computing device 120 include a PC, laptop, tablet, or other computing systems such as an on-board computing system of an automobile, for example, each configured to communicate directly with apparatus 110 or server 250 over network 240. Another example of computing device 120 includes a smartphone having a display 260. In some embodiments, computing device 120 may be a computing system configured particularly for apparatus 110, and may be provided integral to apparatus 110 or tethered thereto. Apparatus 110 can also connect to computing device 120 over network 240 via any known wireless standard (e.g., Wi-Fi, Bluetooth®, etc.), as well as near-filed capacitive coupling, and other short range wireless techniques, or via a wired connection. In an embodiment in which computing device 120 is a smartphone, computing device 120 may have a dedicated application installed therein. For example, user 100 may view on display 260 data (e.g., images, video clips, extracted information, feedback information, etc.) that originate from or are triggered by apparatus 110. In addition, user 100 may select part of the data for storage in server 250.
Network 240 may be a shared, public, or private network, may encompass a wide area or local area, and may be implemented through any suitable combination of wired and/or wireless communication networks. Network 240 may further comprise an intranet or the Internet. In some embodiments, network 240 may include short range or near-field wireless communication systems for enabling communication between apparatus 110 and computing device 120 provided in close proximity to each other, such as on or near a user's person, for example. Apparatus 110 may establish a connection to network 240 autonomously, for example, using a wireless module (e.g., Wi-Fi, cellular). In some embodiments, apparatus 110 may use the wireless module when being connected to an external power source, to prolong battery life. Further, communication between apparatus 110 and server 250 may be accomplished through any suitable communication channels, such as, for example, a telephone network, an extranet, an intranet, the Internet, satellite communications, off-line communications, wireless communications, transponder communications, a local area network (LAN), a wide area network (WAN), and a virtual private network (VPN).
As shown in
An example of wearable apparatus 110 incorporated with glasses 130 according to some embodiments (as discussed in connection with
In some embodiments, support 310 may include a quick release mechanism for disengaging and reengaging apparatus 110. For example, support 310 and apparatus 110 may include magnetic elements. As an alternative example, support 310 may include a male latch member and apparatus 110 may include a female receptacle. In other embodiments, support 310 can be an integral part of a pair of glasses, or sold separately and installed by an optometrist. For example, support 310 may be configured for mounting on the arms of glasses 130 near the frame front, but before the hinge. Alternatively, support 310 may be configured for mounting on the bridge of glasses 130.
In some embodiments, apparatus 110 may be provided as part of a glasses frame 130, with or without lenses. Additionally, in some embodiments, apparatus 110 may be configured to provide an augmented reality display projected onto a lens of glasses 130 (if provided), or alternatively, may include a display for projecting time information, for example, according to the disclosed embodiments. Apparatus 110 may include the additional display or alternatively, may be in communication with a separately provided display system that may or may not be attached to glasses 130.
In some embodiments, apparatus 110 may be implemented in a form other than wearable glasses, as described above with respect to
In some embodiments, apparatus 110 includes a function button 430 for enabling user 100 to provide input to apparatus 110. Function button 430 may accept different types of tactile input (e.g., a tap, a click, a double-click, a long press, a right-to-left slide, a left-to-right slide). In some embodiments, each type of input may be associated with a different action. For example, a tap may be associated with the function of taking a picture, while a right-to-left slide may be associated with the function of recording a video.
Apparatus 110 may be attached to an article of clothing (e.g., a shirt, a belt, pants, etc.), of user 100 at an edge of the clothing using a clip 431 as shown in
An example embodiment of apparatus 110 is shown in
Various views of apparatus 110 are illustrated in
The example embodiments discussed above with respect to
Processor 210, depicted in
Although, in the embodiment illustrated in
In some embodiments, processor 210 may process a plurality of images captured from the environment of user 100 to determine different parameters related to capturing subsequent images. For example, processor 210 can determine, based on information derived from captured image data, a value for at least one of the following: an image resolution, a compression ratio, a cropping parameter, frame rate, a focus point, an exposure time, an aperture size, and a light sensitivity. The determined value may be used in capturing at least one subsequent image. Additionally, processor 210 can detect images including at least one hand-related trigger in the environment of the user and perform an action and/or provide an output of information to a user via feedback outputting unit 230.
In another embodiment, processor 210 can change the aiming direction of image sensor 220. For example, when apparatus 110 is attached with clip 420, the aiming direction of image sensor 220 may not coincide with the field-of-view of user 100. Processor 210 may recognize certain situations from the analyzed image data and adjust the aiming direction of image sensor 220 to capture relevant image data. For example, in one embodiment, processor 210 may detect an interaction with another individual and sense that the individual is not fully in view, because image sensor 220 is tilted down. Responsive thereto, processor 210 may adjust the aiming direction of image sensor 220 to capture image data of the individual. Other scenarios are also contemplated where processor 210 may recognize the need to adjust an aiming direction of image sensor 220.
In some embodiments, processor 210 may communicate data to feedback-outputting unit 230, which may include any device configured to provide information to a user 100. Feedback outputting unit 230 may be provided as part of apparatus 110 (as shown) or may be provided external to apparatus 110 and communicatively coupled thereto. Feedback-outputting unit 230 may be configured to output visual or nonvisual feedback based on signals received from processor 210, such as when processor 210 recognizes a hand-related trigger in the analyzed image data.
The term “feedback” refers to any output or information provided in response to processing at least one image in an environment. In some embodiments, as similarly described above, feedback may include an audible or visible indication of time information, detected text or numerals, the value of currency, a branded product, a person's identity, the identity of a landmark or other environmental situation or condition including the street names at an intersection or the color of a traffic light, etc., as well as other information associated with each of these. For example, in some embodiments, feedback may include additional information regarding the amount of currency still needed to complete a transaction, information regarding the identified person, historical information or times and prices of admission etc. of a detected landmark etc. In some embodiments, feedback may include an audible tone, a tactile response, and/or information previously recorded by user 100. Feedback-outputting unit 230 may comprise appropriate components for outputting acoustical and tactile feedback. For example, feedback-outputting unit 230 may comprise audio headphones, a hearing aid type device, a speaker, a bone conduction headphone, interfaces that provide tactile cues, vibrotactile stimulators, etc. In some embodiments, processor 210 may communicate signals with an external feedback outputting unit 230 via a wireless transceiver 530, a wired connection, or some other communication interface. In some embodiments, feedback outputting unit 230 may also include any suitable display device for visually displaying information to user 100.
As shown in
As further shown in
Mobile power source 520 may power one or more wireless transceivers (e.g., wireless transceiver 530 in
Apparatus 110 may operate in a first processing-mode and in a second processing-mode, such that the first processing-mode may consume less power than the second processing-mode. For example, in the first processing-mode, apparatus 110 may capture images and process the captured images to make real-time decisions based on an identifying hand-related trigger, for example. In the second processing-mode, apparatus 110 may extract information from stored images in memory 550 and delete images from memory 550. In some embodiments, mobile power source 520 may provide more than fifteen hours of processing in the first processing-mode and about three hours of processing in the second processing-mode. Accordingly, different processing-modes may allow mobile power source 520 to produce sufficient power for powering apparatus 110 for various time periods (e.g., more than two hours, more than four hours, more than ten hours, etc.).
In some embodiments, apparatus 110 may use first processor 210a in the first processing-mode when powered by mobile power source 520, and second processor 210b in the second processing-mode when powered by external power source 580 that is connectable via power connector 510. In other embodiments, apparatus 110 may determine, based on predefined conditions, which processors or which processing modes to use. Apparatus 110 may operate in the second processing-mode even when apparatus 110 is not powered by external power source 580. For example, apparatus 110 may determine that it should operate in the second processing-mode when apparatus 110 is not powered by external power source 580, if the available storage space in memory 550 for storing new image data is lower than a predefined threshold.
Although one wireless transceiver is depicted in
In some embodiments, processor 210 and processor 540 are configured to extract information from captured image data. The term “extracting information” includes any process by which information associated with objects, individuals, locations, events, etc., is identified in the captured image data by any means known to those of ordinary skill in the art. In some embodiments, apparatus 110 may use the extracted information to send feedback or other real-time indications to feedback outputting unit 230 or to computing device 120. In some embodiments, processor 210 may identify in the image data the individual standing in front of user 100, and send computing device 120 the name of the individual and the last time user 100 met the individual. In another embodiment, processor 210 may identify in the image data, one or more visible triggers, including a hand-related trigger, and determine whether the trigger is associated with a person other than the user of the wearable apparatus to selectively determine whether to perform an action associated with the trigger. One such action may be to provide a feedback to user 100 via feedback-outputting unit 230 provided as part of (or in communication with) apparatus 110 or via a feedback unit 545 provided as part of computing device 120. For example, feedback-outputting unit 545 may be in communication with display 260 to cause the display 260 to visibly output information. In some embodiments, processor 210 may identify in the image data a hand-related trigger and send computing device 120 an indication of the trigger. Processor 540 may then process the received trigger information and provide an output via feedback outputting unit 545 or display 260 based on the hand-related trigger. In other embodiments, processor 540 may determine a hand-related trigger and provide suitable feedback similar to the above, based on image data received from apparatus 110. In some embodiments, processor 540 may provide instructions or other information, such as environmental information to apparatus 110 based on an identified hand-related trigger.
In some embodiments, processor 210 may identify other environmental information in the analyzed images, such as an individual standing in front user 100, and send computing device 120 information related to the analyzed information such as the name of the individual and the last time user 100 met the individual. In a different embodiment, processor 540 may extract statistical information from captured image data and forward the statistical information to server 250. For example, certain information regarding the types of items a user purchases, or the frequency a user patronizes a particular merchant, etc. may be determined by processor 540. Based on this information, server 250 may send computing device 120 coupons and discounts associated with the user's preferences.
When apparatus 110 is connected or wirelessly connected to computing device 120, apparatus 110 may transmit at least part of the image data stored in memory 550a for storage in memory 550b. In some embodiments, after computing device 120 confirms that transferring the part of image data was successful, processor 540 may delete the part of the image data. The term “delete” means that the image is marked as ‘deleted’ and other image data may be stored instead of it, but does not necessarily mean that the image data was physically removed from the memory.
As will be appreciated by a person skilled in the art having the benefit of this disclosure, numerous variations and/or modifications may be made to the disclosed embodiments. Not all components are essential for the operation of apparatus 110. Any component may be located in any appropriate apparatus and the components may be rearranged into a variety of configurations while providing the functionality of the disclosed embodiments. For example, in some embodiments, apparatus 110 may include a camera, a processor, and a wireless transceiver for sending data to another device. Therefore, the foregoing configurations are examples and, regardless of the configurations discussed above, apparatus 110 can capture, store, and/or process images.
Further, the foregoing and following description refers to storing and/or processing images or image data. In the embodiments disclosed herein, the stored and/or processed images or image data may comprise a representation of one or more images captured by image sensor 220. As the term is used herein, a “representation” of an image (or image data) may include an entire image or a portion of an image. A representation of an image (or image data) may have the same resolution or a lower resolution as the image (or image data), and/or a representation of an image (or image data) may be altered in some respect (e.g., be compressed, have a lower resolution, have one or more colors that are altered, etc.).
For example, apparatus 110 may capture an image and store a representation of the image that is compressed as a .JPG file. As another example, apparatus 110 may capture an image in color, but store a black-and-white representation of the color image. As yet another example, apparatus 110 may capture an image and store a different representation of the image (e.g., a portion of the image). For example, apparatus 110 may store a portion of an image that includes a face of a person who appears in the image, but that does not substantially include the environment surrounding the person. Similarly, apparatus 110 may, for example, store a portion of an image that includes a product that appears in the image, but does not substantially include the environment surrounding the product. As yet another example, apparatus 110 may store a representation of an image at a reduced resolution (i.e., at a resolution that is of a lower value than that of the captured image). Storing representations of images may allow apparatus 110 to save storage space in memory 550. Furthermore, processing representations of images may allow apparatus 110 to improve processing efficiency and/or help to preserve battery life.
In addition to the above, in some embodiments, any one of apparatus 110 or computing device 120, via processor 210 or 540, may further process the captured image data to provide additional functionality to recognize objects and/or gestures and/or other information in the captured image data. In some embodiments, actions may be taken based on the identified objects, gestures, or other information. In some embodiments, processor 210 or 540 may identify in the image data, one or more visible triggers, including a hand-related trigger, and determine whether the trigger is associated with a person other than the user to determine whether to perform an action associated with the trigger.
Some embodiments of the present disclosure may include an apparatus securable to an article of clothing of a user. Such an apparatus may include two portions, connectable by a connector. A capturing unit may be designed to be worn on the outside of a user's clothing, and may include an image sensor for capturing images of a user's environment. The capturing unit may be connected to or connectable to a power unit, which may be configured to house a power source and a processing device. The capturing unit may be a small device including a camera or other device for capturing images. The capturing unit may be designed to be inconspicuous and unobtrusive, and may be configured to communicate with a power unit concealed by a user's clothing. The power unit may include bulkier aspects of the system, such as transceiver antennas, at least one battery, a processing device, etc. In some embodiments, communication between the capturing unit and the power unit may be provided by a data cable included in the connector, while in other embodiments, communication may be wirelessly achieved between the capturing unit and the power unit. Some embodiments may permit alteration of the orientation of an image sensor of the capture unit, for example to better capture images of interest.
Image sensor 220 may be configured to be movable with the head of user 100 in such a manner that an aiming direction of image sensor 220 substantially coincides with a field of view of user 100. For example, as described above, a camera associated with image sensor 220 may be installed within capturing unit 710 at a predetermined angle in a position facing slightly upwards or downwards, depending on an intended location of capturing unit 710. Accordingly, the set aiming direction of image sensor 220 may match the field-of-view of user 100. In some embodiments, processor 210 may change the orientation of image sensor 220 using image data provided from image sensor 220. For example, processor 210 may recognize that a user is reading a book and determine that the aiming direction of image sensor 220 is offset from the text. That is, because the words in the beginning of each line of text are not fully in view, processor 210 may determine that image sensor 220 is tilted in the wrong direction. Responsive thereto, processor 210 may adjust the aiming direction of image sensor 220.
Orientation identification module 601 may be configured to identify an orientation of an image sensor 220 of capturing unit 710. An orientation of an image sensor 220 may be identified, for example, by analysis of images captured by image sensor 220 of capturing unit 710, by tilt or attitude sensing devices within capturing unit 710, and by measuring a relative direction of orientation adjustment unit 705 with respect to the remainder of capturing unit 710.
Orientation adjustment module 602 may be configured to adjust an orientation of image sensor 220 of capturing unit 710. As discussed above, image sensor 220 may be mounted on an orientation adjustment unit 705 configured for movement. Orientation adjustment unit 705 may be configured for rotational and/or lateral movement in response to commands from orientation adjustment module 602. In some embodiments orientation adjustment unit 705 may be adjust an orientation of image sensor 220 via motors, electromagnets, permanent magnets, and/or any suitable combination thereof.
In some embodiments, monitoring module 603 may be provided for continuous monitoring. Such continuous monitoring may include tracking a movement of at least a portion of an object included in one or more images captured by the image sensor. For example, in one embodiment, apparatus 110 may track an object as long as the object remains substantially within the field-of-view of image sensor 220. In additional embodiments, monitoring module 603 may engage orientation adjustment module 602 to instruct orientation adjustment unit 705 to continually orient image sensor 220 towards an object of interest. For example, in one embodiment, monitoring module 603 may cause image sensor 220 to adjust an orientation to ensure that a certain designated object, for example, the face of a particular person, remains within the field-of view of image sensor 220, even as that designated object moves about. In another embodiment, monitoring module 603 may continuously monitor an area of interest included in one or more images captured by the image sensor. For example, a user may be occupied by a certain task, for example, typing on a laptop, while image sensor 220 remains oriented in a particular direction and continuously monitors a portion of each image from a series of images to detect a trigger or other event. For example, image sensor 210 may be oriented towards a piece of laboratory equipment and monitoring module 603 may be configured to monitor a status light on the laboratory equipment for a change in status, while the user's attention is otherwise occupied.
In some embodiments consistent with the present disclosure, capturing unit 710 may include a plurality of image sensors 220. The plurality of image sensors 220 may each be configured to capture different image data. For example, when a plurality of image sensors 220 are provided, the image sensors 220 may capture images having different resolutions, may capture wider or narrower fields of view, and may have different levels of magnification. Image sensors 220 may be provided with varying lenses to permit these different configurations. In some embodiments, a plurality of image sensors 220 may include image sensors 220 having different orientations. Thus, each of the plurality of image sensors 220 may be pointed in a different direction to capture different images. The fields of view of image sensors 220 may be overlapping in some embodiments. The plurality of image sensors 220 may each be configured for orientation adjustment, for example, by being paired with an image adjustment unit 705. In some embodiments, monitoring module 603, or another module associated with memory 550, may be configured to individually adjust the orientations of the plurality of image sensors 220 as well as to turn each of the plurality of image sensors 220 on or off as may be required. In some embodiments, monitoring an object or person captured by an image sensor 220 may include tracking movement of the object across the fields of view of the plurality of image sensors 220.
Embodiments consistent with the present disclosure may include connectors configured to connect a capturing unit and a power unit of a wearable apparatus. Capturing units consistent with the present disclosure may include least one image sensor configured to capture images of an environment of a user. Power units consistent with the present disclosure may be configured to house a power source and/or at least one processing device. Connectors consistent with the present disclosure may be configured to connect the capturing unit and the power unit, and may be configured to secure the apparatus to an article of clothing such that the capturing unit is positioned over an outer surface of the article of clothing and the power unit is positioned under an inner surface of the article of clothing. Exemplary embodiments of capturing units, connectors, and power units consistent with the disclosure are discussed in further detail with respect to
Capturing unit 710 may include an image sensor 220 and an orientation adjustment unit 705 (as illustrated in
Connector 730 may include a clip 715 or other mechanical connection designed to clip or attach capturing unit 710 and power unit 720 to an article of clothing 750 as illustrated in
In some embodiments, connector 730 may include a flexible printed circuit board (PCB).
In further embodiments, an apparatus securable to an article of clothing may further include protective circuitry associated with power source 520 housed in in power unit 720.
Protective circuitry 775 may be configured to protect image sensor 220 and/or other elements of capturing unit 710 from potentially dangerous currents and/or voltages produced by mobile power source 520. Protective circuitry 775 may include passive components such as capacitors, resistors, diodes, inductors, etc., to provide protection to elements of capturing unit 710. In some embodiments, protective circuitry 775 may also include active components, such as transistors, to provide protection to elements of capturing unit 710. For example, in some embodiments, protective circuitry 775 may comprise one or more resistors serving as fuses. Each fuse may comprise a wire or strip that melts (thereby braking a connection between circuitry of image capturing unit 710 and circuitry of power unit 720) when current flowing through the fuse exceeds a predetermined limit (e.g., 500 milliamps, 900 milliamps, 1 amp, 1.1 amps, 2 amp, 2.1 amps, 3 amps, etc.) Any or all of the previously described embodiments may incorporate protective circuitry 775.
In some embodiments, the wearable apparatus may transmit data to a computing device (e.g., a smartphone, tablet, watch, computer, etc.) over one or more networks via any known wireless standard (e.g., cellular, Wi-Fi, Bluetooth®, etc.), or via near-filed capacitive coupling, other short range wireless techniques, or via a wired connection. Similarly, the wearable apparatus may receive data from the computing device over one or more networks via any known wireless standard (e.g., cellular, Wi-Fi, Bluetooth®, etc.), or via near-filed capacitive coupling, other short range wireless techniques, or via a wired connection. The data transmitted to the wearable apparatus and/or received by the wireless apparatus may include images, portions of images, identifiers related to information appearing in analyzed images or associated with analyzed audio, or any other data representing image and/or audio data. For example, an image may be analyzed and an identifier related to an activity occurring in the image may be transmitted to the computing device (e.g., the “paired device”). In the embodiments described herein, the wearable apparatus may process images and/or audio locally (on board the wearable apparatus) and/or remotely (via a computing device). Further, in the embodiments described herein, the wearable apparatus may transmit data related to the analysis of images and/or audio to a computing device for further analysis, display, and/or transmission to another device (e.g., a paired device). Further, a paired device may execute one or more applications (apps) to process, display, and/or analyze data (e.g., identifiers, text, images, audio, etc.) received from the wearable apparatus.
Some of the disclosed embodiments may involve systems, devices, methods, and software products for determining at least one keyword. For example, at least one keyword may be determined based on data collected by apparatus 110. At least one search query may be determined based on the at least one keyword. The at least one search query may be transmitted to a search engine.
In some embodiments, at least one keyword may be determined based on at least one or more images captured by image sensor 220. In some cases, the at least one keyword may be selected from a keywords pool stored in memory. In some cases, optical character recognition (OCR) may be performed on at least one image captured by image sensor 220, and the at least one keyword may be determined based on the OCR result. In some cases, at least one image captured by image sensor 220 may be analyzed to recognize: a person, an object, a location, a scene, and so forth. Further, the at least one keyword may be determined based on the recognized person, object, location, scene, etc. For example, the at least one keyword may comprise: a person's name, an object's name, a place's name, a date, a sport team's name, a movie's name, a book's name, and so forth.
In some embodiments, at least one keyword may be determined based on the user's behavior. The user's behavior may be determined based on an analysis of the one or more images captured by image sensor 220. In some embodiments, at least one keyword may be determined based on activities of a user and/or other person. The one or more images captured by image sensor 220 may be analyzed to identify the activities of the user and/or the other person who appears in one or more images captured by image sensor 220. In some embodiments, at least one keyword may be determined based on at least one or more audio segments captured by apparatus 110. In some embodiments, at least one keyword may be determined based on at least GPS information associated with the user. In some embodiments, at least one keyword may be determined based on at least the current time and/or date.
In some embodiments, at least one search query may be determined based on at least one keyword. In some cases, the at least one search query may comprise the at least one keyword. In some cases, the at least one search query may comprise the at least one keyword and additional keywords provided by the user. In some cases, the at least one search query may comprise the at least one keyword and one or more images, such as images captured by image sensor 220. In some cases, the at least one search query may comprise the at least one keyword and one or more audio segments, such as audio segments captured by apparatus 110.
In some embodiments, the at least one search query may be transmitted to a search engine. In some embodiments, search results provided by the search engine in response to the at least one search query may be provided to the user. In some embodiments, the at least one search query may be used to access a database.
For example, in one embodiment, the keywords may include a name of a type of food, such as quinoa, or a brand name of a food product; and the search will output information related to desirable quantities of consumption, facts about the nutritional profile, and so forth. In another example, in one embodiment, the keywords may include a name of a restaurant, and the search will output information related to the restaurant, such as a menu, opening hours, reviews, and so forth. The name of the restaurant may be obtained using OCR on an image of signage, using GPS information, and so forth. In another example, in one embodiment, the keywords may include a name of a person, and the search will provide information from a social network profile of the person. The name of the person may be obtained using OCR on an image of a name tag attached to the person's shirt, using face recognition algorithms, and so forth. In another example, in one embodiment, the keywords may include a name of a book, and the search will output information related to the book, such as reviews, sales statistics, information regarding the author of the book, and so forth. In another example, in one embodiment, the keywords may include a name of a movie, and the search will output information related to the movie, such as reviews, box office statistics, information regarding the cast of the movie, show times, and so forth. In another example, in one embodiment, the keywords may include a name of a sport team, and the search will output information related to the sport team, such as statistics, latest results, future schedule, information regarding the players of the sport team, and so forth. For example, the name of the sport team may be obtained using audio recognition algorithms.
Camera-Based Directional Hearing Aid
As discussed previously, the disclosed embodiments may include providing feedback, such as acoustical and tactile feedback, to one or more auxiliary devices in response to processing at least one image in an environment. In some embodiments, the auxiliary device may be an earpiece or other device used to provide auditory feedback to the user, such as a hearing aid. Traditional hearing aids often use microphones to amplify sounds in the user's environment. These traditional systems, however, are often unable to distinguish between sounds that may be of particular importance to the wearer of the device, or may do so on a limited basis. Using the systems and methods of the disclosed embodiments, various improvements to traditional hearing aids are provided, as described in detail below.
In one embodiment, a camera-based directional hearing aid may be provided for selectively amplifying sounds based on a look direction of a user. The hearing aid may communicate with an image capturing device, such as apparatus 110, to determine the look direction of the user. This look direction may be used to isolate and/or selectively amplify sounds received from that direction (e.g., sounds from individuals in the user's look direction, etc.). Sounds received from directions other than the user's look direction may be suppressed, attenuated, filtered or the like.
Hearing interface device 1710 may be any device configured to provide audible feedback to user 100. Hearing interface device 1710 may correspond to feedback outputting unit 230, described above, and therefore any descriptions of feedback outputting unit 230 may also apply to hearing interface device 1710. In some embodiments, hearing interface device 1710 may be separate from feedback outputting unit 230 and may be configured to receive signals from feedback outputting unit 230. As shown in
Hearing interface device 1710 may have various other configurations or placement locations. In some embodiments, hearing interface device 1710 may comprise a bone conduction headphone 1711, as shown in
Apparatus 110 may be configured to determine a user look direction 1750 of user 100. In some embodiments, user look direction 1750 may be tracked by monitoring a direction of the chin, or another body part or face part of user 100 relative to an optical axis of a camera sensor 1751. Apparatus 110 may be configured to capture one or more images of the surrounding environment of user, for example, using image sensor 220. The captured images may include a representation of a chin of user 100, which may be used to determine user look direction 1750. Processor 210 (and/or processors 210a and 210b) may be configured to analyze the captured images and detect the chin or another part of user 100 using various image detection or processing algorithms (e.g., using convolutional neural networks (CNN), scale-invariant feature transform (SIFT), histogram of oriented gradients (HOG) features, or other techniques). Based on the detected representation of a chin of user 100, look direction 1750 may be determined. Look direction 1750 may be determined in part by comparing the detected representation of a chin of user 100 to an optical axis of a camera sensor 1751. For example, the optical axis 1751 may be known or fixed in each image and processor 210 may determine look direction 1750 by comparing a representative angle of the chin of user 100 to the direction of optical axis 1751. While the process is described using a representation of a chin of user 100, various other features may be detected for determining user look direction 1750, including the user's face, nose, eyes, hand, etc.
In other embodiments, user look direction 1750 may be aligned more closely with the optical axis 1751. For example, as discussed above, apparatus 110 may be affixed to a pair of glasses of user 100, as shown in
Apparatus 110 may further comprise one or more microphones 1720 for capturing sounds from the environment of user 100. Microphone 1720 may also be configured to determine a directionality of sounds in the environment of user 100. For example, microphone 1720 may comprise one or more directional microphones, which may be more sensitive to picking up sounds in certain directions. For example, microphone 1720 may comprise a unidirectional microphone, designed to pick up sound from a single direction or small range of directions. Microphone 1720 may also comprise a cardioid microphone, which may be sensitive to sounds from the front and sides. Microphone 1720 may also include a microphone array, which may comprise additional microphones, such as microphone 1721 on the front of apparatus 110, or microphone 1722, placed on the side of apparatus 110. In some embodiments, microphone 1720 may be a multi-port microphone for capturing multiple audio signals. The microphones shown in
As a preliminary step before other audio analysis operations, the sound captured from an environment of a user may be classified using any audio classification technique. For example, the sound may be classified into segments containing music, tones, laughter, screams, or the like. Indications of the respective segments may be logged in a database and may prove highly useful for life logging applications. As one example, the logged information may enable the system to retrieve and/or determine a mood when the user met another person. Additionally, such processing is relatively fast and efficient, and does not require significant computing resources, and transmitting the information to a destination does not require significant bandwidth. Moreover, once certain parts of the audio are classified as non-speech, more computing resources may be available for processing the other segments.
Based on the determined user look direction 1750, processor 210 may selectively condition or amplify sounds from a region associated with user look direction 1750.
Processor 210 may be configured to cause selective conditioning of sounds in the environment of user 100 based on region 1830. The conditioned audio signal may be transmitted to hearing interface device 1710, and thus may provide user 100 with audible feedback corresponding to the look direction of the user. For example, processor 210 may determine that sound 1820 (which may correspond to the voice of an individual 1810, or to noise for example) is within region 1830. Processor 210 may then perform various conditioning techniques on the audio signals received from microphone 1720. The conditioning may include amplifying audio signals determined to correspond to sound 1820 relative to other audio signals. Amplification may be accomplished digitally, for example by processing audio signals associated with 1820 relative to other signals. Amplification may also be accomplished by changing one or more parameters of microphone 1720 to focus on audio sounds emanating from region 1830 (e.g., a region of interest) associated with user look direction 1750. For example, microphone 1720 may be a directional microphone that and processor 210 may perform an operation to focus microphone 1720 on sound 1820 or other sounds within region 1830. Various other techniques for amplifying sound 1820 may be used, such as using a beamforming microphone array, acoustic telescope techniques, etc.
Conditioning may also include attenuation or suppressing one or more audio signals received from directions outside of region 1830. For example, processor 1820 may attenuate sounds 1821 and 1822. Similar to amplification of sound 1820, attenuation of sounds may occur through processing audio signals, or by varying one or more parameters associated with one or more microphones 1720 to direct focus away from sounds emanating from outside of region 1830.
In some embodiments, conditioning may further include changing a tone of audio signals corresponding to sound 1820 to make sound 1820 more perceptible to user 100. For example, user 100 may have lesser sensitivity to tones in a certain range and conditioning of the audio signals may adjust the pitch of sound 1820 to make it more perceptible to user 100. For example, user 100 may experience hearing loss in frequencies above 10 khz. Accordingly, processor 210 may remap higher frequencies (e.g., at 15 khz) to 10 khz. In some embodiments processor 210 may be configured to change a rate of speech associated with one or more audio signals. Accordingly, processor 210 may be configured to detect speech within one or more audio signals received by microphone 1720, for example using voice activity detection (VAD) algorithms or techniques. If sound 1820 is determined to correspond to voice or speech, for example from individual 1810, processor 220 may be configured to vary the playback rate of sound 1820. For example, the rate of speech of individual 1810 may be decreased to make the detected speech more perceptible to user 100. Various other processing may be performed, such as modifying the tone of sound 1820 to maintain the same pitch as the original audio signal, or to reduce noise within the audio signal. If speech recognition has been performed on the audio signal associated with sound 1820, conditioning may further include modifying the audio signal based on the detected speech. For example, processor 210 may introduce pauses or increase the duration of pauses between words and/or sentences, which may make the speech easier to understand.
The conditioned audio signal may then be transmitted to hearing interface device 1710 and produced for user 100. Thus, in the conditioned audio signal, sound 1820 may be easier to hear to user 100, louder and/or more easily distinguishable than sounds 1821 and 1822, which may represent background noise within the environment.
In step 1910, process 1900 may include receiving a plurality of images from an environment of a user captured by a camera. The camera may be a wearable camera such as camera 1730 of apparatus 110. In step 1912, process 1900 may include receiving audio signals representative of sounds received by at least one microphone. The microphone may be configured to capture sounds from an environment of the user. For example, the microphone may be microphone 1720, as described above. Accordingly, the microphone may include a directional microphone, a microphone array, a multi-port microphone, or various other types of microphones. In some embodiments, the microphone and wearable camera may be included in a common housing, such as the housing of apparatus 110. The one or more processors performing process 1900 may also be included in the housing or may be included in a second housing. In such embodiments, the processor(s) may be configured to receive images and/or audio signals from the common housing via a wireless link (e.g., Bluetooth™, NFC, etc.). Accordingly, the common housing (e.g., apparatus 110) and the second housing (e.g., computing device 120) may further comprise transmitters or various other communication components.
In step 1914, process 1900 may include determining a look direction for the user based on analysis of at least one of the plurality of images. As discussed above, various techniques may be used to determine the user look direction. In some embodiments, the look direction may be determined based, at least in part, upon detection of a representation of a chin of a user in one or more images. The images may be processed to determine a pointing direction of the chin relative to an optical axis of the wearable camera, as discussed above.
In step 1916, process 1900 may include causing selective conditioning of at least one audio signal received by the at least one microphone from a region associated with the look direction of the user. As described above, the region may be determined based on the user look direction determined in step 1914. The range may be associated with an angular width about the look direction (e.g., 10 degrees, 20 degrees, 45 degrees, etc.). Various forms of conditioning may be performed on the audio signal, as discussed above. In some embodiments, conditioning may include changing the tone or playback speed of an audio signal. For example, conditioning may include changing a rate of speech associated with the audio signal. In some embodiments, the conditioning may include amplification of the audio signal relative to other audio signals received from outside of the region associated with the look direction of the user. Amplification may be performed by various means, such as operation of a directional microphone configured to focus on audio sounds emanating from the region, or varying one or more parameters associated with the microphone to cause the microphone to focus on audio sounds emanating from the region. The amplification may include attenuating or suppressing one or more audio signals received by the microphone from directions outside the region associated with the look direction of user 110.
In step 1918, process 1900 may include causing transmission of the at least one conditioned audio signal to a hearing interface device configured to provide sound to an ear of the user. The conditioned audio signal, for example, may be transmitted to hearing interface device 1710, which may provide sound corresponding to the audio signal to user 100. The processor performing process 1900 may further be configured to cause transmission to the hearing interface device of one or more audio signals representative of background noise, which may be attenuated relative to the at least one conditioned audio signal. For example, processor 220 may be configured to transmit audio signals corresponding to sounds 1820, 1821, and 1822. The signal associated with 1820, however, may be modified in a different manner, for example amplified, from sounds 1821 and 1822 based on a determination that sound 1820 is within region 1830. In some embodiments, hearing interface device 1710 may include a speaker associated with an earpiece. For example, hearing interface device may be inserted at least partially into the ear of the user for providing audio to the user. Hearing interface device may also be external to the ear, such as a behind-the-ear hearing device, one or more headphones, a small portable speaker, or the like. In some embodiments, hearing interface device may include a bone conduction microphone, configured to provide an audio signal to user through vibrations of a bone of the user's head. Such devices may be placed in contact with the exterior of the user's skin, or may be implanted surgically and attached to the bone of the user.
Hearing Aid with Voice and/or Image Recognition
Consistent with the disclosed embodiments, a hearing aid may selectively amplify audio signals associated with a voice of a recognized individual. The hearing aid system may store voice characteristics and/or facial features of a recognized person to aid in recognition and selective amplification. For example, when an individual enters the field of view of apparatus 110, the individual may be recognized as an individual that has been introduced to the device, or that has possibly interacted with user 100 in the past (e.g., a friend, colleague, relative, prior acquaintance, etc.). Accordingly, audio signals associated with the recognized individual's voice may be isolated and/or selectively amplified relative to other sounds in the environment of the user. Audio signals associated with sounds received from directions other than the individual's direction may be suppressed, attenuated, filtered or the like.
User 100 may wear a hearing aid device similar to the camera-based hearing aid device discussed above. For example, the hearing aid device may be hearing interface device 1720, as shown in
In some embodiments, hearing interface device 1710 may comprise a bone conduction headphone 1711, as shown in
Hearing interface device 1710 may be configured to communicate with a camera device, such as apparatus 110. Such communication may be through a wired connection, or may be made wirelessly (e.g., using a Bluetooth™, NFC, or forms of wireless communication). As discussed above, apparatus 110 may be worn by user 100 in various configurations, including being physically connected to a shirt, necklace, a belt, glasses, a wrist strap, a button, or other articles associated with user 100. In some embodiments, one or more additional devices may also be included, such as computing device 120. Accordingly, one or more of the processes or functions described herein with respect to apparatus 110 or processor 210 may be performed by computing device 120 and/or processor 540.
As discussed above, apparatus 110 may comprise at least one microphone and at least one image capture device. Apparatus 110 may comprise microphone 1720, as described with respect to
Apparatus 110 may be configured to recognize an individual in the environment of user 100.
Facial recognition component 2040 may be configured to identify one or more faces within the environment of user 100. For example, facial recognition component 2040 may identify facial features on the face 2011 of individual 2010, such as the eyes, nose, cheekbones, jaw, or other features. Facial recognition component 2040 may then analyze the relative size and position of these features to identify the user. Facial recognition component 2040 may utilize one or more algorithms for analyzing the detected features, such as principal component analysis (e.g., using eigenfaces), linear discriminant analysis, elastic bunch graph matching (e.g., using Fisherface), Local Binary Patterns Histograms (LBPH), Scale Invariant Feature Transform (SIFT), Speed Up Robust Features (SURF), or the like. Other facial recognition techniques such as 3-Dimensional recognition, skin texture analysis, and/or thermal imaging may also be used to identify individuals. Other features besides facial features may also be used for identification, such as the height, body shape, or other distinguishing features of individual 2010.
Facial recognition component 2040 may access a database or data associated with user 100 to determine if the detected facial features correspond to a recognized individual. For example, a processor 210 may access a database 2050 containing information about individuals known to user 100 and data representing associated facial features or other identifying features. Such data may include one or more images of the individuals, or data representative of a face of the user that may be used for identification through facial recognition. Database 2050 may be any device capable of storing information about one or more individuals, and may include a hard drive, a solid state drive, a web storage platform, a remote server, or the like. Database 2050 may be located within apparatus 110 (e.g., within memory 550) or external to apparatus 110, as shown in
In some embodiments, user 100 may have access to database 2050, such as through a web interface, an application on a mobile device, or through apparatus 110 or an associated device. For example, user 100 may be able to select which contacts are recognizable by apparatus 110 and/or delete or add certain contacts manually. In some embodiments, a user or administrator may be able to train facial recognition component 2040. For example, user 100 may have an option to confirm or reject identifications made by facial recognition component 2040, which may improve the accuracy of the system. This training may occur in real time, as individual 2010 is being recognized, or at some later time.
Other data or information may also inform the facial identification process. In some embodiments, processor 210 may use various techniques to recognize the voice of individual 2010, as described in further detail below. The recognized voice pattern and the detected facial features may be used, either alone or in combination, to determine that individual 2010 is recognized by apparatus 110. Processor 210 may also determine a user look direction 1750, as described above, which may be used to verify the identity of individual 2010. For example, if user 100 is looking in the direction of individual 2010 (especially for a prolonged period), this may indicate that individual 2010 is recognized by user 100, which may be used to increase the confidence of facial recognition component 2040 or other identification means.
Processor 210 may further be configured to determine whether individual 2010 is recognized by user 100 based on one or more detected audio characteristics of sounds associated with a voice of individual 2010. Returning to
In some embodiments, apparatus 110 may detect the voice of an individual that is not within the field of view of apparatus 110. For example, the voice may be heard over a speakerphone, from a back seat, or the like. In such embodiments, recognition of an individual may be based on the voice of the individual only, in the absence of a speaker in the field of view. Processor 110 may analyze the voice of the individual as described above, for example, by determining whether the detected voice matches a voiceprint of an individual in database 2050.
After determining that individual 2010 is a recognized individual of user 100, processor 210 may cause selective conditioning of audio associated with the recognized individual. The conditioned audio signal may be transmitted to hearing interface device 1710, and thus may provide user 100 with audio conditioned based on the recognized individual. For example, the conditioning may include amplifying audio signals determined to correspond to sound 2020 (which may correspond to voice 2012 of individual 2010) relative to other audio signals. In some embodiments, amplification may be accomplished digitally, for example by processing audio signals associated with sound 2020 relative to other signals. Additionally, or alternatively, amplification may be accomplished by changing one or more parameters of microphone 1720 to focus on audio sounds associated with individual 2010. For example, microphone 1720 may be a directional microphone and processor 210 may perform an operation to focus microphone 1720 on sound 2020. Various other techniques for amplifying sound 2020 may be used, such as using a beamforming microphone array, acoustic telescope techniques, etc.
In some embodiments, selective conditioning may include attenuation or suppressing one or more audio signals received from directions not associated with individual 2010. For example, processor 210 may attenuate sounds 2021 and/or 2022. Similar to amplification of sound 2020, attenuation of sounds may occur through processing audio signals, or by varying one or more parameters associated with microphone 1720 to direct focus away from sounds not associated with individual 2010.
Selective conditioning may further include determining whether individual 2010 is speaking. For example, processor 210 may be configured to analyze images or videos containing representations of individual 2010 to determine when individual 2010 is speaking, for example, based on detected movement of the recognized individual's lips. This may also be determined through analysis of audio signals received by microphone 1720, for example by detecting the voice 2012 of individual 2010. In some embodiments, the selective conditioning may occur dynamically (initiated and/or terminated) based on whether or not the recognized individual is speaking.
In some embodiments, conditioning may further include changing a tone of one or more audio signals corresponding to sound 2020 to make the sound more perceptible to user 100. For example, user 100 may have lesser sensitivity to tones in a certain range and conditioning of the audio signals may adjust the pitch of sound 2020. In some embodiments processor 210 may be configured to change a rate of speech associated with one or more audio signals. For example, sound 2020 may be determined to correspond to voice 2012 of individual 2010. Processor 210 may be configured to vary the rate of speech of individual 2010 to make the detected speech more perceptible to user 100. Various other processing may be performed, such as modifying the tone of sound 2020 to maintain the same pitch as the original audio signal, or to reduce noise within the audio signal.
In some embodiments, processor 210 may determine a region 2030 associated with individual 2010. Region 2030 may be associated with a direction of individual 2010 relative to apparatus 110 or user 100. The direction of individual 2010 may be determined using camera 1730 and/or microphone 1720 using the methods described above. As shown in
The conditioned audio signal may then be transmitted to hearing interface device 1710 and produced for user 100. Thus, in the conditioned audio signal, sound 2020 (and specifically voice 2012) may be louder and/or more easily distinguishable than sounds 2021 and 2022, which may represent background noise within the environment.
In some embodiments, processor 210 may perform further analysis based on captured images or videos to determine how to selectively condition audio signals associated with a recognized individual. In some embodiments, processor 210 may analyze the captured images to selectively condition audio associated with one individual relative to others. For example, processor 210 may determine the direction of a recognized individual relative to the user based on the images and may determine how to selectively condition audio signals associated with the individual based on the direction. If the recognized individual is standing to the front of the user, audio associated with that user may be amplified (or otherwise selectively conditioned) relative to audio associated with an individual standing to the side of the user. Similarly, processor 210 may selectively condition audio signals associated with an individual based on proximity to the user. Processor 210 may determine a distance from the user to each individual based on captured images and may selectively condition audio signals associated with the individuals based on the distance. For example, an individual closer to the user may be prioritized higher than an individual that is farther away.
In some embodiments, selective conditioning of audio signals associated with a recognized individual may be based on the identities of individuals within the environment of the user. For example, where multiple individuals are detected in the images, processor 210 may use one or more facial recognition techniques to identify the individuals, as described above. Audio signals associated with individuals that are known to user 100 may be selectively amplified or otherwise conditioned to have priority over unknown individuals. For example, processor 210 may be configured to attenuate or silence audio signals associated with bystanders in the user's environment, such as a noisy office mate, etc. In some embodiments, processor 210 may also determine a hierarchy of individuals and give priority based on the relative status of the individuals. This hierarchy may be based on the individual's position within a family or an organization (e.g., a company, sports team, club, etc.) relative to the user. For example, the user's boss may be ranked higher than a co-worker or a member of the maintenance staff and thus may have priority in the selective conditioning process. In some embodiments, the hierarchy may be determined based on a list or database. Individuals recognized by the system may be ranked individually or grouped into tiers of priority. This database may be maintained specifically for this purpose, or may be accessed externally. For example, the database may be associated with a social network of the user (e.g., Facebook™, LinkedIn™, etc.) and individuals may be prioritized based on their grouping or relationship with the user. Individuals identified as “close friends” or family, for example, may be prioritized over acquaintances of the user.
Selective conditioning may be based on a determined behavior of one or more individuals determined based on the captured images. In some embodiments, processor 210 may be configured to determine a look direction of the individuals in the images. Accordingly, the selective conditioning may be based on behavior of the other individuals towards the recognized individual. For example, processor 210 may selectively condition audio associated with a first individual that one or more other users are looking at. If the attention of the individuals shifts to a second individual, processor 210 may then switch to selectively condition audio associated with the second user. In some embodiments, processor 210 may be configured to selectively condition audio based on whether a recognized individual is speaking to the user or to another individual. For example, when the recognized individual is speaking to the user, the selective conditioning may include amplifying an audio signal associated with the recognized individual relative to other audio signals received from directions outside a region associated with the recognized individual. When the recognized individual is speaking to another individual, the selective conditioning may include attenuating the audio signal relative to other audio signals received from directions outside the region associated with the recognized individual.
In some embodiments, processor 210 may have access to one or more voiceprints of individuals, which may facilitate selective conditioning of voice 2012 of individual 2010 in relation to other sounds or voices. Having a speaker's voiceprint, and a high quality voiceprint in particular, may provide for fast and efficient speaker separation. A high quality voice print may be collected, for example, when the user speaks alone, preferably in a quiet environment. By having a voiceprint of one or more speakers, it is possible to separate an ongoing voice signal almost in real time, e.g. with a minimal delay, using a sliding time window. The delay may be, for example 10 ms, 20 ms, 30 ms, 50 ms, 100 ms, or the like. Different time windows may be selected, depending on the quality of the voice print, on the quality of the captured audio, the difference in characteristics between the speaker and other speaker(s), the available processing resources, the required separation quality, or the like. In some embodiments, a voice print may be extracted from a segment of a conversation in which an individual speaks alone, and then used for separating the individual's voice later in the conversation, whether the individual's is recognized or not.
Separating voices may be performed as follows: spectral features, also referred to as spectral attributes, spectral envelope, or spectrogram may be extracted from a clean audio of a single speaker and fed into a pre-trained first neural network, which generates or updates a signature of the speaker's voice based on the extracted features. The audio may be for example, of one second of clean voice. The output signature may be a vector representing the speaker's voice, such that the distance between the vector and another vector extracted from the voice of the same speaker is typically smaller than the distance between the vector and a vector extracted from the voice of another speaker. The speaker's model may be pre-generated from a captured audio. Alternatively or additionally, the model may be generated after a segment of the audio in which only the speaker speaks, followed by another segment in which the speaker and another speaker (or background noise) is heard, and which it is required to separate.
Then, to separate the speaker's voice from additional speakers or background noise in a noisy audio, a second pre-trained neural network may receive the noisy audio and the speaker's signature, and output an audio (which may also be represented as attributes) of the voice of the speaker as extracted from the noisy audio, separated from the other speech or background noise. It will be appreciated that the same or additional neural networks may be used to separate the voices of multiple speakers. For example, if there are two possible speakers, two neural networks may be activated, each with models of the same noisy output and one of the two speakers. Alternatively, a neural network may receive voice signatures of two or more speakers, and output the voice of each of the speakers separately. Accordingly, the system may generate two or more different audio outputs, each comprising the speech of the respective speaker. In some embodiments, if separation is impossible, the input voice may only be cleaned from background noise.
In step 2110, process 2100 may include receiving a plurality of images from an environment of a user captured by a camera. The images may be captured by a wearable camera such as camera 1730 of apparatus 110. In step 2112, process 2100 may include identifying a representation of a recognized individual in at least one of the plurality of images. Individual 2010 may be recognized by processor 210 using facial recognition component 2040, as described above. For example, individual 2010 may be a friend, colleague, relative, or prior acquaintance of the user. Processor 210 may determine whether an individual represented in at least one of the plurality of images is a recognized individual based on one or more detected facial features associated with the individual. Processor 210 may also determine whether the individual is recognized based on one or more detected audio characteristics of sounds determined to be associated with a voice of the individual, as described above.
In step 2114, process 2100 may include receiving audio signals representative of sounds captured by a microphone. For example, apparatus 110 may receive audio signals representative of sounds 2020, 2021, and 2022, captured by microphone 1720. Accordingly, the microphone may include a directional microphone, a microphone array, a multi-port microphone, or various other types of microphones, as described above. In some embodiments, the microphone and wearable camera may be included in a common housing, such as the housing of apparatus 110. The one or more processors performing process 2100 may also be included in the housing (e.g., processor 210), or may be included in a second housing. Where a second housing is used, the processor(s) may be configured to receive images and/or audio signals from the common housing via a wireless link (e.g., Bluetooth™, NFC, etc.). Accordingly, the common housing (e.g., apparatus 110) and the second housing (e.g., computing device 120) may further comprise transmitters, receivers, and/or various other communication components.
In step 2116, process 2100 may include cause selective conditioning of at least one audio signal received by the at least one microphone from a region associated with the at least one recognized individual. As described above, the region may be determined based on a determined direction of the recognized individual based one or more of the plurality of images or audio signals. The range may be associated with an angular width about the direction of the recognized individual (e.g., 10 degrees, 20 degrees, 45 degrees, etc.).
Various forms of conditioning may be performed on the audio signal, as discussed above. In some embodiments, conditioning may include changing the tone or playback speed of an audio signal. For example, conditioning may include changing a rate of speech associated with the audio signal. In some embodiments, the conditioning may include amplification of the audio signal relative to other audio signals received from outside of the region associated with the recognized individual. Amplification may be performed by various means, such as operation of a directional microphone configured to focus on audio sounds emanating from the region or varying one or more parameters associated with the microphone to cause the microphone to focus on audio sounds emanating from the region. The amplification may include attenuating or suppressing one or more audio signals received by the microphone from directions outside the region. In some embodiments, step 2116 may further comprise determining, based on analysis of the plurality of images, that the recognized individual is speaking and trigger the selective conditioning based on the determination that the recognized individual is speaking. For example, the determination that the recognized individual is speaking may be based on detected movement of the recognized individual's lips. In some embodiments, selective conditioning may be based on further analysis of the captured images as described above, for example, based on the direction or proximity of the recognized individual, the identity of the recognized individual, the behavior of other individuals, etc.
In step 2118, process 2100 may include causing transmission of the at least one conditioned audio signal to a hearing interface device configured to provide sound to an ear of the user. The conditioned audio signal, for example, may be transmitted to hearing interface device 1710, which may provide sound corresponding to the audio signal to user 100. The processor performing process 2100 may further be configured to cause transmission to the hearing interface device of one or more audio signals representative of background noise, which may be attenuated relative to the at least one conditioned audio signal. For example, processor 210 may be configured to transmit audio signals corresponding to sounds 2020, 2021, and 2022. The signal associated with 2020, however, may be amplified in relation to sounds 2021 and 2022 based on a determination that sound 2020 is within region 2030. In some embodiments, hearing interface device 1710 may include a speaker associated with an earpiece. For example, hearing interface device 1710 may be inserted at least partially into the ear of the user for providing audio to the user. Hearing interface device may also be external to the ear, such as a behind-the-ear hearing device, one or more headphones, a small portable speaker, or the like. In some embodiments, hearing interface device may include a bone conduction microphone, configured to provide an audio signal to user through vibrations of a bone of the user's head. Such devices may be placed in contact with the exterior of the user's skin, or may be implanted surgically and attached to the bone of the user.
In addition to recognizing voices of individuals speaking to user 100, the systems and methods described above may also be used to recognize the voice of user 100. For example, voice recognition unit 2041 may be configured to analyze audio signals representative of sounds collected from the user's environment to recognize the voice of user 100. Similar to the selective conditioning of the voice of recognized individuals, the voice of user 100 may be selectively conditioned. For example, sounds may be collected by microphone 1720, or by a microphone of another device, such as a mobile phone (or a device linked to a mobile phone).
Audio signals corresponding to the voice of user 100 may be selectively transmitted to a remote device, for example, by amplifying the voice of user 100 and/or attenuating or eliminating altogether sounds other than the user's voice. Accordingly, a voiceprint of one or more users of apparatus 110 may be collected and/or stored to facilitate detection and/or isolation of the user's voice, as described in further detail above.
In step 2210, process 2200 may include receiving audio signals representative of sounds captured by a microphone. For example, apparatus 110 may receive audio signals representative of sounds 2020, 2021, and 2022, captured by microphone 1720. Accordingly, the microphone may include a directional microphone, a microphone array, a multi-port microphone, or various other types of microphones, as described above. In step 2212, process 2200 may include identifying, based on analysis of the received audio signals, one or more voice audio signals representative of a recognized voice of the user. For example, the voice of the user may be recognized based on a voiceprint associated with the user, which may be stored in memory 550, database 2050, or other suitable locations. Processor 210 may recognize the voice of the user, for example, using voice recognition component 2041. Processor 210 may separate an ongoing voice signal associated with the user almost in real time, e.g. with a minimal delay, using a sliding time window. The voice may be separated by extracting spectral features of an audio signal according to the methods described above.
In step 2214, process 2200 may include causing transmission, to a remotely located device, of the one or more voice audio signals representative of the recognized voice of the user. The remotely located device may be any device configured to receive audio signals remotely, either by a wired or wireless form of communication. In some embodiments, the remotely located device may be another device of the user, such as a mobile phone, an audio interface device, or another form of computing device. In some embodiments, the voice audio signals may be processed by the remotely located device and/or transmitted further. In step 2216, process 2200 may include preventing transmission, to the remotely located device, of at least one background noise audio signal different from the one or more voice audio signals representative of a recognized voice of the user. For example, processor 210 may attenuate and/or eliminate audio signals associated with sounds 2020, 2021, or 2023, which may represent background noise. The voice of the user may be separated from other noises using the audio processing techniques described above.
In an exemplary illustration, the voice audio signals may be captured by a headset or other device worn by the user. The voice of the user may be recognized and isolated from the background noise in the environment of the user. The headset may transmit the conditioned audio signal of the user's voice to a mobile phone of the user. For example, the user may be on a telephone call and the conditioned audio signal may be transmitted by the mobile phone to a recipient of the call. The voice of the user may also be recorded by the remotely located device. The audio signal, for example, may be stored on a remote server or other computing device. In some embodiments, the remotely located device may process the received audio signal, for example, to convert the recognized user's voice into text.
Lip-Tracking Hearing Aid
Consistent with the disclosed embodiments, a hearing aid system may selectively amplify audio signals based on tracked lip movements. The hearing aid system analyzes captured images of the environment of a user to detect lips of an individual and track movement of the individual's lips. The tracked lip movements may serve as a cue for selectively amplifying audio received by the hearing aid system. For example, voice signals determined to sync with the tracked lip movements or that are consistent with the tracked lip movements may be selectively amplified or otherwise conditioned. Audio signals that are not associated with the detected lip movement may be suppressed, attenuated, filtered or the like.
User 100 may wear a hearing aid device consistent with the camera-based hearing aid device discussed above. For example, the hearing aid device may be hearing interface device 1710, as shown in
In some embodiments, hearing interface device 1710 may comprise a bone conduction headphone 1711, as shown in
Hearing interface device 1710 may be configured to communicate with a camera device, such as apparatus 110. Such communication may be through a wired connection, or may be made wirelessly (e.g., using a Bluetooth™, NFC, or forms of wireless communication). As discussed above, apparatus 110 may be worn by user 100 in various configurations, including being physically connected to a shirt, necklace, a belt, glasses, a wrist strap, a button, or other articles associated with user 100. In some embodiments, one or more additional devices may also be included, such as computing device 120. Accordingly, one or more of the processes or functions described herein with respect to apparatus 110 or processor 210 may be performed by computing device 120 and/or processor 540.
As discussed above, apparatus 110 may comprise at least one microphone and at least one image capture device. Apparatus 110 may comprise microphone 1720, as described with respect to
Processor 210 (and/or processors 210a and 210b) may be configured to detect a mouth and/or lips associated with an individual within the environment of user 100.
In some embodiments, processor 210 may detect a visual representation of individual 2310 from the environment of user 100, such as a video of user 2310. As shown in
The tracked lip movement of individual 2310 may be used to separate if required, and selectively condition one or more sounds in the environment of user 100.
In addition to detecting images, apparatus 110 may be configured to detect one or more sounds in the environment of user 100. For example, microphone 1720 may detect one or more sounds 2421, 2422, and 2423 within environment 2400. In some embodiments, the sounds may represent voices of various individuals. For example, as shown in
Processor 210 may determine, based on lip movements and the detected sounds, which individuals in environment 2400 are speaking. For example, processor 2310 may track lip movements associated with mouth 2311 to determine that individual 2310 is speaking. A comparative analysis may be performed between the detected lip movement and the received audio signals. In some embodiments, processor 210 may determine that individual 2310 is speaking based on a determination that mouth 2311 is moving at the same time as sound 2421 is detected. For example, when the lips of individual 2310 stop moving, this may correspond with a period of silence or reduced volume in the audio signal associated with sound 2421. In some embodiments, processor 210 may be configured to determine whether specific movements of mouth 2311 correspond to the received audio signal. For example, processor 210 may analyze the received audio signal to identify specific phonemes, phoneme combinations or words in the received audio signal. Processor 210 may recognize whether specific lip movements of mouth 2311 correspond to the identified words or phonemes. Various machine learning or deep learning techniques may be implemented to correlate the expected lip movements to the detected audio. For example, a training data set of known sounds and corresponding lip movements may be fed to a machine learning algorithm to develop a model for correlating detected sounds with expected lip movements. Other data associated with apparatus 110 may further be used in conjunction with the detected lip movement to determine and/or verify whether individual 2310 is speaking, such as a look direction of user 100 or individual 2310, a detected identity of user 2310, a recognized voiceprint of user 2310, etc.
Based on the detected lip movement, processor 210 may cause selective conditioning of audio associated with individual 2310. The conditioning may include amplifying audio signals determined to correspond to sound 2421 (which may correspond to a voice of individual 2310) relative to other audio signals. In some embodiments, amplification may be accomplished digitally, for example by processing audio signals associated with sound 2421 relative to other signals. Additionally, or alternatively, amplification may be accomplished by changing one or more parameters of microphone 1720 to focus on audio sounds associated with individual 2310. For example, microphone 1720 may be a directional microphone and processor 210 may perform an operation to focus microphone 1720 on sound 2421. Various other techniques for amplifying sound 2421 may be used, such as using a beamforming microphone array, acoustic telescope techniques, etc. The conditioned audio signal may be transmitted to hearing interface device 1710, and thus may provide user 100 with audio conditioned based on the individual who is speaking.
In some embodiments, selective conditioning may include attenuation or suppressing one or more audio signals not associated with individual 2310, such as sounds 2422 and 2423. Similar to amplification of sound 2421, attenuation of sounds may occur through processing audio signals, or by varying one or more parameters associated with microphone 1720 to direct focus away from sounds not associated with individual 2310.
In some embodiments, conditioning may further include changing a tone of one or more audio signals corresponding to sound 2421 to make the sound more perceptible to user 100. For example, user 100 may have lesser sensitivity to tones in a certain range and conditioning of the audio signals may adjust the pitch of sound 2421. For example, user 100 may experience hearing loss in frequencies above 10 kHz and processor 210 may remap higher frequencies (e.g., at 15 kHz) to 10 kHz. In some embodiments processor 210 may be configured to change a rate of speech associated with one or more audio signals. Processor 210 may be configured to vary the rate of speech of individual 2310 to make the detected speech more perceptible to user 100. If speech recognition has been performed on the audio signal associated with sound 2421, conditioning may further include modifying the audio signal based on the detected speech. For example, processor 210 may introduce pauses or increase the duration of pauses between words and/or sentences, which may make the speech easier to understand. Various other processing may be performed, such as modifying the tone of sound 2421 to maintain the same pitch as the original audio signal, or to reduce noise within the audio signal.
The conditioned audio signal may then be transmitted to hearing interface device 1710 and then produced for user 100. Thus, in the conditioned audio signal, sound 2421 (may be louder and/or more easily distinguishable than sounds 2422 and 2423.
Processor 210 may be configured to selectively condition multiple audio signals based on which individuals associated with the audio signals are currently speaking. For example, individual 2310 and individual 2410 may be engaged in a conversation within environment 2400 and processor 210 may be configured to transition from conditioning of audio signals associated with sound 2421 to conditioning of audio signals associated with sound 2422 based on the respective lip movements of individuals 2310 and 2410. For example, lip movements of individual 2310 may indicate that individual 2310 has stopped speaking or lip movements associated with individual 2410 may indicate that individual 2410 has started speaking. Accordingly, processor 210 may transition between selectively conditioning audio signals associated with sound 2421 to audio signals associated with sound 2422. In some embodiments, processor 210 may be configured to process and/or condition both audio signals concurrently but only selectively transmit the conditioned audio to hearing interface device 1710 based on which individual is speaking. Where speech recognition is implemented, processor 210 may determine and/or anticipate a transition between speakers based on the context of the speech. For example, processor 210 may analyze audio signals associate with sound 2421 to determine that individual 2310 has reached the end of a sentence or has asked a question, which may indicate individual 2310 has finished or is about to finish speaking.
In some embodiments, processor 210 may be configured to select between multiple active speakers to selectively condition audio signals. For example, individuals 2310 and 2410 may both be speaking at the same time or their speech may overlap during a conversation. Processor 210 may selectively condition audio associated with one speaking individual relative to others. This may include giving priority to a speaker who has started but not finished a word or sentence or has not finished speaking altogether when the other speaker started speaking. This determination may also be driven by the context of the speech, as described above.
Various other factors may also be considered in selecting among active speakers. For example, a look direction of the user may be determined and the individual in the look direction of the user may be given higher priority among the active speakers. Priority may also be assigned based on the look direction of the speakers. For example, if individual 2310 is looking at user 100 and individual 2410 is looking elsewhere, audio signals associated with individual 2310 may be selectively conditioned. In some embodiments, priority may be assigned based on the relative behavior of other individuals in environment 2400. For example, if both individual 2310 and individual 2410 are speaking and more other individuals are looking at individual 2410 than individual 2310, audio signals associated with individual 2410 may be selectively conditioned over those associated with individual 2310. In embodiments where the identity of the individuals is determined, priority may be assigned based on the relative status of the speakers, as discussed previously in greater detail. User 100 may also provide input into which speakers are prioritized through predefined settings or by actively selecting which speaker to focus on.
Processor 210 may also assign priority based on how the representation of individual 2310 is detected. While individuals 2310 and 2410 are shown to be physically present in environment 2400, one or more individuals may be detected as visual representations of the individual (e.g., on a display device) as shown in
In step 2510, process 2500 may include receiving a plurality of images captured by a wearable camera from an environment of the user. The images may be captured by a wearable camera such as camera 1730 of apparatus 110. In step 2520, process 2500 may include identifying a representation of at least one individual in at least one of the plurality of images. The individual may be identified using various image detection algorithms, such as Haar cascade, histograms of oriented gradients (HOG), deep convolution neural networks (CNN), scale-invariant feature transform (SIFT), or the like. In some embodiments, processor 210 may be configured to detect visual representations of individuals, for example from a display device, as shown in
In step 2530, process 2500 may include identifying at least one lip movement or lip position associated with a mouth of the individual, based on analysis of the plurality of images. Processor 210 may be configured to identify one or more points associated with the mouth of the individual. In some embodiments, processor 210 may develop a contour associated with the mouth of the individual, which may define a boundary associated with the mouth or lips of the individual. The lips identified in the image may be tracked over multiple frames or images to identify the lip movement. Accordingly, processor 210 may use various video tracking algorithms, as described above.
In step 2540, process 2500 may include receiving audio signals representative of the sounds captured by a microphone from the environment of the user. For example, apparatus 110 may receive audio signals representative of sounds 2421, 2422, and 2423 captured by microphone 1720. In step 2550, process 2500 may include identifying, based on analysis of the sounds captured by the microphone, a first audio signal associated with a first voice and a second audio signal associated with a second voice different from the first voice. For example, processor 210 may identify an audio signal associated with sounds 2421 and 2422, representing the voice of individuals 2310 and 2410, respectively. Processor 210 may analyze the sounds received from microphone 1720 to separate the first and second voices using any currently known or future developed techniques or algorithms. Step 2550 may also include identifying additional sounds, such as sound 2423 which may include additional voices or background noise in the environment of the user. In some embodiments, processor 210 may perform further analysis on the first and second audio signals, for example, by determining the identity of individuals 2310 and 2410 using available voiceprints thereof. Alternatively, or additionally, processor 210 may use speech recognition tools or algorithms to recognize the speech of the individuals.
In step 2560, process 2500 may include causing selective conditioning of the first audio signal based on a determination that the first audio signal is associated with the identified lip movement associated with the mouth of the individual. Processor 210 may compare the identified lip movement with the first and second audio signals identified in step 2550. For example, processor 210 may compare the timing of the detected lip movements with the timing of the voice patterns in the audio signals. In embodiments where speech is detected, processor 210 may further compare specific lip movements to phonemes or other features detected in the audio signal, as described above. Accordingly, processor 210 may determine that the first audio signal is associated with the detected lip movements and is thus associated with an individual who is speaking.
Various forms of selective conditioning may be performed, as discussed above. In some embodiments, conditioning may include changing the tone or playback speed of an audio signal. For example, conditioning may include remapping the audio frequencies or changing a rate of speech associated with the audio signal. In some embodiments, the conditioning may include amplification of a first audio signal relative to other audio signals. Amplification may be performed by various means, such as operation of a directional microphone, varying one or more parameters associated with the microphone, or digitally processing the audio signals. The conditioning may include attenuating or suppressing one or more audio signals that are not associated with the detected lip movement. The attenuated audio signals may include audio signals associated with other sounds detected in the environment of the user, including other voices such as a second audio signal. For example, processor 210 may selectively attenuate the second audio signal based on a determination that the second audio signal is not associated with the identified lip movement associated with the mouth of the individual. In some embodiments, the processor may be configured to transition from conditioning of audio signals associated with a first individual to conditioning of audio signals associated with a second individual when identified lip movements of the first individual indicates that the first individual has finished a sentence or has finished speaking.
In step 2570, process 2500 may include causing transmission of the selectively conditioned first audio signal to a hearing interface device configured to provide sound to an ear of the user. The conditioned audio signal, for example, may be transmitted to hearing interface device 1710, which may provide sound corresponding to the first audio signal to user 100. Additional sounds such as the second audio signal may also be transmitted. For example, processor 210 may be configured to transmit audio signals corresponding to sounds 2421, 2422, and 2423. The first audio signal, which may be associated with the detected lip movement of individual 2310, may be amplified, however, in relation to sounds 2422 and 2423 as described above. In some embodiments, hearing interface 1710 device may include a speaker associated with an earpiece. For example, hearing interface device may be inserted at least partially into the ear of the user for providing audio to the user. Hearing interface device may also be external to the ear, such as a behind-the-ear hearing device, one or more headphones, a small portable speaker, or the like. In some embodiments, hearing interface device may include a bone conduction microphone, configured to provide an audio signal to user through vibrations of a bone of the user's head. Such devices may be placed in contact with the exterior of the user's skin, or may be implanted surgically and attached to the bone of the user.
Selectively Modifying an Audio Signal Based on Context
In some embodiments, audio and video may be captured and processed by a hearing interface device. For example, the hearing interface device may capture and selectively amplify or attenuate sounds in accordance with a context associated with the user. A context, for example, may include a description of the user's environment or may represent a situation associated with the user's environment. For example, when a user is sitting with other people at a table with one or more food items on the table, the context associated with the user's environment may be described as “dinner.” By way of another example, when a user is sitting with other people at a table with one or more items such as computers or papers on the table, the context associated with the user's environment may be described as “a meeting.” In these cases, it may be assumed that the user would like to hear what his group members are saying, and may be less interested in what people at other tables or elsewhere in the environment are saying. Similarly, when in a gathering such as a party, the user may be interested in hearing a person with whom he is currently speaking. In this case, it may be helpful to reduce and or eliminate other audio such as speech by other speakers, music, and/or background noise.
To achieve such selective amplification and/or attenuation of the speech of certain speakers, the audio signals captured by a microphone and images captured by an image capture device may be analyzed to determine a situation or context associated with the user. The disclosed systems and methods may help to identify speakers whose voices are to be amplified and other speakers or sounds which are to be attenuated or even silenced completely based on the situation or context associated with the user.
In some embodiments, a system for selectively modifying audio signals may be disclosed. The disclosed system may include at least one microphone configured to capture sounds from an environment of a user. As discussed above, apparatus 110 may include one or more microphones to receive one or more sounds associated with an environment of user 100. By way of example, apparatus 110 may comprise microphones 443, 444, as described with respect to
In some embodiments, the disclosed system may further include a wearable camera configured to capture a plurality of images from the environment of the user. By way of example, apparatus 110 may comprise one or more cameras, such as camera 1730, which may correspond to image sensor 220. Camera 1730 may be configured to capture images of the surrounding environment of user 100. Image sensor 220 may be associated with a variety of cameras, for example, a wide-angle camera, a narrow angle camera, an IR camera, etc. In some embodiments, the camera may include a video camera. The one or more cameras may be configured to capture images from the surrounding environment of user 100 and output an image signal. For example, the one or more cameras may be configured to capture individual still images or a series of images in the form of a video. The one or more cameras may be configured to generate and output one or more image signals representative of the one or more captured images. In some embodiments, the image signal may include a video signal. For example, when image sensor 220 is associated with a video camera, the video camera may output a video signal representative of a series of images captured as a video image by the video camera. The one or more images captured by camera 1730 may constitute image data.
In some embodiments, the disclosed system may include at least one processor. By way of example, apparatus 110 may include processor 210 (see
In some embodiments, the at least one processor may be programmed to receive an audio signal representative of the sounds captured by the at least one microphone. For example, processor 210 may be configured to receive an audio signal representative of sounds captured by one or more of microphones 443, 444, or 1720.
One or more microphones 443, 444, and/or 1720 may generate an audio signal based on the sounds captured from environment 2600 of user 100. For example, as illustrated in
In some embodiments, the at least one processor may be programmed to receive at least one image of the plurality of images captured by the wearable camera. For example, as discussed above, apparatus 110 may comprise one or more cameras, such as camera 1730, which may be configured to capture images of environment 2600 of user 100. Processor 210 may be programmed to receive the one or more images captured by, for example, camera 1730. In some embodiments, processor 210 may be programmed to receive and process at least one image out of the plurality of images captured by, for example, camera 1730 from environment 2600 of user 100.
In some embodiments, the at least one processor may be programmed to determine a context associated with the captured sounds based on the audio signal. In some embodiments, the at least one processor may be programmed to determine the context by identifying at least one key word in the audio signal. As discussed above, microphones 443, 444, and/or 1720 may generate an audio signal 2702 based on the sounds captured from, for example, environment 2600 of user 100. Processor 210 may be configured to recognize one or more words in, for example, audio signal 2702 based on small vocabulary word spotting, on-going transcription, a combination thereof, or the like. Additionally or alternatively, processor 210 may be configured to recognize one or more words in audio signal 2702 using various speech-to-text algorithms. Voice recognition component 2041 may include one or more sound recognition modules. Processor 210 may be configured to execute the one or more of the sound recognition modules to process at least a portion (e.g., audio signal 103, 2623, 2633, 2653, etc.) of a received audio signal (e.g., 2702) to extract one or more words. By way of another example, processor 210 may execute the one or more sound processing modules to compare the words parsed from an audio signal (e.g., audio signal 103, 2623, 2633, 2653, etc.) with words stored, for example, in database 2050. Processor 210 may be configured to identify one or more words in audio signal 103, 2623, 2633, 2653, etc., that match one or more words stored in database 2050.
In some embodiments, processor 210 may be configured to identify the one or more words using a machine learning algorithm or neural network that may be trained using training examples. Examples of such models may include support vector machines, Fisher's linear discriminant, nearest neighbor, k nearest neighbors, decision trees, random forests, and so forth. By way of example, a set of training examples may include audio samples having identified words. For example, the training examples may include audio samples including one or more words spoken by a plurality of speakers. By way of another example, the training examples may include audio samples of the one or more words spoken in a variety of intonations. The machine learning algorithm or neural network may be trained to identify one or more words based on these and/or other training examples. Further, the trained machine learning algorithm may be configured to output one or more identified words when presented with one or more audio signals (e.g., audio signal 2702) as inputs. A trained neural network for identifying one or more words may be a separate and distinct neural network or may be an integral part of one or more other neural networks discussed above.
In some embodiments, the at least one word may include at least one of a menu, a meeting, a party, an agenda, a moderator, or a presentation. For example, the one or more words recognized by processor 210 may include be associated with words such as menu, meeting, party, agenda, presentation, etc. By way of example, the one or more words identified by processor 210 may include items such as “appetizer,” “drink,” “chicken,” “entrée,” “dessert,” etc., representing items on a menu. Processor 210 may be programmed to determine a context based on the identified one or more words. For example, based on words such as “appetizer,” “drink,” “chicken,” etc., processor 210 may be programmed to determine a context as one of “meal,” “lunch,” “dinner,” restaurant,” etc. As another example, the one or more words recognized by processor 210 may include words such as “agenda,” “minutes,” “decision,” “speaker,” “presenter,” etc., representing a meeting. Based on words such as “agenda,” “minutes,” “decision,” “speaker,” “presenter,” etc., processor 210 may be programmed to determine a context as “meeting.” It is to be understood that the examples provided above are exemplary and non-limiting and that processor 210 may determine a variety of other contexts based on the recognized one or more words.
In some embodiments, the at least one processor may be programmed to determine the context based on both the audio signal and the at least one image. For example, processor 210 may be configured to determine a context based on an analysis of the one or more images obtained by apparatus 110 via camera 1730 and/or audio captured by microphone 1720. In some embodiments, processor 210 may be configured to identify one or more objects and/or individuals in the one or more images obtained by camera 1730. For example, processor 210 may be configured to detect edges and/or surfaces associated with one or more objects in the one or more images obtained via camera 1730. Processor 210 may use various algorithms including, for example, localization, image segmentation, edge detection, surface detection, feature extraction, etc., to detect one or more objects in the one or more images obtained via camera 1730. Processor 210 may additionally or alternatively employ algorithms similar to those used for facial recognition to detect objects in the one or more images obtained via camera 1730. In some embodiments, processor 210 may be configured to compare the one or more detected objects with images or information associated with a plurality of objects stored in, for example, database 2050. Processor 210 may be configured to identify the one or more detected objects based on the comparison. For example, processor 210 may identify objects such as a table, a chair, items on the table, objects on walls or other surfaces, a sign or display, a street sign, a shelf, a cupboard, a column or pillar, etc. in the one or more images obtained by camera 1730. It is to be understood that this list of objects is non-limiting and processor 210 may be configured to identify other objects that may be encountered by user 100 in the user's environment.
Processor 210 may also identify one or more individuals in the one or more images obtained by apparatus 110 via camera 1730. For example, facial recognition component 2040 may be configured to identify one or more faces in environment 2600 user 100. By way of example, facial recognition component 2040 may identify facial features, such as the eyes, nose, cheekbones, jaw, or other features, on a face of individual 2620, 2630, etc. Facial recognition component 2040 may then analyze the relative size and position of these features to identify individual 2620, 2630, etc. Facial recognition component 2040 may use one or more algorithms for analyzing the detected features, such as principal component analysis (e.g., using eigenfaces), linear discriminant analysis, elastic bunch graph matching (e.g., using Fisherface), Local Binary Patterns Histograms (LBPH), Scale Invariant Feature Transform (SIFT), Speed Up Robust Features (SURF), or the like. Other facial recognition techniques such as 3-Dimensional recognition, skin texture analysis, and/or thermal imaging may also be used to identify individuals. Other features besides facial features may also be used for identification, such as the height, body shape, posture, gestures or other distinguishing features of an individual (e.g., 2620, 2630, etc.).
Facial recognition component 2040 may access database 2050 or data associated with user 100 to determine if the detected facial features correspond to a recognized individual. For example, processor 210 may access a database 2050 containing information about individuals known to user 100 and data representing associated facial features or other identifying features. Such data may include one or more images of the individuals, or data representative of a face of the individuals that may be used for identification through facial recognition. Database 2050 may be any device capable of storing information about one or more individuals, and may include a hard drive, a solid state drive, a web storage platform, a remote server, or the like. Database 2050 may be located within apparatus 110 (e.g., within memory 550) or external to apparatus 110, as shown in
Processor 210 may be programmed to identify one or more words in audio signal 2702 based on an analysis of the image data. Processor 210 may be configured to detect one or more facial features of individual 2310, which may include, but is not limited to the individual's mouth 2311. Accordingly, processor 210 may use one or more image processing techniques to recognize facial features of the user, such as convolutional neural networks (CNN), scale-invariant feature transform (SIFT), histogram of oriented gradients (HOG) features, or other techniques. In some embodiments, processor 210 may be configured to detect one or more points 2320 associated with the mouth 2311 of individual 2310. Points 2320 may represent one or more characteristic points of an individual's mouth, such as one or more points along the individual's lips or the corner of the individual's mouth. The points shown in
In some embodiments, processor 210 may be configured to determine whether specific movements of mouth 2311 correspond to the received audio signal. For example, processor 210 may analyze the received audio signal to identify specific phonemes, phoneme combinations or words in the received audio signal. Processor 210 may recognize whether specific lip movements of mouth 2311 correspond to one or more words or phonemes stored in database 2050. Various machine learning or deep learning techniques may be implemented to correlate the expected lip movements to the detected audio. For example, a training data set of known words and corresponding lip movements may be fed to a machine learning algorithm to develop a model for correlating detected words with expected lip movements. Other data associated with apparatus 110 may further be used in conjunction with the detected lip movement to determine a word being spoken by an individual (e.g., individual 2310). As will be discussed below, processor 210 may be programmed to determine a context associated with an environment (e.g., environment 2600) of user 100 based on the identified one or more words.
Processor 210 may be programmed to determine a context based on an analysis of the image data, an analysis of the audio signal, or both. In some embodiments, processor 210 may be programmed to determine a context based on an analysis of the audio signal and confirm the determined context based on an analysis of the image data, or vice-versa. Processor 210 may determine the context based on one or more rules, which may be stored in, for example, database 2050. The one or more rules may relate one or more items (e.g., objects, individuals, etc.) in the image in combination with one or more words to a context. By way of example, when processor 210 determines that one of the images includes a representation of an individual known to user 100 and the individual (e.g., 2620, 2630, etc.) is associated with a word such as “decision,” processor 210 may be programmed to identify the context as a “meeting.” By way of another example, when processor 210 determines that one of the images includes a representation of a food item or a utensil and a word identified in audio signal 2702 is “celebrate,” processor 210 may be programmed to identify the context as a “party.” It is to be understood that the above-identified combinations of image characteristics, words, and their association with a context is non-limiting and processor 210 may be configured to determine other image characteristics, words, and associated contexts based on the one or more audio signals and/or image data associated with the user's environment.
In some embodiments, processor 210 may be programmed to determine a context based on the one or more images and/or the one or more portions of an audio signal based on a trained machine learning model or neural network. Examples of such machines may include support vector machines, Fisher's linear discriminant, nearest neighbor, k nearest neighbors, decision trees, random forests, neural networks, and so forth. By way of example, a set of training examples may include images having, for example, identified individuals and/or objects, one or more audio signals, and/or one or more identified words, and contexts associated with the one or more images and/or one or more audio signals. For example, the training example may include an image showing a table, a cake on the table, and a word “birthday” with an associated context being “party.” By way of another example, the training example may include an image of a conference room with a plurality of individuals, a word “presentation,” and an associated context of “conference” or “meeting.” The machine learning algorithm may be trained to assign a context based on these and other training examples. Further, the trained machine learning algorithm may be configured to output a context when presented with one or more images, one or more audio signals, and/or one or more identified words as inputs. A trained neural network for assigning context may be a separate and distinct neural network or may be an integral part of the other neural networks discussed above. The context may be identified separately using the audio and images, and compared, such that if both indicate the same context, the context is identified.
In some embodiments, a set of stored contexts may be stored in database 2050. In some embodiments, the set of stored contexts may include at least one stored context represented by at least one of a name of a person or an object represented in an image. One or more contexts stored in database 2050 may be represented by a name of a person or an object in an image associated with the context. For example, a context such as “party” may be represented by the name of an object, such as, “cake” that may be present in an image associated with the context. By way of another example, a context such as a “personal encounter” may be represented by a name, “John,” of a person present in an image associated with the context.
In some embodiments, the set of stored contexts may include at least one of dinner at home, dinner at a restaurant, a cocktail party, a lecture, a broadcast of a lecture, a business meeting, or a personal encounter. As discussed above, a context may represent a situation or may be a description of an environment (e.g., 2600) of user 100. By way of example, a context may include dinner at home or at a restaurant, a party, a lecture, a meeting, a conference, a personal encounter of user 100 with another individual (e.g., individual 2620, individual 2630, etc.), a business meeting with one or more other individuals, or the like. One or more of these contexts (e.g., dinner, cocktail party, meeting, lecture, etc.) may be stored in, for example, database 2050. By way of another example, consider a broadcast of a lecture, e.g., when the context includes a user watching TV or another display in which a person is speaking. As will be discussed below, in this context, processor 210 may be configured to amplify the TV and silence any background noise.
In some embodiments, the at least one processor may be programmed to determine whether the context is included in a set of stored contexts. Processor 210 may be configured to compare the context determined based on an analysis of audio signal 2702 and/or an analysis of the image data, with the one or more contexts stored in database 2050. Processor 210 may be programmed to determine that the identified context is included in the set of stored contexts when the identified context matches with one or more of the contexts stored in database 2050.
In some embodiments, subject to the context not being included in the set of stored contexts, the at least one processor may be programmed to store the determined context in the set of stored contexts. For example, when a context determined by processor 210 does not match one or more contexts stored in database 2050, processor 210 may be programmed to add the determined context to database 2050. Thus, over a period of time, the number of stored contexts may be enhanced based on various interactions of user 100 with one or more other individuals (e.g., 2620, 2630, etc.) and or other objects. In some embodiments, if it is unknown how to name or characterize the context, some identifying details such as objects in the scene, repeating words, or the like may be stored. A user may later view the stored data, determine it is a context, and name or add additional characteristics to the context.
In some embodiments, the at least one processor may be further programmed to reevaluate the context after a predetermined period of time. An environment of a user may change over time. For example, environment 2600 of user 100 may change because individual 2620 may leave environment 2600 and/or one or more other individuals may enter environment 2600. As another example, environment 2600 of user 100 may change from, for example, a workplace setting to a home setting, a restaurant, a public street, a conference, etc., when user 100 travels from the workplace to another setting. To ensure that the context associated with environment 2600 is determined correctly, processor 210 may be configured to repeatedly determine the context after a predetermined period of time. In some embodiments, the predetermined period of time may include one of one minute, five minutes, ten minutes, fifteen minutes, or any other suitable time period.
In some embodiments, the at least one processor may be programmed to reevaluate the context when the audio signal includes speech associated with a new speaker or the at least one image includes an image of a new speaker. As discussed above, processor 210 may be programmed to reevaluate the context upon detecting a change in an environment of user 100. By way of example, processor 210 may be programmed to determine the context again when processor 210 identifies a new voice in audio signal 2702 that was previously not present in audio signal 2702. By way of another example, processor 210 may be programmed to determine the context again, when processor 210, based on an analysis of the one or more images obtained via camera 1730, identifies an individual in environment 2600 who may have previously not been present in environment 2600.
In some embodiments, the at least one processor may be further programmed to determine at least one first speaker whose speech is to be amplified. Depending on the determined context, a speaker may be identified so that a speech of that speaker may be amplified for the user. For example, a speaker sitting at the same table as the user, a speaker the user is speaking with or looking at, a speaker other people are looking at, or the like may be determined as a first speaker. Because the speaker may be speaking to the user, it may be desirable to amplify speech associated with that speaker for the user. To do so, processor 210 may be configured to separate the voices of various speakers in audio signal 2702. In some embodiments, subject to the context being included in a set of stored contexts, the at least one processor may be programmed to identify at least one first portion of the audio signal associated with the determined at least one first speaker. Processor 210 may use various techniques to distinguish and recognize voices or speech of one or more of user 100, individual 2620, individual 2630, and/or other speakers present in environment 2600, as described in further detail below.
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Having a speaker's voiceprint, and a high-quality voiceprint in particular, may provide a fast and efficient way of determining the vocal components associated with, for example, user 100, individual 2620, and/or individual 2630 within environment 2600. A high-quality voice print may be collected, for example, when user 100, individual 2620, or individual 2630 speaks alone, preferably in a quiet environment. By having a voiceprint of one or more speakers, it may be possible to separate an ongoing voice signal almost in real time, e.g., with a minimal delay, using a sliding time window. The delay may be, for example 10 ms, 20 ms, 30 ms, 50 ms, 100 ms, or the like. Different time windows may be selected, depending on the quality of the voice print, on the quality of the captured audio, the difference in characteristics between the speaker and other speaker(s), the available processing resources, the required separation quality, or the like. In some embodiments, a voice print may be extracted from a segment of a conversation in which user 100 or an individual (e.g., individual 2620 or 2630) speaks alone, and then used for separating the user's or individual's voice later in the conversation, whether the individual's voice is recognized or not.
Separating voices may be performed as follows: spectral features, also referred to as spectral attributes, such as a spectral envelope, or a spectrogram may be extracted from audio of a single speaker and fed into a first neural network, which may generate or update a signature of the speaker's voice based on the extracted features. It will be appreciated that the voice signature may be generated using any other engine or algorithm and is not limited to a neural network. The audio may be for example, of one second of a clean voice. The output signature may be a vector representing the speaker's voice, such that the distance between the vector and another vector extracted from the voice of the same speaker is typically smaller than the distance between the vector and a vector extracted from the voice of another speaker. The speaker's model may be pre-generated from previously captured audio. Alternatively or additionally, the model may be generated after capturing a segment of the audio in which only the speaker speaks, wherein the segment is followed by another segment in which the speaker and another speaker (or background noise) are heard, and which it is required to separate. Thus, separating the audio signals and associating each segment with a speaker may be performed whether any one or more of the speakers is known and a voiceprint thereof is pre-existing, or not.
To separate the speaker's voice from additional speakers or background noise in a noisy audio, a second engine, such as a neural network may receive the noisy audio and the speaker's signature, and output audio (which may also be represented as attributes) of the voice of the speaker as extracted from the noisy audio, separated from the other speech or background noise. It will be appreciated that the same or additional neural networks may be used to separate the voices of multiple speakers. For example, if there are two possible speakers, two neural networks may be activated, each with models of the same noisy output and one of the two speakers. Alternatively, a neural network may receive voice signatures of two or more speakers and output the voice of each of the speakers separately. Accordingly, the system may generate two or more different audio outputs, each comprising the speech of a respective speaker. In some embodiments, if separation is impossible, the input voice may only be cleaned from background noise. Thus, as explained above, processor 210 may be configured to determine whether audio signal 2702 includes a voice of user 100 when, for example, a portion of audio signal 2702 matches with a voiceprint associated with user 100. As also discussed above, processor 210 may additionally or alternatively recognize the voices of individuals 2620, 2630, etc., by tracking lip movements of one or more of individuals 2620, 2630, etc., in the one or more images obtained using camera 1730. It will be appreciated, however, that an audio signal may be separated also if none, or only part of the speakers in the audio are recognized and a corresponding voice print is available.
As one example, consider a situation where processor 210 determines that the context is a party. Processor 210 may determine that audio signal 2702 includes a speech by, for example, user 100, individual 2620, individual 2630, and/or sounds such as sound 2650 using one or more of the techniques discussed above. In the context of a party, processor 210 may be further configured to identify an individual with whom user 100 may be speaking. For example, processor 210 may determine one or more characteristics (e.g., sound level, volume, intensity, etc.) of the one or more audio signals 103, 2623, 2633, 2653, etc., identified in audio signal 2702. Processor 210 may select an audio signal from among the identified audio signals based on the one or more characteristics. For example, processor 210 may select audio signal 2623 because it may have a higher sound level or volume compared to the other audio signals 2633, 2653, etc. This may occur, for example, because individual 2620 may be located closer to user 100. Thus, processor 210 may identify individual 2610 as an individual with whom user 100 may be speaking based on one or more characteristics of audio signal 2623 associated with individual 2620.
Additionally or alternatively, processor 210 may identify an individual with whom the user may be speaking based on an analysis of one or more images received from camera 1730. For example, in the context of a party, processor 210 may determine based on the one or more images that individual 2620 may be seated at a same table as user 100 whereas individual 2630 may be seated at another table or may be located in a different portion of the room. Further, as described above, processor 210 may be programmed to identify a portion of audio signal 2702 (e.g., audio signal 2623) associated with individual 2620 because of the relative proximity of individual 2620 to user 100.
In some embodiments, the at least one processor may be programmed to amplify the at least one first portion of the audio signal. For example, a user may wish to hear speech from a speaker speaking to the user or speech from a speaker located closer to the user rather than speech from a user who may be located far away from the user. As discussed above, processor 210 may identify an individual (e.g., individual 2620) who may be located in close proximity to user 100 or who may be speaking to user 100. Processor 210 may be configured to amplify a portion of audio signal 2702 associated with individual 2620 (e.g., signal 2623). Amplifying audio signal 2623 may include, for example, increasing an amplitude, sound level, and/or power level of audio signal 2623.
In some embodiments the at least one processor may be further programmed to determine at least one second speaker whose speech is to be attenuated or silenced. For example, in a context of a dinner at a restaurant, a user may not be interested in hearing a voice of a person sitting at another table or who may be located far away from the user, sounds made by a waiter serving another table, music, or other background noise. Thus, it may be desirable to attenuate or completely silence such sounds. In some embodiments, the at least one processor may be programmed to identify at least one second portion of the audio signal associated with the determined at least one second speaker. As discussed above, processor 210 may or may not identify, for example, individual 2630 who may be located further away from user 100 as compared to individual 2620. Accordingly, processor 210 may determine individual 2630 as an individual whose speech is to be attenuated or silenced. As also discussed above, processor 210 may be programmed to identify audio signal 2633 associated with individual 2630 based on an analysis of audio signal 2702 and/or based on analysis of one or more images captured by camera 1730. In some embodiments, the at least one processor may be programmed to attenuate the at least one second portion of the audio signal. For example, user 100 may wish to hear speech from individual 2620 with whom the user may be speaking but not speech from individual 2630 who may be located further away from user 100. Processor 210 may be configured to attenuate a portion of audio signal 2702 associated with individual 2630 (e.g., audio signal 2633). In some embodiments, processor 210 may be programmed to attenuate some or all portions of audio signal 2702 that may not be associated with the identified speaker (e.g., individual 2620). For example, processor 210 may be programmed to attenuate all portions of audio signal 2702 except audio signal 2623 associated with individual 2620. Attenuating audio signals 103, 2633, and/or 2653 may include decreasing an amplitude, sound level, and/or power level of audio signals 103, 2633, and/or 2653. Attenuating audio signals 103, 2633, and/or 2653 may also include, for example, adding sound signals corresponding to white noise or other background noise to audio signals 103, 2633, and/or 2653.
In some embodiments, the at least one processor may be programmed to transmit to a hearing interface device the amplified at least one first portion of the audio signal. For example, processor 210 may be configured to transmit the amplified audio signal 2623 to hearing interface device 1710. Processor 210 may be configured to communicate with a hearing interface device such as hearing interface device 1710. Such communication may be through a wired connection, or may be made wirelessly (e.g., using a Bluetooth™, NFC, or forms of wireless communication). As discussed above, hearing interface device 1710 may be any device configured to provide audible feedback to user 100. Hearing interface device 1710 may correspond to feedback outputting unit 230. In some embodiments, hearing interface device 1710 may be separate from feedback outputting unit 230 and may be configured to receive signals from feedback outputting unit 230. Hearing interface device 1710 may be placed in one or both ears of user 100, similar to traditional hearing interface devices. Hearing interface device 1710 may be of various styles, including in-the-canal, completely-in-canal, in-the-ear, behind-the-ear, on-the-ear, receiver-in-canal, open fit, or various other styles. Hearing interface device 1710 may include one or more speakers for providing audible feedback to user 100. Hearing interface device 1710 may have various other configurations or placement locations. In some embodiments, hearing interface device 1710 may comprise a bone conduction headphone 1711, that may be surgically implanted and may provide audible feedback to user 100 through bone conduction of sound vibrations to the inner ear. Hearing interface device 1710 may also comprise one or more headphones (e.g., wireless headphones, over-ear headphones, etc.) or a portable speaker carried or worn by user 100. In some embodiments, hearing interface device 1710 may be integrated into other devices, such as a Bluetooth™ headset of the user, glasses, a helmet (e.g., motorcycle helmets, bicycle helmets, etc.), a hat, etc.
In some embodiments, the at least one processor may be programmed to transmit to the hearing interface device the attenuated at least one second portion of the audio signal. For example, processor 210 may be configured to transmit one or more of attenuated audio signals 2633, 2653, etc., to hearing interface device 1710. In some embodiments, processor 210 may be programmed to transmit a modified audio signal 2704, including an amplified audio signal 2623 and one or more attenuated audio signals 103, 2633, 2653, etc., to hearing interface device 1710.
In some embodiments, the at least one processor may be programmed to avoid transmitting to the hearing interface device the at least one second portion of the audio signal. For example, in some embodiments, it may be desirable to silence the sounds that the user does not wish to hear. Thus, for example, instead of transmitting one or more attenuated audio signals 103, 2633, 2653, etc., to hearing interface device 1710, processor 210 may be programmed to avoid transmitting one or more of the audio signals 103, 2633, 2653, etc., corresponding to user 100, individual 2633 located further away from user 100, and other sounds 2650 in environment 2600 of user 100.
In step 2802, process 2900 may include receiving at least one audio signal representative of the sounds captured by a microphone from an environment of a user. For example, apparatus 110 may receive audio signals representative of sounds 2622, 2632, 2640, 2650 etc., captured by microphones 443, 444, 1720, etc., from environment 2600 of user 100.
In step 2804, process 2800 may include receiving at least one image from a plurality of images captured by a wearable camera from the environment of the user. For example, apparatus 110 may capture one or more images from an environment of a user, using image sensor 220, which may be part of a camera 1730 included in apparatus 110. Camera 1730 may be configured to capture one or more images from the surrounding environment of user 100 and output one or more image signals, as discussed above.
In step 2806, process 2800 may include determining a context associated with the captured sounds based on the audio signal and/or the captured images. For example, processor 210 may be programmed to execute instructions embodied in voice recognition component 2041 to identify segments of the audio signal comprising speech. Processor 210 may employ one or more of voice recognition algorithms, voice prints, audio signal characteristics, machine learning algorithms, or neural networks to recognize voices in and/or identify segments/portions of the audio signal associated with speech of user 100 and/or speech of one or more other individual (e.g., 2620, 2630, etc.). Processor 210 may analyze both the audio signal received from microphones 443, 444, 1720 and images received from image sensor 220 (e.g., by recognizing faces, tracking lips, etc.) to identify one or more words. As also discussed above, processor 210 may be programmed to determine a context associated with environment 2600 of user 100 based on the one or more identified words and/or analysis of the one or more images received from image sensor 220.
In step 2808, process 2800 may include determining whether the determined context is included in a set of stored contexts. Processor 210 may be programmed to compare the context determined based on an analysis of audio signal 2702 and/or an analysis of one or more images obtained from environment 2600 of user 100 with the one or more contexts stored in database 2050. Processor 210 may be programmed to determine that the identified context is included in the set of stored contexts when the identified context matches with one or more of the contexts stored in database 2050.
When processor 210 determines that the context is not stored in the set of stored contexts (Step 2808: NO), process 2800 may return to step 2802. In some embodiments, when processor 210 determines that the context is not stored in the set of stored contexts, processor 210 may be programmed to add the context to the set of stored contexts, possibly with some additional information received from a user, including for example a name or a characteristic of the context.
When processor 210 determines, however, that the context is included in the set of stored contexts (Step 2808: YES), process 2800 may proceed to step 2810. In step 2810, process 2800 may include determining at least one first speaker whose speech is to be amplified. Depending on the determined context, a speaker may be identified so that a speech of that speaker may be amplified for the user. For example, a speaker sitting at the same table as the user, a speaker the user is speaking with or looking at, a speaker other people are looking at, or the like may be determined as a first speaker. Because the speaker may be speaking to the user, it may be desirable to amplify speech associated with that speaker for the user.
In step 2812, process 2800 may include determining at least one second speaker whose speech is to be attenuated or silenced. For example, in a context of a dinner at a restaurant, a user may not be interested in hearing a voice of a person sitting at another table from the user, sounds made by a waiter serving another table, music, or other background noise. Thus, it may be desirable to attenuate or completely silence such sounds. As discussed above, processor 210 may identify, for example, individual 2630 who may be located further away from user 100 as compared to individual 2620. Accordingly, processor 210 may determine individual 2630 as an individual whose speech is to be attenuated or silenced.
In step 2814, process 2800 may include identifying the first and second portions of the audio signal associated with the first and second speakers, respectively. As discussed above, processor 210 may be programmed to separate and/or the voices of various speakers in audio signal 2702. Based on separation of the voices, processor 210 may be programmed to identify a first portion of the audio signal (e.g., 2702) associated with the first speaker. For example, processor 210 may be programmed to identify audio signal 2623 as being associated with a first speaker (e.g., individual 2620) to whom user 100 may be speaking. Similarly, processor 210 may be programmed to identify a second portion of the audio signal (e.g., 2702) associated with the second speaker. For example, processor 210 may be programmed to identify audio signal 2633 as being associated with a second speaker (e.g., individual 2630) who may be located at another table or may be located far away from user 100 compared to speaker 2620.
In step 2816, process 2800 may include amplifying the at least one first portion of the audio signal and attenuating or silencing the at least one second portion of the audio signal. For example, processor 210 may be programmed to amplify a portion of audio signal 2702 associated with individual 2620 (e.g., signal 2623). Amplifying audio signal 2623 may include, for example, increasing an amplitude, sound level, and/or power level of audio signal 2623. Similarly, processor 210 may be programmed to attenuate or silence some or all portions of audio signal 2702 that may not be associated with the identified speaker (e.g., individual 2620). For example, processor 210 may be programmed to attenuate audio signal 2633 associated with individual 2630. Attenuating audio signal 2633 may include decreasing an amplitude, sound level, and/or power level of audio signal 2633. Attenuating audio signal 2633 may also include, for example, adding sound signals corresponding to white noise or other background noise to audio signal 2633.
In step 2818, process 2800 may include transmitting audio to a hearing interface device. For example, as discussed above, processor 210 may be programmed to generate a modified audio signal 2704 by amplifying audio signal 2623 associated with individual 2620 while at the same time attenuating audio signals 2633, 2653, etc., associated with individual 2630 and other environmental sounds, respectively. Processor 210 may be programmed to transmit modified audio signal 2704, that includes all audio in audio signal 2702 received by processor 210 to hearing interface device 1710. For example, processor 210 may be programmed to transmit modified audio signal 2704, including an amplified audio signal 2623 and one or more attenuated audio signals 103, 2633, 2653, etc., to hearing interface device 1710.
The foregoing description has been presented for purposes of illustration. It is not exhaustive and is not limited to the precise forms or embodiments disclosed. Modifications and adaptations will be apparent to those skilled in the art from consideration of the specification and practice of the disclosed embodiments. Additionally, although aspects of the disclosed embodiments are described as being stored in memory, one skilled in the art will appreciate that these aspects can also be stored on other types of computer readable media, such as secondary storage devices, for example, hard disks or CD ROM, or other forms of RAM or ROM, USB media, DVD, Blu-ray, Ultra HD Blu-ray, or other optical drive media.
Computer programs based on the written description and disclosed methods are within the skill of an experienced developer. The various programs or program modules can be created using any of the techniques known to one skilled in the art or can be designed in connection with existing software. For example, program sections or program modules can be designed in or by means of .Net Framework, .Net Compact Framework (and related languages, such as Visual Basic, C, etc.), Java, C++, Objective-C, HTML, HTML/AJAX combinations, XML, or HTML with included Java applets.
Moreover, while illustrative embodiments have been described herein, the scope of any and all embodiments having equivalent elements, modifications, omissions, combinations (e.g., of aspects across various embodiments), adaptations and/or alterations as would be appreciated by those skilled in the art based on the present disclosure. The limitations in the claims are to be interpreted broadly based on the language employed in the claims and not limited to examples described in the present specification or during the prosecution of the application. The examples are to be construed as non-exclusive. Furthermore, the steps of the disclosed methods may be modified in any manner, including by reordering steps and/or inserting or deleting steps. It is intended, therefore, that the specification and examples be considered as illustrative only, with a true scope and spirit being indicated by the following claims and their full scope of equivalents.
This application claims the benefit of priority of U.S. Provisional Patent Application No. 63/118,990, filed on Nov. 30, 2020, the contents of which are incorporated herein by reference in their entirety.
Number | Date | Country | |
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63118990 | Nov 2020 | US |