Autonomous driving is quickly moving from the realm of science fiction to becoming an achievable reality. Already in the market are Advanced-Driver Assistance Systems (“ADAS”) that automate, adapt and enhance vehicles for safety and better driving. The next step will be vehicles that increasingly assume control of driving functions such as steering, accelerating, braking and monitoring the surrounding environment and driving conditions to respond to events, such as changing lanes or speed when needed to avoid traffic, crossing pedestrians, animals, and so on. The requirements for object and image detection are critical and specify the time required to capture data, process it and turn it into action. All this while ensuring accuracy, consistency and cost optimization.
An aspect of making this work is the ability to detect and classify objects in the surrounding environment at the same or possibly even better level as humans. Humans are adept at recognizing and perceiving the world around them with an extremely complex human visual system that essentially has two main functional parts: the eye and the brain. In autonomous driving technologies, the eye may include a combination of multiple sensors, such as camera, radar, and lidar, while the brain may involve multiple artificial intelligence, machine learning and deep learning systems. The goal is to have full understanding of a dynamic, fast-moving environment in real time and human-like intelligence to act in response to changes in the environment.
The present application may be more fully appreciated in connection with the following detailed description taken in conjunction with the accompanying drawings, which are not drawn to scale and in which like reference characters refer to like parts throughout, and wherein:
A beam steering radar with a selective scanning mode for use in autonomous vehicles is disclosed. The beam steering radar incorporates at least one beam steering antenna that is dynamically controlled such as to change its electrical or electromagnetic configuration to enable beam steering. The beam steering antenna generates a narrow, directed beam that can be steered to any angle (i.e., from 0° to 360°) across a field-of-view (“FoV”) to detect objects. In various examples, the beam steering radar operates in a selective scanning mode to scan around an area of interest. The beam steering radar can steer to a desired angle and then scan around that angle to detect objects in the area of interest without wasting any processing or scanning cycles illuminating areas with no valid objects. The dynamic control is implemented with processing engines which upon identifying objects in the vehicle's FoV, inform the beam steering radar where to steer its beams and focus on the areas and objects of interest by adjusting its radar scan parameters. The objects of interest may include structural elements in the vehicle's FoV such as roads, walls, buildings and road center medians, as well as other vehicles, pedestrians, bystanders, cyclists, plants, trees, animals and so on.
The detailed description set forth below is intended as a description of various configurations of the subject technology and is not intended to represent the only configurations in which the subject technology may be practiced. The appended drawings are incorporated herein and constitute a part of the detailed description. The detailed description includes specific details for the purpose of providing a thorough understanding of the subject technology. However, the subject technology is not limited to the specific details set forth herein and may be practiced using one or more implementations. In one or more instances, structures and components are shown in block diagram form in order to avoid obscuring the concepts of the subject technology. In other instances, well-known methods and structures may not be described in detail to avoid unnecessarily obscuring the description of the examples. Also, the examples may be used in combination with each other.
In various examples, the ego vehicle 100 may also have other perception sensors such as camera 102 and lidar 104. These perception sensors are not required for the ego vehicle 100, but may be useful in augmenting the object detection capabilities of the beam steering radar 106. Camera sensor 102 may be used to detect visible objects and conditions and to assist in the performance of various functions. The lidar sensor 104 can also be used to detect objects and provide this information to adjust control of the vehicle. This information may include information such as congestion on a highway, road conditions, and other conditions that would impact the sensors, actions or operations of the vehicle. Camera sensors are currently used in Advanced Driver Assistance Systems (“ADAS”) to assist drivers in driving functions such as parking (e.g., in rear view cameras). Cameras can capture texture, color and contrast information at a high level of detail, but similar to the human eye, they are susceptible to adverse weather conditions and variations in lighting. Camera 102 may have a high resolution but cannot resolve objects beyond 50 meters.
Lidar sensors typically measure the distance to an object by calculating the time taken by a pulse of light to travel to an object and back to the sensor. When positioned on top of a vehicle, a lidar sensor can provide a 360° 3D view of the surrounding environment. Other approaches may use several lidars at different locations around the vehicle to provide the full 360° view. However, lidar sensors such as lidar 104 are still prohibitively expensive, bulky in size, sensitive to weather conditions and are limited to short ranges (typically <150-200 meters). Radars, on the other hand, have been used in vehicles for many years and operate in all-weather conditions. Radars also use far less processing than the other types of sensors and have the advantage of detecting objects behind obstacles and determining the speed of moving objects. When it comes to resolution, lidars' laser beams are focused on small areas, have a smaller wavelength than RF signals, and can achieve around 0.25 degrees of resolution.
In various examples and as described in more detail below, the beam steering radar 106 can provide a 360° true 3D vision and human-like interpretation of the ego vehicle's path and surrounding environment. The beam steering radar 106 is capable of shaping and steering RF beams in all directions in a 360° FoV with at least one beam steering antenna and recognize objects quickly and with a high degree of accuracy over a long range of around 300 meters or more. The short-range capabilities of camera 102 and lidar 104 along with the long-range capabilities of radar 106 enable a sensor fusion module 108 in ego vehicle 100 to enhance its object detection and identification.
As illustrated, beam steering radar 106 is capable of detecting both vehicle 120 at a far range (e.g., >250 m) as well as bus 122 at a short range (e.g., <100 m). Detecting both in a short amount of time and with enough range and velocity resolution is imperative for full autonomy of driving functions of the ego vehicle. Radar 106 has an adjustable long-range radar (“LRR”) mode that enables the detection of long-range objects in a very short time to then focus on obtaining finer velocity resolution for the detected vehicles. Although not described herein, radar 106 is capable of time-alternatively reconfiguring between LRR and short-range radar (“SRR”) modes. The SRR mode enables a wide beam with lower gain, but can make quick decisions to avoid an accident, assist in parking and downtown travel, and capture information about a broad area of the environment. The LRR mode enables a narrow, directed beam and long distance, having high gain; this is powerful for high speed applications, and where longer processing time allows for greater reliability. The adjustable LRR mode uses a reduced number of chirps (e.g., 5, 10, 15, or 20) to reduce the chirp segment time by up to 75%, guaranteeing a fast beam scanning rate that is critical for successful object detection and autonomous vehicle performance. Excessive dwell time for each beam position may cause blind zones, and the adjustable LRR mode ensures that fast object detection can occur at long range while maintaining the antenna gain, transmit power and desired SNR for the radar operation.
Attention is now directed to
In various examples, beam steering radar 202 with adjustable LRR mode includes at least one beam steering antenna for providing dynamically controllable and steerable beams that can focus on one or multiple portions of a 360° FoV of the vehicle. The beams radiated from the beam steering antenna are reflected back from objects in the vehicle's path and surrounding environment and received and processed by the radar 202 to detect and identify the objects. Radar 202 includes a perception module that is trained to detect and identify objects and control the radar module as desired. Camera sensor 204 and lidar 206 may also be used to identify objects in the path and surrounding environment of the ego vehicle, albeit at a much lower range.
Infrastructure sensors 208 may provide information from infrastructure while driving, such as from a smart road configuration, bill board information, traffic alerts and indicators, including traffic lights, stop signs, traffic warnings, and so forth. This is a growing area, and the uses and capabilities derived from this information are immense. Environmental sensors 210 detect various conditions outside, such as temperature, humidity, fog, visibility, precipitation, among others. Operational sensors 212 provide information about the functional operation of the vehicle. This may be tire pressure, fuel levels, brake wear, and so forth. The user preference sensors 214 may be configured to detect conditions that are part of a user preference. This may be temperature adjustments, smart window shading, etc. Other sensors 216 may include additional sensors for monitoring conditions in and around the vehicle.
In various examples, the sensor fusion module 220 optimizes these various functions to provide an approximately comprehensive view of the vehicle and environments. Many types of sensors may be controlled by the sensor fusion module 220. These sensors may coordinate with each other to share information and consider the impact of one control action on another system. In one example, in a congested driving condition, a noise detection module (not shown) may identify that there are multiple radar signals that may interfere with the vehicle. This information may be used by a perception module in radar 202 to adjust the radar's scan parameters so as to avoid these other signals and minimize interference.
In another example, environmental sensor 210 may detect that the weather is changing, and visibility is decreasing. In this situation, the sensor fusion module 220 may determine to configure the other sensors to improve the ability of the vehicle to navigate in these new conditions. The configuration may include turning off camera or lidar sensors 204-206 or reducing the sampling rate of these visibility-based sensors. This effectively places reliance on the sensor(s) adapted for the current situation. In response, the perception module configures the radar 202 for these conditions as well. For example, the radar 202 may reduce the beam width to provide a more focused beam, and thus a finer sensing capability.
In various examples, the sensor fusion module 220 may send a direct control to radar 202 based on historical conditions and controls. The sensor fusion module 220 may also use some of the sensors within system 200 to act as feedback or calibration for the other sensors. In this way, an operational sensor 212 may provide feedback to the perception module and/or the sensor fusion module 220 to create templates, patterns and control scenarios. These are based on successful actions or may be based on poor results, where the sensor fusion module 220 learns from past actions.
Data from sensors 202-216 may be combined in sensor fusion module 220 to improve the target detection and identification performance of autonomous driving system 200. Sensor fusion module 220 may itself be controlled by system controller 222, which may also interact with and control other modules and systems in the vehicle. For example, system controller 222 may turn the different sensors 202-216 on and off as desired, or provide instructions to the vehicle to stop upon identifying a driving hazard (e.g., deer, pedestrian, cyclist, or another vehicle suddenly appearing in the vehicle's path, flying debris, etc.).
All modules and systems in autonomous driving system 200 communicate with each other through communication module 218. Autonomous driving system 200 also includes system memory 224, which may store information and data (e.g., static and dynamic data) used for operation of system 200 and the ego vehicle using system 200. V2V communications module 226 is used for communication with other vehicles. The V2V communications may also include information from other vehicles that is invisible to the user, driver, or rider of the vehicle, and may help vehicles coordinate to avoid an accident. Mapping unit 228 may provide mapping and location data for the vehicle, which alternatively may be stored in system memory 224. In various examples, the mapping and location data may be used in a selective scanning mode of operation of beam steering radar 202 to focus the beam steering around an angle of interest when the ego vehicle is navigating a curved road. In other examples, the mapping and location data may be used in the selective scanning mode of operation of beam steering radar 202 to focus the beam steering for a reduced range with higher range resolution (albeit with a smaller maximum velocity) in a city street environment or focus the beam steering for an increased range with higher maximum velocity (albeit with a larger range resolution) in a highway environment.
The use of PS circuits 316-318 and 320-324 enables separate control of the phase of each element in the transmit and receive antennas. Unlike early passive architectures, the beam is steerable not only to discrete angles but to any angle (i.e., from 0° to 360°) within the FoV using active beamforming antennas. A multiple element antenna can be used with an analog beamforming architecture where the individual antenna elements may be combined or divided at the port of the single transmit or receive chain without additional hardware components or individual digital processing for each antenna element. Further, the flexibility of multiple element antennas allows narrow beam width for transmit and receive. The antenna beam width decreases with an increase in the number of antenna elements. A narrow beam improves the directivity of the antenna and provides the radar 300 with a significantly longer detection range.
The major challenge with implementing analog beam steering is to design PSs to operate at 77 GHz. PS circuits 316-318 and 320-324 solve this problem with a reflective PS design implemented with a distributed varactor network currently built using Gallium-Arsenide (GaAs) materials. Each PS circuit 316-318 and 320-324 has a series of PSs, with each PS coupled to an antenna element to generate a phase shift value of anywhere from 0° to 360° for signals transmitted or received by the antenna element. The PS design is scalable in future implementations to Silicon-Germanium (SiGe) and complementary metal-oxide semiconductors (CMOS), bringing down the PS cost to meet specific demands of customer applications. Each PS circuit 316-318 and 320-324 is controlled by a Field Programmable Gate Array (“FPGA”) 326, which provides a series of voltages to the PSs in each PS circuit that results in a series of phase shifts.
In various examples, a voltage value is applied to each PS in the PS circuits 316-318 and 320-324 to generate a given phase shift and provide beam steering. The voltages applied to the PSs in PS circuits 316-318 and 320-324 are stored in Look-up Tables (“LUTs”) in the FPGA 306. These LUTs are generated by an antenna calibration process that determines which voltages to apply to each PS to generate a given phase shift under each operating condition. Note that the PSs in PS circuits 316-318 and 320-324 are capable of generating phase shifts at a very high resolution of less than one degree. This enhanced control over the phase allows the transmit and receive antennas in radar module 302 to steer beams with a very small step size, improving the capability of the radar 300 to resolve closely located targets at small angular resolution.
In various examples, the transmit antennas 308 and the receive antennas 310-314 may be a meta-structure antenna, a phase array antenna, or any other antenna capable of radiating RF signals in millimeter wave frequencies. A meta-structure, as generally defined herein, is an engineered structure capable of controlling and manipulating incident radiation at a desired direction based on its geometry. Various configurations, shapes, designs and dimensions of the antennas 308-314 may be used to implement specific designs and meet specific constraints.
The transmit chain in radar 300 starts with the transceiver 306 generating RF signals to prepare for transmission over-the-air by the transmit antennas 308. The RF signals may be, for example, Frequency-Modulated Continuous Wave (“FMCW”) signals. An FMCW signal enables the radar 300 to determine both the range to an object and the object's velocity by measuring the differences in phase or frequency between the transmitted signals and the received/reflected signals or echoes. Within FMCW formats, there are a variety of waveform patterns that may be used, including sinusoidal, triangular, sawtooth, rectangular and so forth, each having advantages and purposes.
Once the FMCW signals are generated by the transceiver 306, they are provided to power amplifiers (“PAs”) 328-332. Signal amplification is needed for the FMCW signals to reach the long ranges desired for object detection, as the signals attenuate as they radiate by the transmit antennas 308. From the PAs 328-332, the signals are divided and distributed through feed networks 334-336, which form a power divider system to divide an input signal into multiple signals, one for each element of the transmit antennas 308. The feed networks 334-336 may divide the signals so power is equally distributed among them, or alternatively, so power is distributed according to another scheme, in which the divided signals do not all receive the same power. Each signal from the feed networks 334-336 is then input into a PS in PS circuits 316-318, where they are phase shifted based on voltages generated by the FPGA 326 under the direction of microcontroller 338 and then transmitted through transmit antennas 308.
Microcontroller 338 determines which phase shifts to apply to the PSs in PS circuits 316-318 according to a desired scanning mode based on road and environmental scenarios. Microcontroller 338 also determines the scan parameters for the transceiver to apply at its next scan. The scan parameters may be determined at the direction of one of the processing engines 350, such as at the direction of perception engine 304. Depending on the objects detected, the perception engine 304 may instruct the microcontroller 338 to adjust the scan parameters at a next scan to focus on a given area of the FoV or to steer the beams to a different direction.
In various examples and as described in more detail below, radar 300 operates in one of various modes, including a full scanning mode and a selective scanning mode, among others. In a full scanning mode, both transmit antennas 308 and receive antennas 310-314 scan a complete FoV with small incremental steps. Even though the FoV may be limited by system parameters due to increased side lobes as a function of the steering angle, radar 300 can detect objects over a significant area for a long-range radar. The range of angles to be scanned on either side of boresight as well as the step size between steering angles/phase shifts can be dynamically varied based on the driving environment. To improve performance of an autonomous vehicle (e.g., an ego vehicle) driving through an urban environment, the scan range can be increased to keep monitoring the intersections and curbs to detect vehicles, pedestrians or bicyclists. This wide scan range may deteriorate the frame rate (revisit rate), but is considered acceptable as the urban environment generally involves low velocity driving scenarios. For a high-speed freeway scenario, where the frame rate is critical, a higher frame rate can be maintained by reducing the scan range. In this case, a few degrees of beam scanning on either side of the boresight would suffice for long-range target detection and tracking.
In a selective scanning mode, the radar 300 scans around an area of interest by steering to a desired angle and then scanning around that angle. This ensures the radar 300 is to detect objects in the area of interest without wasting any processing or scanning cycles illuminating areas with no valid objects. One of the scenarios in which such scanning is useful is in the case of a curved freeway or road as illustrated in
This selective scanning mode is more efficient, as it allows the radar 300 to align its beams towards the area of interest rather than waste any scanning on areas without objects or useful information to the vehicle. In various examples, the selective scanning mode is implemented by changing the chirp slope of the FMCW signals generated by the transceiver 306 and by shifting the phase of the transmitted signals to the steering angles needed to cover the curvature of the road 400.
Returning to
The receive chain then combines the signals received at receive antennas 312 at combination network 344, from which the combined signals propagate to the transceiver 306. Note that as illustrated, combination network 344 generates two combined signals 346-348, with each signal combining signals from a number of elements in the receive antennas 312. In one example, receive antennas 312 include 48 radiating elements and each combined signal 346-348 combines signals received by 24 of the 48 elements. Other examples may include 8, 16, 24, 32, and so on, depending on the desired configuration. The higher the number of antenna elements, the narrower the beam width.
Note also that the signals received at receive antennas 310 and 314 go directly from PS circuits 320 and 324 to the transceiver 306. Receive antennas 310 and 314 are guard antennas that generate a radiation pattern separate from the main beams received by the 48-element receive antenna 312. Guard antennas 310 and 314 are implemented to effectively eliminate side-lobe returns from objects. The goal is for the guard antennas 310 and 314 to provide a gain that is higher than the side lobes and therefore enable their elimination or reduce their presence significantly. Guard antennas 310 and 314 effectively act as a side lobe filter.
Once the received signals are received by transceiver 306, they are processed by processing engines 350. Processing engines 350 include perception engine 304 which detects and identifies objects in the received signal with neural network and artificial intelligence techniques, database 352 to store historical and other information for radar 300, and a Digital Signal Processing (“DSP”) engine 354 with an Analog-to-Digital Converter (“ADC”) module to convert the analog signals from transceiver 306 into digital signals that can be processed to determine angles of arrival and other valuable information for the detection and identification of objects by perception engine 304. In one or more implementations, DSP engine 354 may be integrated with the microcontroller 338 or the transceiver 306.
Radar 300 also includes a Graphical User Interface (“GUI”) 358 to enable configuration of scan parameters such as the total angle of the scanned area defining the FoV, the beam width or the scan angle of each incremental transmission beam, the number of chirps in the radar signal, the chirp time, the chirp slope, the chirp segment time, and so on as desired. In addition, radar 300 has a temperature sensor 360 for sensing the temperature around the vehicle so that the proper voltages from FPGA 326 may be used to generate the desired phase shifts. The voltages stored in FPGA 326 are determined during calibration of the antennas under different operating conditions, including temperature conditions. A database 362 may also be used in radar 300 to store radar and other useful data.
Attention is now directed to
Radar angular resolution is the minimum distance between two equally large targets at the same range which the radar can distinguish and separate. The angular resolution is a function of the antenna's half-power beam width, referred to as the 3 dB beam width and serves as limiting factor to object differentiation. Distinguishing objects is based on accurately identifying the angle of arrival of reflections from the objects. Smaller beam width angles result in high directivity and more refined angular resolution but requires faster scanning to achieve the smaller step sizes. For example, in autonomous vehicle applications, the radar is tasked with scanning an environment of the vehicle within a sufficient time period for the vehicle to take corrective action when needed. This limits the capability of a system to specific steps. This means that any object having a distance therebetween less than the 3 dB angle beam width cannot be distinguished without additional processing. Put another way, two identical targets at the same distance are resolved in angle if they are separated by more than the antenna 3 dB beam width. The present examples use the multiple guard band antennas to distinguish between the objects.
The distance and distance resolution of an object are fully determined by the chirp parameters Nr and Beff. In some aspects, the range resolution can be expressed as follows:
In some aspects, the maximum distance (or range) can be expressed as follows:
The velocity and velocity resolution of an object are fully determined by chirp sequence parameters (Ne, Tchirp) and frequency (fmin). The minimum velocity (or velocity resolution) achieved is determined as follows (with c denoting the speed of light):
Note that higher radar frequencies result in a better velocity resolution for the same sequence parameters. The maximum velocity is given by:
Additional relationships between the scan parameters are given by the following equations, with Eq. 5 denoting the chirp slope κchirp, and Eq. 6 denoting the sample frequency:
In various aspects, the sample frequency is a fixed. Also, the sample rate fsample in Eq. 6 determines how fine a range resolution can be achieved for a selected maximum velocity and selected maximum range. In some aspects, the maximum range Rmax may be defined by a user configuration depending on the type of environment (or type of path) detected. Note that once the maximum range Rmax is fixed, vmax and ΔR are no longer independent. One chirp sequence or segment has multiple chirps. Each chirp is sampled multiple times to give multiple range measurements and measure doppler velocity accurately. Each chirp may be defined by its slope, κchirp. The maximum range requirement may be inversely proportional to effective bandwidth of the chirp Beff as indicated in Eq. 1, where an increase in the Beff parameter can achieve an improved range resolution (or decreased range resolution value). The decreased range resolution value may be useful for object classification in a city street environment, where objects are moving at a significantly lower velocity compared to the highway environment so an improvement in the range resolution parameter value is more desirable than observing a degradation in the maximum velocity parameter. Similarly, the maximum velocity capability of a radar may be inversely proportional to the chirp time Tchirp as indicated in Eq. 4, where a decrease in the Tchirp parameter can achieve an improved maximum velocity (or increased maximum velocity value). The increased maximum velocity may be useful for object detection in a highway environment, where objects are moving at a significantly higher velocity compared to the city street environment so an improvement in the maximum velocity parameter is more desirable than observing a degradation in the range resolution parameter.
Note also that Eqs. 1-6 above can be used to establish scan parameters for given design goals. For example, to detect objects at high resolution at long ranges, the radar system 300 needs to take a large number of measurements per chirp. If the goal is to detect objects at high speed at a long range, the chirp time has to be low, limiting the chirp time. In the first case, high resolution detection at long range is limited by the bandwidth of the signal processing unit in the radar system. And in the second case, high maximum velocity at long range is limited by the data acquisition speed of the radar chipset (which also limits resolution).
In a selective scanning mode, the radar 300 adjusts its chirp slope to scan around an angle of interest rather than performing a full scan. This situation is encountered, for example, when the vehicle is faced with a curved road or highway as illustrated in
The indication may be at the direction of perception engine 304 or from a mapping unit or other such engine (not shown) in the vehicle that detects a curved road. The indication from the microcontroller instructs the radar to adjust its chirp slope so that it scans an FoV area around an angle of interest, e.g., around the angle of the curved road (710). The chirp slope may be increased to focus on shorter ranges around the curve and achieve better resolution. Objects in the area of interest are then detected and their information is extracted (712) so that they can be classified (714) by the perception engine 304 into vehicles, cyclists, pedestrians, infrastructure objects, animals, and so forth. The object classification is sent to a sensor fusion module, where it is analyzed together with object detection information from other sensors such as lidar and camera sensors. The radar 300 continues its scanning process under the direction of the microcontroller 338, which instructs the radar on when to leave the selective scanning mode and return to the full scanning mode and on which scan parameters to use during scanning (e.g., chirp slope, beam width, etc.).
These various examples support autonomous driving with improved sensor performance, all-weather/all-condition detection, advanced decision-making algorithms and interaction with other sensors through sensor fusion. These configurations optimize the use of radar sensors, as radar is not inhibited by weather conditions in many applications, such as for self-driving cars. The radar described here is effectively a “digital eye,” having true 3D vision and capable of human-like interpretation of the world.
It is appreciated that the previous description of the disclosed examples is provided to enable any person skilled in the art to make or use the present disclosure. Various modifications to these examples will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other examples without departing from the spirit or scope of the disclosure. Thus, the present disclosure is not intended to be limited to the examples shown herein but is to be accorded the widest scope consistent with the principles and novel features disclosed herein.
As used herein, the phrase “at least one of” preceding a series of items, with the terms “and” or “or” to separate any of the items, modifies the list as a whole, rather than each member of the list (i.e., each item). The phrase “at least one of” does not require selection of at least one item; rather, the phrase allows a meaning that includes at least one of any one of the items, and/or at least one of any combination of the items, and/or at least one of each of the items. By way of example, the phrases “at least one of A, B, and C” or “at least one of A, B, or C” each refer to only A, only B, or only C; any combination of A, B, and C; and/or at least one of each of A, B, and C.
Furthermore, to the extent that the term “include,” “have,” or the like is used in the description or the claims, such term is intended to be inclusive in a manner similar to the term “comprise” as “comprise” is interpreted when employed as a transitional word in a claim.
A reference to an element in the singular is not intended to mean “one and only one” unless specifically stated, but rather “one or more.” The term “some” refers to one or more. Underlined and/or italicized headings and subheadings are used for convenience only, do not limit the subject technology, and are not referred to in connection with the interpretation of the description of the subject technology. All structural and functional equivalents to the elements of the various configurations described throughout this disclosure that are known or later come to be known to those of ordinary skill in the art are expressly incorporated herein by reference and intended to be encompassed by the subject technology. Moreover, nothing disclosed herein is intended to be dedicated to the public regardless of whether such disclosure is explicitly recited in the above description.
While this specification contains many specifics, these should not be construed as limitations on the scope of what may be claimed, but rather as descriptions of particular implementations of the subject matter. Certain features that are described in this specification in the context of separate embodiments can also be implemented in combination in a single embodiment. Conversely, various features that are described in the context of a single embodiment can also be implemented in multiple embodiments separately or in any suitable sub combination. Moreover, although features may be described above as acting in certain combinations and even initially claimed as such, one or more features from a claimed combination can in some cases be excised from the combination, and the claimed combination may be directed to a sub combination or variation of a sub combination.
The subject matter of this specification has been described in terms of particular aspects, but other aspects can be implemented and are within the scope of the following claims. For example, while operations are depicted in the drawings in a particular order, this should not be understood as requiring that such operations be performed in the particular order shown or in sequential order, or that all illustrated operations be performed, to achieve desirable results. The actions recited in the claims can be performed in a different order and still achieve desirable results. As one example, the processes depicted in the accompanying figures do not necessarily require the particular order shown, or sequential order, to achieve desirable results. Moreover, the separation of various system components in the aspects described above should not be understood as requiring such separation in all aspects, and it should be understood that the described program components and systems can generally be integrated together in a single hardware product or packaged into multiple hardware products. Other variations are within the scope of the following claim.
This application claims priority to U.S. Prov. Appl. No. 62/869,913, titled “BEAM STEERING RADAR WITH A SELECTIVE SCANNING MODE FOR USE IN AUTONOMOUS VEHICLES,” filed on Jul. 2, 2019, which is incorporated by reference herein in its entirety.
Filing Document | Filing Date | Country | Kind |
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PCT/US2020/040768 | 7/2/2020 | WO |
Number | Date | Country | |
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62869913 | Jul 2019 | US |