The present invention relates to an image processing apparatus, an image processing method, and a program.
In recent years, in a surveillance system and the like, a technique for detecting and searching for a state such as a pose and behavior of a person from an image of a surveillance camera is used. For example, Patent Documents 1 and 2 have been known as related techniques. Patent Document 1 discloses a technique for searching for a similar pose of a person, based on a key joint of a head, a hand, a foot, and the like of the person included in a depth video. Patent Document 2 discloses a technique for searching for a similar image by using pose information such as a tilt provided to an image, which is not related to a pose of a person. Patent Document 3 discloses a technique for receiving an input that specifies a person desired to be searched on an image, and searching for an image including the specified person. Patent Document 4 discloses a technique for acquiring, from an image, pose information about a search target being formed of a plurality of feature points, and searching for an image including a pose similar to a pose determined in the pose information. Note that, in addition, Non-Patent Document 1 has been known as a technique related to a skeleton estimation of a person.
Patent Documents 1 and 4 are techniques for searching for an image including a person in a predetermined state, but there is room for improvement in an input method of a search query. Patent Documents 2 and 3 are not techniques for searching for an image including a person in a predetermined state.
An object of the present invention is to achieve a user-friendly input means of a search query in a system for searching for an image including a person in a predetermined state.
The present invention provides an image processing apparatus including:
an image acquisition unit that acquires an image;
a selection unit that selects at least one person included in the image, based on a user input;
a skeleton structure detection unit that detects a two-dimensional skeleton structure of a person included in the image;
a feature value computation unit that computes a feature value of the detected two-dimensional skeleton structure; and
a search unit that searches, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
Further, the present invention provides an image processing method including,
by a computer:
acquiring an image;
selecting at least one person included in the image, based on a user input;
detecting a two-dimensional skeleton structure of a person included in the image;
computing a feature value of the detected two-dimensional skeleton structure; and
searching, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
Further, the present invention provides a program causing a computer to function as:
an image acquisition unit that acquires an image;
a selection unit that selects at least one person included in the image, based on a user input;
a skeleton structure detection unit that detects a two-dimensional skeleton structure of a person included in the image;
a feature value computation unit that computes a feature value of the detected two-dimensional skeleton structure; and
a search unit that searches, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
The present invention achieves a user-friendly input means of a search query in a system for searching for an image including a person in a predetermined state.
Hereinafter, example embodiments of the present invention will be described with reference to the drawings. Note that, in all of the drawings, a similar component has a similar reference sign, and description thereof will be appropriately omitted.
In recent years, an image recognition technique using machine learning such as deep learning is applied to various systems. For example, application to a surveillance system for performing surveillance by an image of a surveillance camera has been advanced. By using machine learning in the surveillance system, a state such as a pose and behavior of a person is being recognizable from an image to some extent.
However, in such a related technique, a state of a person desired by a user may not be necessarily recognizable on demand. For example, there is a case where a state of a person desired to be searched and recognized by a user can be determined in advance, or there is a case where a determination cannot be specifically made as in an unknown state. Thus, in some cases, a state of a person desired to be searched by a user cannot be specifically specified. Further, a search or the like cannot be performed when a part of a body of a person is hidden. In the related technique, a state of a person can be searched only from a specific search condition, and thus it is difficult to flexibly search for and classify a desired state of a person.
The inventors have considered a method using a skeleton estimation technique such as Non-Patent Document 1 and the like in order to recognize a state of a person desired by a user from an image on demand. Similarly to OpenPose disclosed in Non-Patent Document 1, and the like, in the related skeleton estimation technique, a skeleton of a person is estimated by learning image data in which various correct answer patterns are set. In the following example embodiments, a state of a person can be flexibly recognized by using such a skeleton estimation technique.
Note that, a skeleton structure estimated by the skeleton estimation technique such as OpenPose is formed of a “keypoint” being a characteristic point such as a joint and a “bone (bone link)” indicating a link between keypoints. Thus, in the following example embodiments, a skeleton structure will be described by using the words “keypoint” and “bone”, and “keypoint” is associated with a “joint” of a person and “bone” is associated with a “bone” of a person unless otherwise specified.
In this way, in the example embodiment, a two-dimensional skeleton structure of a person is detected from a two-dimensional image, and the recognition processing such as classification and a search of a state of a person is performed based on a feature value computed from the two-dimensional skeleton structure.
An example embodiment 1 will be described below with reference to the drawings.
The camera 200 is a capturing unit, such as a surveillance camera, that generates a two-dimensional image. The camera 200 is installed at a predetermined place, and captures a person and the like in a capturing region from the installed place. The camera 200 may be directly connected in a wired or wireless manner in such a way as to be able to output a captured image (video) to the image processing apparatus 100, or may be connected via any communication network and the like. Note that, the camera 200 may be provided inside the image processing apparatus 100.
The database 110 is a database that stores information (data) needed for processing of the image processing apparatus 100, a processing result, and the like. The database 110 stores an image acquired by an image acquisition unit 101, a detection result of a skeleton structure detection unit 102, data for machine learning, a feature value computed by a feature value computation unit 103, a classification result of a classification unit 104, a search result of a search unit 105, and the like. The database 110 is directly connected to the image processing apparatus 100 in a wired or wireless manner in such a way as to be able to input and output data as necessary, or is connected to the image processing apparatus 100 via any communication network and the like. Note that, the database 110 may be provided inside the image processing apparatus 100 as a non-volatile memory such as a flash memory, a hard disk apparatus, and the like.
As illustrated in
The image processing apparatus 100 performs data accumulation processing, the classification processing, and the search processing in this order. Note that, as described below, the image processing apparatus 100 may not perform the classification processing.
The data accumulation processing is processing of acquiring an image (hereinafter an “analysis target image”) being an analysis target, detecting a two-dimensional skeleton structure of a person from each of a plurality of the analysis target images, computing a feature value of the detected two-dimensional skeleton structure, and storing the computed feature value in association with each of the analysis target images in the database 110. Hereinafter, a configuration of a functional unit related to the data accumulation processing will be described.
The image acquisition unit 101 acquires an analysis target image. In the present specification, “acquisition” includes at least any one of “acquisition of data stored in another apparatus or a storage medium by its own apparatus (active acquisition)”, based on a user input or an instruction of a program, such as reception by making a request or an inquiry to another apparatus and reading by accessing to another apparatus or a storage medium, “inputting of data output to its own apparatus from another apparatus (passive acquisition)”, based on a user input or an instruction of a program, such as reception of data to be distributed (transmitted, push-notified, or the like) and acquisition by selection from among received data or received information, and “generation of new data by editing data (such as texting, sorting of data, extraction of a part of data, and change of a file format) and the like, and acquisition of the new data”.
For example, the image acquisition unit 101 acquires, as an analysis target image, a two-dimensional image that is captured by the camera 200 in a predetermined surveillance period and includes a person. In addition, the image acquisition unit 101 may acquire, as an analysis target image, a two-dimensional image that is stored in a storage means such as the database 110 and includes a person.
The skeleton structure detection unit 102 detects a two-dimensional skeleton structure of a person from each of the acquired analysis target images. The skeleton structure detection unit 102 can detect a skeleton structure for all persons recognized in the analysis target images. The skeleton structure detection unit 102 detects a skeleton structure of a person, based on a feature to be recognized such as a joint of the person, by using a skeleton estimation technique using machine learning. The skeleton structure detection unit 102 uses a skeleton estimation technique such as OpenPose in Non-Patent Document 1, for example, and extracts a keypoint being a characteristic point such as a joint.
The feature value computation unit 103 computes a feature value of the detected two-dimensional skeleton structure, and stores, in the database 110, the computed feature value in association with the analysis target image in which the two-dimensional skeleton structure is detected. The feature value of the skeleton structure indicates a feature of a skeleton of the person, and is an element for classifying and searching for a state of the person, based on the skeleton of the person. This feature value normally includes a plurality of parameters (for example, a classification element described below). The feature value may be a feature value of the entire skeleton structure, may be a feature value of a part of the skeleton structure, or may include a plurality of feature values as in each portion of the skeleton structure. A method for computing a feature value may be any method such as machine learning and normalization, and a minimum value and a maximum value may be acquired as normalization. As one example, the feature value is a feature value acquired by performing machine learning on the skeleton structure, a size of the skeleton structure from a head to a foot on an image, and the like. The size of the skeleton structure is a height in an up-down direction, an area, and the like of a skeleton region including the skeleton structure on an image. The up-down direction (a height direction or a vertical direction) is a direction (Y-axis direction) of up and down in an image, and is, for example, a direction perpendicular to the ground (reference surface). Further, a left-right direction (a horizontal direction) is a direction (X-axis direction) of left and right in an image, and is, for example, a direction parallel to the ground.
Note that, in order to perform classification and a search desired by a user, a feature value having robustness with respect to classification and search processing is preferably used. For example, when a user desires classification and a search that do not depend on an orientation and a body shape of a person, a feature value that is robust with respect to the orientation and the body shape of the person may be used. A feature value that does not depend on an orientation and a body shape of a person can be acquired by learning skeletons of persons facing in various directions with the same pose and skeletons of persons having various body shapes with the same pose, and extracting a feature only in the up-down direction of a skeleton.
The classification processing is processing of classifying (grouping), together, a plurality of two-dimensional skeleton structures that are detected from analysis target images and have similar feature values, based on data (data in which the analysis target image and a feature value of the two-dimensional skeleton structures detected from each of the analysis target images are associated with each other) stored in the database 110 in the data accumulation processing. Note that, the analysis target image and the two-dimensional skeleton structure detected from each of the analysis target images are associated with each other. Thus, classification of a plurality of the two-dimensional skeleton structures by the classification processing is also classification of a plurality of the analysis target images. The classification processing puts, together, a plurality of analysis target images including similar two-dimensional skeleton structures. Hereinafter, a configuration of a functional unit related to the classification processing will be described.
The classification unit 104 classifies a plurality of skeleton structures stored in the database 110, based on a degree of similarity between feature values of the skeleton structures (performs clustering). It can also be said that, as the recognition processing on a state of a person, the classification unit 104 classifies states of a plurality of persons, based on feature values of the skeleton structures. The degree of similarity is a distance between the feature values of the skeleton structures. The classification unit 104 may perform classification by a degree of similarity between feature values of the entire skeleton structures, may perform classification by a degree of similarity between feature values of a part of the skeleton structures, and may perform classification by a degree of similarity between feature values of a first portion (for example, both hands) and a second portion (for example, both feet) of the skeleton structures. Note that, a pose of a person may be classified based on a feature value of a skeleton structure of the person in each image, and behavior of a person may be classified based on a change in a feature value of a skeleton structure of the person in a plurality of images successive in time series. In other words, the classification unit 104 can classify a state of a person including a pose and behavior of the person, based on a feature value of a skeleton structure. For example, the classification unit 104 sets, as classification targets, a plurality of skeleton structures in a plurality of images captured in a predetermined surveillance period. The classification unit 104 acquires a degree of similarity between feature values of classification targets, and performs classification in such a way that skeleton structures having a high degree of similarity are in the same cluster (group with a similar pose). Note that, similarly to a search, a user may be able to specify a classification condition. The classification unit 104 can store a classification result of the skeleton structure in the database 110, and also display the classification result on the display unit 107.
The search processing is processing of searching for a predetermined skeleton structure from among a plurality of two-dimensional skeleton structures detected from analysis target images, based on data (data in which the analysis target image and the feature value of the two-dimensional skeleton structures detected from each of the analysis target images are associated with each other) stored in the database 110 in the data accumulation processing. Note that, the analysis target image and the two-dimensional skeleton structure detected from each of the analysis target images are associated with each other. Thus, an analysis target image including a predetermined skeleton structure can be searched by the “processing of searching for a predetermined skeleton structure from among a plurality of two-dimensional skeleton structures detected from analysis target images” described above. Hereinafter, a configuration of a functional unit related to the search processing will be described.
The image acquisition unit 101 acquires a query image. The image acquisition unit 101 can acquire a query image by any of the following acquisition examples, for example.
In the example, the image acquisition unit 101 acquires any of analysis target images as a query image. For example, the image acquisition unit 101 may select a predetermined number of analysis target images by a predetermined rule from each of a plurality of groups generated in the classification processing described above, and set the selected analysis target image as a query image.
In the example, the image acquisition unit 101 acquires a query image being prepared by a user and input to the image processing apparatus 100.
In the example, the image acquisition unit 101 acquires, as a query image, an image being searched by a keyword specified by a user.
For example, as illustrated in
In addition, as illustrated in
In addition, the image acquisition unit 101 may transmit an input keyword to a search engine that searches for an image related to the keyword, and acquire a search result from the search engine. Then, the image acquisition unit 101 may acquire, as a query image, a part or the whole of the image included in the search result.
The selection unit 109 selects at least one person included in a query image, based on a user input. A query image may include one person, and may include a plurality of persons. When a query image includes a plurality of persons, the selection unit 109 selects at least one person from the plurality of persons included in the query image, based on a user input. The selection unit 109 can achieve the selection by any of the following two techniques, for example. “Processing Example 1 of Selecting At Least One Person Included in Query Image”
In the example, the selection unit 109 receives a user input that freely specifies a partial region in an image. Then, the selection unit 109 selects a person detected in the specified partial region. The “person detected in the specified partial region” is a person whose body is completely included in the specified partial region, or a person whose at least a part of a body is included in the specified partial region. Details will be described below.
For example, it is assumed that the image acquisition unit 101 acquires a query image P as illustrated in
After the selection unit 109 receives the user input that specifies at least the partial region in the query image P, the selection unit 109 selects a person detected in the specified partial region. Hereinafter, one example of the processing will be described.
The selection unit 109 performs processing of detecting a person on an image in a specified partial region or an image including a specified partial region and a periphery thereof. Then, the selection unit 109 selects a person whose body is completely included in the specified partial region, or a person whose at least a part of a body is included in the specified partial region. The processing of detecting a person from an image can adopt every known technique.
Note that, when a plurality of persons are present in a partial region (region in the frame W) specified as illustrated in
The selection unit 109 performs processing of detecting a person on a whole query image (whole region in an image), and detects a person region being a region in which a person is present. The person region may be a rectangular region, or may be a region along a contour of the person. The processing of detecting a person from an image can adopt every known technique. Examples of a technique for detecting a region along a contour of a person include semantic segmentation, instance segmentation, a difference computation from a prepared background image, contour extraction processing, and the like, which are not limited thereto. Then, the selection unit 109 determines, from the detected person region, a person region completely included in the specified partial region, or a person region having a part included in the specified partial region, and selects the person present in the determined person region.
Note that, when a plurality of persons are present in a partial region (region in the frame W) specified as illustrated in
The skeleton structure detection unit 102 performs processing of detecting a two-dimensional skeleton structure of a person on an image in a specified partial region or an image including a specified partial region and a periphery thereof. Then, the selection unit 109 selects a person whose detected two-dimensional skeleton structure is completely included in the specified partial region, or a person whose at least a part of the detected two-dimensional skeleton structure is included in the specified partial region.
Note that, when a plurality of persons are present in a partial region (region in the frame W) specified as illustrated in
The skeleton structure detection unit 102 performs processing of detecting a two-dimensional skeleton structure of a person on a whole query image (whole region in an image). Then, the selection unit 109 selects a person whose detected two-dimensional skeleton structure is completely included in the specified partial region, or a person whose at least a part of the detected two-dimensional skeleton structure is included in the specified partial region.
Note that, when a plurality of persons are present in a partial region (region in the frame W) specified as illustrated in
In the example, before a user input that selects a person is received, processing of detecting a person is performed on a whole query image (whole region in an image). Then, as illustrated in
The selection unit 109 performs processing of detecting a person on a whole query image (whole region in an image), based on processing of detecting a known person. Then, the selection unit 109 sets all detected persons as selectable persons. In addition, the selection unit 109 may set, as a selectable person, a person having a region (that represents a size of a person in an image) occupying an image equal to or more than a reference value among the detected persons. It is difficult to detect a two-dimensional skeleton structure and compute a feature value from a person having a region occupying an image smaller than a predetermined level. When a pose of such a person is set as a query for a search, a desired search result is less likely to be acquired. Thus, such a person may be excluded from a selectable person.
The skeleton structure detection unit 102 performs processing of detecting a two-dimensional skeleton structure of a person on a whole query image (whole region in an image). Then, the selection unit 109 sets, as a selectable person, a person whose detection result of a two-dimensional skeleton structure by the skeleton structure detection unit 102 satisfies a predetermined condition.
The person who satisfies the predetermined condition is a “person having the number of extracted keypoints equal to or more than a reference value”, or a “person in which an evaluation value computed based on at least one of the number of extracted keypoints and reliability of each of the extracted keypoints is equal to or more than a reference value”.
A detailed algorithm for an evaluation value computation is not particularly limited, but is designed in such a way as to satisfy the following contents.
The skeleton structure detection unit 102 detects a two-dimensional skeleton structure of a person included in a query image. The detection processing of the skeleton structure detection unit 102 is as described in the data accumulation processing. The skeleton structure detection unit 102 may perform processing of detecting a two-dimensional skeleton structure of a person on a whole query image (whole region in an image), or may perform processing of detecting a two-dimensional skeleton structure of a person on a part of a query image (such as a region specified by a user input, and a partial region including a person selected by the selection unit 109).
The feature value computation unit 103 computes a feature value of a two-dimensional skeleton structure of the person selected by the selection unit 109. The extraction processing of the feature value computation unit 103 is as described in the data accumulation processing.
The search unit 105 searches for a skeleton structure having a high degree of similarity to a feature value (feature value of a two-dimensional skeleton structure of a person selected by the selection unit 109) of a search query (query state) from among a plurality of skeleton structures stored in the database 110 in the data accumulation processing.
For example, the search unit 105 may search for a skeleton structure having a high degree of similarity to a feature value of a search query by verifying the feature value of the search query with a feature value of a skeleton structure detected from each of a plurality of analysis target images. In a case of this configuration, the classification processing described above is not needed. However, since a verification target is all of a plurality of analysis target images, a processing load on a computer in the verification increases.
Thus, the search unit 105 may decide, by any means, a representative of a feature value of a two-dimensional skeleton structure for each group acquired in the classification processing, and search for a skeleton structure having a high degree of similarity to the feature value of the search query described above by verifying the representative with the feature value of the search query. In a case of this configuration, the number of verification targets is reduced, and thus a processing load on a computer in the verification is reduced.
Note that, an analysis target image and a two-dimensional skeleton structure detected from each of the analysis target images are associated with each other. Thus, an analysis target image including a predetermined skeleton structure (skeleton structure having a high degree of similarity to a feature value of a search query) can be searched by the “processing of searching for a predetermined skeleton structure from among a plurality of two-dimensional skeleton structures detected from analysis target images” described above. In other words, an analysis target image including a person in a state similar to a state of a person included in a query image can be searched from analysis target images.
A degree of similarity is a distance between feature values of skeleton structures. The search unit 105 may perform a search by a degree of similarity between feature values of the entire skeleton structures, may perform a search by a degree of similarity between feature values of a part of the skeleton structures, and may perform a search by a degree of similarity between feature values of a first portion (for example, both hands) and a second portion (for example, both feet) of the skeleton structures. Note that, a pose of a person may be searched based on a feature value of a skeleton structure of the person in each image, and behavior of a person may be searched based on a change in a feature value of a skeleton structure of the person in a plurality of images successive in time series. In other words, the search unit 105 can search for a state of a person including a pose and behavior of the person, based on a feature value of a skeleton structure. For example, the search unit 105 sets, as search targets, feature values of a plurality of skeleton structures in a plurality of analysis target images captured in a predetermined surveillance period.
The input unit 106 is an input interface that acquires information input from a user who operates the image processing apparatus 100. For example, the user is a supervisor who surveys a person in a suspicious state from an image of a surveillance camera. The input unit 106 is, for example, a graphical user interface (GUI), and receives an input of information according to an operation of the user from an input apparatus such as a keyboard, a mouse, a touch panel, a microphone, and a physical button.
The display unit 107 is a display unit that displays a result of an operation (processing) of the image processing apparatus 100, and the like, and is, for example, a display apparatus such as a liquid crystal display and an organic electro luminescence (EL) display. The display unit 107 displays a classification result of the classification unit 104, a search result of the search unit 105, an evaluation value of a candidate of a query image described above, and the like.
Next, one example of a hardware configuration of the image processing apparatus 100 will be described. Each functional unit of the image processing apparatus 100 is achieved by any combination of hardware and software concentrating on a central processing unit (CPU) of any computer, a memory, a program loaded into the memory, a storage unit (that can also store a program downloaded from a storage medium such as a compact disc (CD), a server on the Internet, and the like in addition to a program previously stored at a stage of shipping of an apparatus) such as a hard disk that stores the program, and a network connection interface. Then, various modification examples of an achievement method and an apparatus thereof are understood by a person skilled in the art.
The bus 5A is a data transmission path for the processor 1A, the memory 2A, the peripheral circuit 4A, and the input/output interface 3A to transmit and receive data to and from one another. The processor 1A is an arithmetic processing apparatus such as a CPU and a graphics processing unit (GPU), for example. The memory 2A is a memory such as a random access memory (RAM) and a read only memory (ROM), for example. The input/output interface 3A includes an interface for acquiring information from an input apparatus, an external apparatus, an external server, an external sensor, a camera, and the like, an interface for outputting information to an output apparatus, an external apparatus, an external server, and the like, and the like. The input apparatus is, for example, a keyboard, a mouse, a microphone, a physical button, a touch panel, and the like. The output apparatus is, for example, a display, a speaker, a printer, a mailer, and the like. The processor 1A can output an instruction to each of modules, and perform an arithmetic operation, based on an arithmetic result of the modules.
As illustrated in
For example, the skeleton structure detection unit 102 extracts a feature point that may be a keypoint from an image, refers to information acquired by performing machine learning on the image of the keypoint, and detects each keypoint of a person. In the example illustrated in
Subsequently, as illustrated in
In the example in
In the example in
In the example in
Subsequently, as illustrated in
In the present example embodiment, various classification methods can be used by performing classification, based on a feature value of a skeleton structure of a person. Note that, a classification method may be preset, or any classification method may be able to be set by a user. Further, classification may be performed by the same method as a search method described below. In other words, classification may be performed by a classification condition similar to a search condition. For example, the classification unit 104 performs classification by the following classification methods. Any classification method may be used, or any selected classification method may be combined.
Classification by a plurality of hierarchies Classification is performed by combining, in a hierarchical manner, classification by a skeleton structure of a whole body, classification by a skeleton structure of an upper body and a lower body, classification by a skeleton structure of an arm and a leg, and the like. In other words, classification may be performed based on a feature value of a first portion and a second portion of a skeleton structure, and, furthermore, classification may be performed by assigning weights to the feature value of the first portion and the second portion.
Classification by a plurality of images along time series Classification is performed based on a feature value of a skeleton structure in a plurality of images successive in time series. For example, classification may be performed based on a cumulative value by accumulating a feature value in a time series direction. Furthermore, classification may be performed based on a change (change value) in a feature value of a skeleton structure in a plurality of successive images.
Classification by ignoring the left and the right of a skeleton structure Classification is performed on an assumption that reverse skeleton structures on a right side and a left side of a person are the same skeleton structure.
Furthermore, the classification unit 104 displays a classification result of the skeleton structure (S113). The classification unit 104 acquires a necessary image of a skeleton structure and a person from the database 110, and displays, on the display unit 107, the skeleton structure and the person for each similar pose (cluster) as a classification result.
Subsequently, as illustrated in
One example of the processing in S121 will be described by using
Another example of the processing in S121 will be described by using
Then, when the number of persons included in the image determined based on a result of the detection processing in S312 is plural (Yes in S313), the selection unit 109 selects at least one person from the plurality of persons included in the image (S314). Subsequently, the feature value computation unit 103 computes a feature value of a two-dimensional skeleton structure of the at least one person selected in S314 (S316). The feature value of the two-dimensional skeleton structure is a search query. The processing in 314 and S316 is similar to the processing in S302 and S303 in
On the other hand, when the number of persons included in the image determined based on a result of the detection processing in S312 is one (No in S313), the selection unit 109 selects the detected one person (S315). Then, the feature value computation unit 103 computes a feature value of a two-dimensional skeleton structure of the one person selected in S315 (S316). The feature value of the two-dimensional skeleton structure is a search query.
Note that, the “number of persons included in the image determined based on a result of the detection processing in S312” may be the number of persons detected in S312, or may be the number of “selectable persons” described above. A concept of the “selectable person” is as described in “Processing Examples 1 and 2 of Detecting Person and Deciding Person to be Displayed as Selectable Person”.
Returning to
In the present example embodiment, similarly to the classification methods, various search methods can be used by performing a search, based on a feature value of a skeleton structure of a person. Note that, a search method may be preset, or any search method may be able to be set by a user. For example, the search unit 105 performs a search by the following search methods. Any search method may be used, or any selected search method may be combined. A search may be performed by combining a plurality of search methods (search conditions) by a logical expression (for example, AND (conjunction), OR (disjunction), NOT (negation)). For example, a search may be performed by setting “(pose with a right hand up) AND (pose with a left foot up)” as a search condition.
A Search Only by a Feature Value in the Height Direction
By performing a search by using only a feature value in the height direction of a person, an influence of a change in the horizontal direction of a person can be suppressed, and robustness improves with respect to a change in orientation of the person and body shape of the person. For example, as in skeleton structures 501 to 503 in
When a part of a body of a person is hidden in a partial search image, a search is performed by using only information about a recognizable portion. For example, as in skeleton structures 511 and 512 in
Search by Ignoring the Left and the Right of a Skeleton Structure
A search is performed on an assumption that reverse skeleton structures on a right side and a left side of a person are the same skeleton structure. For example, as in skeleton structures 531 and 532 in
A Search by a Feature Value in the Vertical Direction and the Horizontal Direction
After a search is performed only with a feature value of a person in the vertical direction (Y-axis direction), the acquired result is further searched by using a feature value of the person in the horizontal direction (X-axis direction).
A Search by a Plurality of Images Along Time Series
A search is performed based on a feature value of a skeleton structure in a plurality of images successive in time series. For example, a search may be performed based on a cumulative value by accumulating a feature value in a time series direction. Furthermore, a search may be performed based on a change (change value) in a feature value of a skeleton structure in a plurality of successive images.
Furthermore, the search unit 105 displays a search result of the skeleton structure (S123). The search unit 105 acquires a necessary image of a skeleton structure and a person from the database 110, and displays, on the display unit 107, the skeleton structure and the person acquired as a search result. For example, when a plurality of search queries (search conditions) are specified, a search result is displayed for each of the search queries.
An order in which search results are displayed side by side from a search query may be an order in which a corresponding skeleton structure is found, or may be decreasing order of a degree of similarity. When a search is performed by assigning a weight to a portion (feature point) in a partial search, display may be performed in an order of a degree of similarity computed by assigning a weight. Display may be performed in an order of a degree of similarity computed only from a portion (feature point) selected by a user. Further, display may be performed by cutting, for a certain period of time, images (frames) in time series before and after an image (frame) being a search result.
Herein, a modification example of the search processing described above will be described. The selection unit 109 selects at least one person included in a query image, based on a user input that specifies at least a partial region in the query image, and also selects a part of a body of the selected person, based on the user input that specifies at least the partial region in the query image. Then, the search unit 105 searches for an analysis target image including a person in a state similar to a state of the selected person by setting a weight of the selected part of the body to be greater than that of another portion.
For example, the selection unit 109 may receive a user input that specifies a part of a body by a user input that surrounds a partial region of a query image by a frame X as illustrated in
Herein, another modification example of the search processing described above will be described. The image processing apparatus 100 searches, from query-specific images being prepared, for an image including a person having a feature value of a two-dimensional skeleton structure similar to that of a person selected by the selection unit 109. Then, as illustrated in
As described above, in the present example embodiment, a skeleton structure of a person can be detected from a two-dimensional image, and classification and a search can be performed based on a feature value of the detected skeleton structure. In this way, classification can be performed for each similar pose having a high degree of similarity, and a similar pose having a high degree of similarity to a search query (search key) can be searched. By classifying similar poses from an image and displaying the similar poses, a user can recognize a pose of a person in the image without specifying a pose and the like. Since the user can specify a pose being a search query from a classification result, a desired pose can be searched even when a pose desired to be searched by a user is not recognized in detail in advance. For example, since classification and a search can be performed with a whole or a part of a skeleton structure of a person and the like as a condition, flexible classification and a flexible search can be performed.
Further, in a case of the present example embodiment, a query image including a person in a state desired to be searched needs to be provided to the image processing apparatus 100. When an image including only a person in a state desired to be searched is found, there is no particular problem, but only an image including a person in an unrelated state may be found in addition to a person in a state desired to be searched. In a case where such a query image is provided to the image processing apparatus 100, when a search is performed with, as search queries, states of all of a plurality of persons included in the query image, not only an image including a person in a desired state but also an image including a person in an unrelated state may be included in a search result. For this problem, in the search processing, the image processing apparatus 100 selects at least one person included in a query image, based on a user input, and searches, from analysis target images, for an analysis target image including a person in a state similar to a state of the selected person. Such an image processing apparatus 100 can perform a search with only a desired state of a person as a search query even when an image including a person in an unrelated state in addition to a person in a state desired to be searched is a query image. As a result, inconvenience that an image different from a search target is included in a search result can be suppressed.
Further, the image processing apparatus 100 according to the present example embodiment can receive a user input that specifies at least a partial region in a query image, and select a person detected in the specified partial region. With such an image processing apparatus 100, a user can easily recognize which person is to be selected by his/her own input.
Further, after the image processing apparatus 100 according to the present example embodiment performs the processing of detecting a person from a query image, the image processing apparatus 100 can display, on the query image, a processed image in which a person detected in the query image is displayed as a selectable person in an identifiable manner, and can receive a user input that selects at least one person from the selectable person. With such an image processing apparatus 100, a user can easily recognize which person is to be selected by his/her own input. Further, the user may only select a desired choice from a plurality of choices, and thus a user input is further facilitated.
Further, the image processing apparatus 100 according to the present example embodiment can display, as a selectable person on the processed image described above, a person having a region (that represents a size of a person in an image) occupying an image equal to or more than a reference value and a person whose detection result of a two-dimensional skeleton structure by the skeleton structure detection unit 102 satisfies a predetermined condition, among detected persons. As a result, only a person in which detection of a two-dimensional skeleton structure and a computation of a feature value can be accurately performed can be set as a selectable person, and an improvement in quality of a search query and an improvement in accuracy of a search result are achieved.
Further, the image processing apparatus 100 according to the present example embodiment can select a part of a body of a person, based on a user input that specifies the part of the body of the person on a query image, and can search for an analysis target image including a person in a state similar to a state of the selected person by setting a weight of the selected part of the body to be greater than that of another portion. With such an image processing apparatus 100, a user can easily recognize which part of a body is to be selected by his/her own input.
Further, the image processing apparatus 100 according to the present example embodiment can determine the number of persons included in a query image. Then, the image processing apparatus 100 can select, when the determined number of persons is plural, at least one person from the plurality of persons included in the image, based on a user input, and the image processing apparatus 100 can select, when the determined number of persons is one, the one person. Such an image processing apparatus 100 can limit execution of the processing of selecting at least one person from a query image, based on a user input, to a case where persons included in the query image are plural. As a result, a reduction in processing load on a computer and a reduction in user load by a reduction in user input are achieved.
An example embodiment 2 will be described below with reference to the drawings. In the present example embodiment, a specific example of the feature value computation in the example embodiment 1 will be described. In the present example embodiment, a feature value is acquired by normalization by using a height of a person. The other points are similar to those in the example embodiment 1.
The height computation unit (height estimation unit) 108 computes (estimates) a standing height (referred to as a height pixel number) of a person in a two-dimensional image, based on a two-dimensional skeleton structure detected by a skeleton structure detection unit 102. It can be said that the height pixel number is a height of a person in a two-dimensional image (a length of a whole body of a person on a two-dimensional image space). The height computation unit 108 acquires a height pixel number (pixel number) from a length (length on the two-dimensional image space) of each bone of a detected skeleton structure.
In the following examples, specific examples 1 to 3 are used as a method for acquiring a height pixel number. Note that, any method of the specific examples 1 to 3 may be used, or a plurality of any selected methods may be combined and used. In the specific example 1, a height pixel number is acquired by adding up lengths of bones from a head to a foot among bones of a skeleton structure. When the skeleton structure detection unit 102 (skeleton estimation technique) does not output a top of a head and a foot, a correction can be performed by multiplication by a constant as necessary. In the specific example 2, a height pixel number is computed by using a human model indicating a relationship between a length of each bone and a length of a whole body (a height on the two-dimensional image space). In the specific example 3, a height pixel number is computed by fitting (applying) a three-dimensional human model to a two-dimensional skeleton structure.
The feature value computation unit 103 according to the present example embodiment is a normalization unit that normalizes a skeleton structure (skeleton information) of a person, based on a computed height pixel number of the person. The feature value computation unit 103 stores a feature value (normalization value) of the normalized skeleton structure in a database 110. The feature value computation unit 103 normalizes, by the height pixel number, a height on an image of each keypoint (feature point) included in the skeleton structure. In the present example embodiment, for example, a height direction is an up-down direction (Y-axis direction) in a two-dimensional coordinate (X-Y coordinate) space of an image. In this case, a height of a keypoint can be acquired from a value (pixel number) of a Y coordinate of the keypoint. Alternatively, a height direction may be a direction (vertical projection direction) of a vertical projection axis in which a direction of a vertical axis perpendicular to the ground (reference surface) in a three-dimensional coordinate space in a real world is projected in the two-dimensional coordinate space. In this case, a height of a keypoint can be acquired by acquiring a vertical projection axis in which an axis perpendicular to the ground in the real world is projected in the two-dimensional coordinate space, based on a camera parameter, and being acquired from a value (pixel number) along the vertical projection axis. Note that, the camera parameter is a capturing parameter of an image, and, for example, the camera parameter is a pose, a position, a capturing angle, a focal distance, and the like of a camera 200. The camera 200 captures an image of an object whose length and position are clear in advance, and a camera parameter can be acquired from the image. A strain may occur at both ends of the captured image, and the vertical direction in the real world and the up-down direction in the image may not match. In contrast, an extent that the vertical direction in the real world is tilted in an image is clear by using a parameter of a camera that captures the image. Thus, a feature value of a keypoint can be acquired in consideration of a difference between the real world and the image by normalizing, by a height, a value of the keypoint along a vertical projection axis projected in the image, based on the camera parameter. Note that, a left-right direction (a horizontal direction) is a direction (X-axis direction) of left and right in a two-dimensional coordinate (X-Y coordinate) space of an image, or is a direction in which a direction parallel to the ground in the three-dimensional coordinate space in the real world is projected in the two-dimensional coordinate space.
As illustrated in
The image processing apparatus 100 performs the height pixel number computation processing (S201), based on a detected skeleton structure, after the image acquisition (S101) and skeleton structure detection (S102). In this example, as illustrated in
In the specific example 1, a height pixel number is acquired by using a length of a bone from a head to a foot. In the specific example 1, as illustrated in
The height computation unit 108 acquires a length of a bone from a head to a foot of a person on a two-dimensional image, and acquires a height pixel number. In other words, each length (pixel number) of a bone B1 (length L1), a bone B51 (length L21), a bone B61 (length L31), and a bone B71 (length L41), or the bone B1 (length L1), a bone B52 (length L22), a bone B62 (length L32), and a bone B72 (length L42) among bones in
In an example in
In an example in
In an example in
In the specific example 1, since a height can be acquired by adding up lengths of bones from a head to a foot, a height pixel number can be acquired by a simple method. Further, since at least a skeleton from a head to a foot may be able to be detected by a skeleton estimation technique using machine learning, a height pixel number can be accurately estimated even when the entire person is not necessarily captured in an image as in a squatting state and the like.
In the specific example 2, a height pixel number is acquired by using a two-dimensional skeleton model indicating a relationship between a length of a bone included in a two-dimensional skeleton structure and a length of a whole body of a person on a two-dimensional image space.
In the specific example 2, as illustrated in
Subsequently, as illustrated in
The human model referred at this time is, for example, a human model of an average person, but a human model may be selected according to an attribute of a person such as age, gender, and nationality. For example, when a face of a person is captured in a captured image, an attribute of the person is identified based on the face, and a human model associated with the identified attribute is referred. An attribute of a person can be recognized from a feature of a face in an image by referring to information acquired by performing machine learning on a face for each attribute. Further, when an attribute of a person cannot be identified from an image, a human model of an average person may be used.
Further, a height pixel number computed from a length of a bone may be corrected by a camera parameter. For example, when a camera is placed in a high position and performs capturing in such a way that a person is looked down, a horizontal length such as a bone of a width of shoulders is not affected by a dip of the camera in a two-dimensional skeleton structure, but a vertical length such as a bone from a neck to a waist is reduced as a dip of the camera increases. Then, a height pixel number computed from the horizontal length such as a bone of a width of shoulders tends to be greater than an actual height pixel number. Thus, when a camera parameter is used, an angle at which a person is looked down by the camera is clear, and thus a correction can be performed in such a way as to acquire a two-dimensional skeleton structure captured from the front by using information about the dip. In this way, a height pixel number can be more accurately computed.
Subsequently, as illustrated in
In the specific example 2, since a height pixel number is acquired based on a bone of a detected skeleton structure by using a human model indicating a relationship between lengths of a bone and a whole body on the two-dimensional image space, a height pixel number can be acquired from some of bones even when all skeletons from a head to a foot cannot be acquired. Particularly, a height pixel number can be accurately estimated by adopting a greater value among values acquired from a plurality of bones.
In the specific example 3, a skeleton vector of a whole body is acquired by fitting a two-dimensional skeleton structure to a three-dimensional human model (three-dimensional skeleton model) and using a height pixel number of the fit three-dimensional human model.
In the specific example 3, as illustrated in
Subsequently, the height computation unit 108 adjusts an arrangement and a height of a three-dimensional human model (S232). The height computation unit 108 prepares, for a detected two-dimensional skeleton structure, the three-dimensional human model for a height pixel number computation, and arranges the three-dimensional human model in the same two-dimensional image, based on the camera parameter. Specifically, a “relative positional relationship between a camera and a person in a real world” is determined from the camera parameter and the two-dimensional skeleton structure. For example, if a position of the camera has coordinates (0, 0, 0), coordinates (x, y, z) of a position in which a person stands (or sits) are determined. Then, by assuming an image captured when the three-dimensional human model is arranged in the same position (x, y, z) as that of the determined person, the two-dimensional skeleton structure and the three-dimensional human model are superimposed.
Note that, the three-dimensional human model 402 prepared at this time may be a model in a state close to a pose of the two-dimensional skeleton structure 401 as in
Subsequently, as illustrated in
Subsequently, as illustrated in
In the specific example 3, a height pixel number is acquired based on a three-dimensional human model by fitting the three-dimensional human model to a two-dimensional skeleton structure, based on a camera parameter, and thus the height pixel number can be accurately estimated even when all bones are not captured at the front, i.e., when an error is great due to all bones being captured on a slant.
As illustrated in
Subsequently, the feature value computation unit 103 determines a reference point for normalization (S242). The reference point is a point being a reference for representing a relative height of a keypoint. The reference point may be preset, or may be able to be selected by a user. The reference point is preferably at the center of the skeleton structure or higher than the center (in an upper half of an image in the up-down direction), and, for example, coordinates of a keypoint of a neck are set as the reference point. Note that, coordinates of a keypoint of a head or another portion instead of a neck may be set as the reference point. Instead of a keypoint, any coordinates (for example, center coordinates in the skeleton structure, and the like) may be set as the reference point.
Subsequently, the feature value computation unit 103 normalizes the keypoint height (yi) by the height pixel number (S243). The feature value computation unit 103 normalizes each keypoint by using the keypoint height of each keypoint, the reference point, and the height pixel number. Specifically, the feature value computation unit 103 normalizes, by the height pixel number, a relative height of a keypoint with respect to the reference point. Herein, as an example focusing only on the height direction, only a Y coordinate is extracted, and normalization is performed with the reference point as the keypoint of the neck. Specifically, with a Y coordinate of the reference point (keypoint of the neck) as (yc), a feature value (normalization value) is acquired by using the following equation (1). Note that, when a vertical projection axis based on a camera parameter is used, (yi) and (yc) are converted into values in a direction along the vertical projection axis.
[Mathematical 1]
f
i=(yi−yc)/h (1)
For example, when the number of keypoints is 18, 18 coordinates (x0, y0), (x1, y1), . . . and (x17, y17) of the keypoints are converted into 18-dimensional feature values as follows by using the equation (1) described above.
As described above, in the present example embodiment, a skeleton structure of a person is detected from a two-dimensional image, and each keypoint of the skeleton structure is normalized by using a height pixel number (upright height on a two-dimensional image space) acquired from the detected skeleton structure. Robustness when classification, a search, and the like are performed can be improved by using the normalized feature value. In other words, since a feature value according to the present example embodiment is not affected by a change of a person in the horizontal direction as described above, robustness with respect to a change in orientation of the person and a body shape of the person is great.
Furthermore, the present example embodiment can be achieved by detecting a skeleton structure of a person by using a skeleton estimation technique such as OpenPose, and thus learning data that learn a pose and the like of a person do not need to be prepared. Further, classification and a search of a pose and the like of a person can be achieved by normalizing a keypoint of a skeleton structure and storing the keypoint in advance in a database, and thus classification and a search can also be performed on an unknown pose. Further, a clear and simple feature value can be acquired by normalizing a keypoint of a skeleton structure, and thus persuasion of a user for a processing result is high unlike a black box algorithm as in machine learning.
While the example embodiments of the present invention have been described with reference to the drawings, the example embodiments are only exemplification of the present invention, and various configurations other than the above-described example embodiments can also be employed.
Further, the plurality of steps (pieces of processing) are described in order in the plurality of flowcharts used in the above-described description, but an execution order of steps performed in each of the example embodiments is not limited to the described order. In each of the example embodiments, an order of illustrated steps may be changed within an extent that there is no harm in context. Further, each of the example embodiments described above can be combined within an extent that a content is not inconsistent.
A part or the whole of the above-described example embodiments may also be described as in supplementary notes below, which is not limited thereto.
1. An image processing apparatus including:
an image acquisition unit that acquires an image;
a selection unit that selects at least one person included in the image, based on a user input;
a skeleton structure detection unit that detects a two-dimensional skeleton structure of a person included in the image;
a feature value computation unit that computes a feature value of the detected two-dimensional skeleton structure; and
a search unit that searches, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
2. The image processing apparatus according to supplementary note 1, wherein
the selection unit
the selection unit
the selection unit displays the processed image in which a person whose detection result of the two-dimensional skeleton structure satisfies a predetermined condition is displayed as the selectable person in an identifiable manner.
5. The image processing apparatus according to supplementary note 4, wherein
the skeleton structure detection unit extracts a plurality of keypoints of a body in processing of detecting the two-dimensional skeleton structure, and
a person who satisfies the predetermined condition is
the selection unit selects a part of a body of the selected person, based on a user input that specifies at least a partial region in the image, and
the search unit searches for the analysis target image including a person in a state similar to a state of the selected person by setting a weight of the selected part of the body to be greater than that of another part.
7. The image processing apparatus according to any of supplementary notes 1 to 6, wherein
the selection unit
by a computer:
acquiring an image;
selecting at least one person included in the image, based on a user input;
detecting a two-dimensional skeleton structure of a person included in the image;
computing a feature value of the detected two-dimensional skeleton structure; and
searching, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
9. A program causing a computer to function as:
an image acquisition unit that acquires an image;
a selection unit that selects at least one person included in the image, based on a user input;
a skeleton structure detection unit that detects a two-dimensional skeleton structure of a person included in the image;
a feature value computation unit for computing a feature value of the detected two-dimensional skeleton structure; and
a search unit that searches, from analysis target images, for the analysis target image including a person in a state similar to a state of the selected person, based on a degree of similarity to a feature value of the two-dimensional skeleton structure.
Filing Document | Filing Date | Country | Kind |
---|---|---|---|
PCT/JP2020/025793 | 7/1/2020 | WO |