Patents by Inventor Jiangtao Hu

Jiangtao Hu has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20230208618
    Abstract: This application provides an image model file transmission method and computing device. The method includes: receiving an image model file of a first online streamer that is sent by a first client; obtaining a target key, and encrypting the image model file based on the target key to obtain an encrypted image model file; in response to determining that an interaction request for the first online streamer and a second online streamer is received, sending the encrypted image model file to a second client based on an online streamer identifier of the second online streamer that is carried in the interaction request; and in response to determining that a decryption request sent by the second client is received, sending the target key to the second client, where the target key is used by the second client to decrypt the encrypted image model file to obtain the image model file.
    Type: Application
    Filed: November 28, 2022
    Publication date: June 29, 2023
    Inventors: Wei ZHANG, Jiangtao HU, Junhao HU
  • Publication number: 20230202517
    Abstract: According to some embodiments, described herein is a method and a system for guaranteeing safety at a control level of an ADV when at least a portion of a planned path generated by a planning module of the ADV is uncertain due to traffics and/or road condition changes. The planning module, when generating a path, also generate a confidence level of each segment of the path based on one or more of perception data, map information, or traffic rules. The confidence levels are decreasing further away from the ADV. When the control module of the ADV obtains the path and the associated confidence levels, the control module issue control commands to track only one or two segments whose confidence levels exceeds a threshold hold, and issue default control commands for the rest of the path.
    Type: Application
    Filed: December 23, 2021
    Publication date: June 29, 2023
    Inventors: Shu JIANG, Weiman LIN, Yu CAO, Jiangtao HU, Jinghao MIAO
  • Publication number: 20230202469
    Abstract: An obstacle is detected based on sensor data obtained from a plurality of sensors of the ADV. Multiple trajectories of the obstacle are predicted with corresponding probabilities including a first predicted trajectory of the obstacle with a highest probability and a second predicted trajectory of the obstacle with a second highest probability. A cautionary trajectory of the ADV is planned based on at least one of a difference between the highest probability and the second highest probability or a consequence of the second trajectory. The ADV is to drive with a speed lower than a speed limit and prepare to stop in the cautionary trajectory. The ADV is controlled to drive according to the cautionary trajectory.
    Type: Application
    Filed: December 23, 2021
    Publication date: June 29, 2023
    Inventors: Shu Jiang, Yu Cao, Weiman Lin, Jiangtao Hu, Jinghao Miao
  • Patent number: 11673576
    Abstract: In one embodiment, an ADV is routed by executing a first driving scenario that is active. The first driving scenario is one of a plurality of driving scenario types, each driving scenario type being associated with one or more stages to be executed while a corresponding driving scenario type is active. Based on an environmental condition around the ADV, a second driving scenario is set as active. The ADV is routed by executing the second driving scenario. When the second driving scenario exits, execution of the first driving scenario resumes at the one or more stages of the first driving scenario that remains to be executed.
    Type: Grant
    Filed: March 23, 2020
    Date of Patent: June 13, 2023
    Assignee: BAIDU USA LLC
    Inventors: Jiaming Tao, Qi Luo, Jinyun Zhou, Kecheng Xu, Yu Wang, Shu Jiang, Jiangtao Hu, Jinghao Miao
  • Patent number: 11673584
    Abstract: In one embodiment, a computer-implemented method for optimizing a controller of an autonomous driving vehicle (ADV) includes obtaining several samples, each sample having a set of parameters, iteratively performing, until a predetermined condition is satisfied: determining, for each sample, a score according to a configuration of the controller based on the set of parameters of the sample, applying a machine learning model to the samples and corresponding scores to determine a mean function and a variance function, producing a new sample as a minimum of a function of the mean function and the variance function with respect to an input space of the set of parameters, adding the new sample to the several samples, and outputting the new sample as an optimal sample, where parameters of the optimal sample are utilized to configure the controller to autonomously drive the ADV.
    Type: Grant
    Filed: April 15, 2020
    Date of Patent: June 13, 2023
    Assignee: BAIDU USA LLC
    Inventors: Yu Wang, Qi Luo, Jiaxuan Xu, Jinyun Zhou, Shu Jiang, Jiaming Tao, Yu Cao, Wei-Man Lin, Kecheng Xu, Jinghao Miao, Jiangtao Hu
  • Patent number: 11662730
    Abstract: According to one embodiment, during a first planning cycle, a first lane boundary of a driving environment perceived by an ADV is determined using a first lane boundary determination scheme (e.g., current lane boundary), which has been designated as a current lane boundary determination scheme. A first trajectory is planned based on the first lane boundary to drive the ADV to navigate through the driving environment. The first trajectory is evaluated against a predetermined set of safety rules (e.g., whether it will collide or get too close to an object) to avoid a collision with an object detected in the driving environment. In response to determining that the first trajectory fails to satisfy the safety rules, a second lane determination boundary of the driving environment is determined using a second lane boundary determination scheme and a second trajectory is planned based on the second lane boundary to drive the ADV.
    Type: Grant
    Filed: July 1, 2019
    Date of Patent: May 30, 2023
    Assignee: BAIDU USA LLC
    Inventors: Jiacheng Pan, Yifei Jiang, Yajia Zhang, Jiaming Tao, Jiangtao Hu
  • Publication number: 20230159047
    Abstract: Described herein are a method of training a learning-based critic for tuning a rule-based motion planner of an autonomous driving vehicle, a method of tuning a motion planner using an automatic tuning framework that with the learning-based critic. The method includes receiving training data that incudes human driving trajectories and random trajectories derived from the human driving trajectories; training a learning-based critic using the training data; identifying a set of discrepant trajectories by comparing a first set of trajectories, and a second set of trajectories; and refining, at the neural network training platform, the learning-based critic based on the set of discrepant trajectories. The automatic tuning framework can remove human efforts in tedious parameter tuning, reduce tuning time, while retaining the physical and safety constraints of the ruled-based motion planner.
    Type: Application
    Filed: November 24, 2021
    Publication date: May 25, 2023
    Inventors: Shu JIANG, Zikang XIONG, Weiman LIN, Yu CAO, Qi LUO, Jiangtao HU, Jinghao MIAO
  • Patent number: 11656627
    Abstract: In one embodiment, a method determines a route from a first location of an autonomous driving vehicle (ADV) to a second location within an open space, the first location being a current location of the ADV. The method determines an objective function based on the route, the objective function having a set of costs for maneuvering the ADV from the first location to the second location. The method determines environmental conditions of the open space and uses the environmental conditions to determine a set of weights, each weight to be applied to a corresponding cost of the objective function. The method optimizes the objective function in view of one or more constraints, such that an output of the objective function reaches minimum while the one or more constraints are satisfied and generates a path trajectory with the optimized objective function to control the ADV autonomously according to the path trajectory.
    Type: Grant
    Filed: March 23, 2020
    Date of Patent: May 23, 2023
    Assignee: BAIDU USA LLC
    Inventors: Jinyun Zhou, Qi Luo, Shu Jiang, Jiaming Tao, Yu Wang, Jiaxuan Xu, Kecheng Xu, Jinghao Miao, Jiangtao Hu
  • Patent number: 11628858
    Abstract: In one embodiment, a system/method generates a driving trajectory for an autonomous driving vehicle (ADV). The system perceives an environment of an autonomous driving vehicle (ADV). The system determines one or more bounding conditions based on the perceived environment. The system generates a first trajectory using a neural network model, wherein the neural network model is trained to generate a driving trajectory. The system evaluates/determines if the first trajectory satisfies the one or more bounding conditions. If the first trajectory satisfies the one or more bounding conditions, the system controls the ADV autonomously according to the first trajectory. Otherwise, the system controls the ADV autonomously according to a second trajectory, where the second trajectory is generated based on an objective function, where the objective function is determined based on at least the one or more bounding conditions.
    Type: Grant
    Filed: September 15, 2020
    Date of Patent: April 18, 2023
    Assignee: BAIDU USA LLC
    Inventors: Yifei Jiang, Jinyun Zhou, Jiaming Tao, Shu Jiang, Jiangtao Hu, Jinghao Miao, Shiyu Song
  • Patent number: 11620903
    Abstract: According to various embodiments, systems, methods, and mediums for operating an autonomous driving vehicles (ADV) are described. The embodiments use a number of machine learning models to extract features individually from audio data and visual data captured by sensors mounted on the ADV, and then to fuse these extracted features to create a concatenated feature vectors. The concatenated feature vector is provided to a multiplayer perceptron (MLP) as input to generate a detection result related to the presence of an emergency vehicle in the surrounding environment. The detection result can be used by the ADV to take appropriate actions to comply with the local traffic rules.
    Type: Grant
    Filed: January 14, 2021
    Date of Patent: April 4, 2023
    Assignee: BAIDU USA LLC
    Inventors: Kecheng Xu, Hongyi Sun, Qi Luo, Wei Wang, Zejun Lin, Wesley Reynolds, Feng Liu, Jiangtao Hu, Jinghao Miao
  • Patent number: 11609576
    Abstract: In one embodiment, a process is performed during controlling Autonomous Driving Vehicle (ADV). Microphone signals sense sounds in an environment of the ADV. The microphone signals are combined and filtered to form an audio signal having the sounds sensed in the environment of the ADV. A neural network is applied to the audio signal to detect a presence of an audio signature of an emergency vehicle siren. If the siren is detected, a change in the audio signature to make a determination as to whether the emergency vehicle siren is a) moving towards the ADV, or b) not moving towards the ADV. The ADV can make a driving decision, such as slowing down, stopping, and/or steering to a side, based on if the emergency vehicle siren is moving towards the ADV.
    Type: Grant
    Filed: December 5, 2019
    Date of Patent: March 21, 2023
    Assignee: BAIDU USA LLC
    Inventors: Qi Luo, Kecheng Xu, Jinyun Zhou, Xiangquan Xiao, Shuo Huang, Jiangtao Hu, Jinghao Miao
  • Publication number: 20230065284
    Abstract: Systems, methods, and media for factoring localization uncertainty of an ADV into its planning and control process to increase the safety of the ADV. The uncertainty of the localization can be caused by sensor inaccuracy, map matching algorithm inaccuracy, and/or speed uncertainty. The localization uncertainty can have negative impact on trajectory planning and vehicle control. Embodiments described herein are intended to increase the safety of the ADV by considering localization uncertainty in trajectory planning and vehicle control. An exemplary method includes determining a confidence region for an ADV that is automatically driving on a road segment based on localization uncertainty and speed uncertainty; determining that an object is within the confidence region, and a probability of collision with the ADV based on a distance of the object to the ADV; and planning a trajectory based on the probability of collision, and controlling the ADV based on the probability of collision.
    Type: Application
    Filed: September 1, 2021
    Publication date: March 2, 2023
    Inventors: Shu JIANG, Weiman LIN, Yu CAO, Yu WANG, Qi LUO, Jiangtao HU, Jinghao MIAO
  • Publication number: 20230060776
    Abstract: Embodiments of the invention are intended to evaluate the performance of a planning module of the ADV in terms of decision consistency in addition to other metrics, such as comfort, latency, controllability, and safety. In one embodiment, an exemplary method includes receiving, at an autonomous driving simulation platform, a record file recorded by the ADV that was automatically driving on a road segment; simulating operations of a dynamic model of the ADV in the autonomous driving simulation platform during one or more driving scenarios on the road segment based on the record file. The method further includes performing a comparison between each planned trajectory generated by a planning module of the dynamic model after an initial period of time with each trajectory stored in a buffer; and modifying a performance score generated by a planning performance profiler in the autonomous driving simulation platform based on a result of the comparison.
    Type: Application
    Filed: September 1, 2021
    Publication date: March 2, 2023
    Inventors: Shu JIANG, Weiman LIN, Yu CAO, Yu WANG, Qi LUO, Jiangtao HU, Jinghao MIAO
  • Publication number: 20230067822
    Abstract: In one embodiment, an exemplary method includes receiving, at a simulation platform, a record file recorded by a manually-driving ADV on a road segment, the simulation platform including a first encoder, a second encoder, and a performance evaluator; simulating automatic driving operations of a dynamic model of the ADV on the road segment based on the record file, the dynamic model including an autonomous driving module to be evaluated. The method further includes: for each trajectory generated by the autonomous driving module during the simulation: extracting a corresponding trajectory associated with the manually-driving ADV from the record file, encoding the trajectory into a first semantic map and the corresponding trajectory into a second semantic map, and generating a similarity score based on the first semantic map and the second semantic map. The method also includes generating an overall performance score based on each similarity score.
    Type: Application
    Filed: September 1, 2021
    Publication date: March 2, 2023
    Inventors: Shu JIANG, Weiman LIN, Yu CAO, Yu WANG, Kecheng XU, Hongyi SUN, Jiaming TAO, Qi LUO, Jiangtao HU, Jinghao MIAO
  • Patent number: 11586209
    Abstract: In one embodiment, method performed by an autonomous driving vehicle (ADV) that determines, within a driving space, a plurality of routes from a current location of the ADV to a desired location. The method determines, for each route of the plurality of routes, an objective function to control the ADV autonomously along the route and, for each of the objective functions, performs Differential Dynamic Programming (DDP) optimization in view of a set of constraints to produce a path trajectory. The method determines whether at least one of the path trajectories satisfies each constraint and, in response to a path trajectory satisfying each of the constraints, selects the path trajectory for navigating the ADV from the current location to the desired location.
    Type: Grant
    Filed: April 8, 2020
    Date of Patent: February 21, 2023
    Assignee: BAIDU USA LLC
    Inventors: Qi Luo, Jinyun Zhou, Shu Jiang, Jiaming Tao, Yu Wang, Jiaxuan Xu, Kecheng Xu, Jinghao Miao, Jiangtao Hu
  • Patent number: 11577758
    Abstract: In one embodiment, when an autonomous driving vehicle (ADV) is parked, the ADV can determine, based on criteria, whether to operate in an open-space mode or an on-lane mode. The criteria can include whether the ADV is within a threshold distance and threshold heading relative to a vehicle lane. If the criteria are not satisfied, then the ADV can enter the open-space mode. While in the open-space mode, the ADV can maneuver it is within the threshold distance and the threshold heading relative to the vehicle lane. In response to the criteria being satisfied, the ADV can enter and operate in the on-lane mode for the ADV to resume along the vehicle lane.
    Type: Grant
    Filed: January 3, 2020
    Date of Patent: February 14, 2023
    Assignee: BAIDU USA LLC
    Inventors: Shu Jiang, Jiaming Tao, Jinyun Zhou, Qi Luo, Jinghao Miao, Jiangtao Hu, Jiaxuan Xu, Yu Wang
  • Patent number: 11560159
    Abstract: In one embodiment, a plurality of obstacles is sensed in an environment of an automated driving vehicle (ADV). One or more representations are formed to represent corresponding groupings of the plurality of obstacles. A vehicle route is determined in view of the one or more representations, rather than each and every one of the obstacles individually.
    Type: Grant
    Filed: March 25, 2020
    Date of Patent: January 24, 2023
    Assignee: BAIDU USA LLC
    Inventors: Jiaming Tao, Qi Luo, Jinyun Zhou, Kecheng Xu, Yu Wang, Shu Jiang, Jiangtao Hu, Jinghao Miao
  • Publication number: 20220411948
    Abstract: A method that includes contacting a Li-containing aqueous liquid with a Li ion-selective membrane while simultaneously applying an electric field thereby extracting Li ions from the Li-containing aqueous liquid; and intercalating the extracted Li ions into a cathode material.
    Type: Application
    Filed: June 17, 2022
    Publication date: December 29, 2022
    Applicant: Battelle Memorial Institute
    Inventors: Dongping Lu, Robert M. Asmussen, Li-Jung Kuo, Jiangtao Hu
  • Patent number: 11520347
    Abstract: According to various embodiments, systems and methods described in the disclosure combine mapped features with point cloud features to improve object detection precision of an autonomous driving vehicle (ADV). The map features and the point cloud features can be extracted from a perception area of the ADV within a particular angle view at each driving cycle based on a position of the ADV. The map features and the point cloud features can be concatenated and provided to a neutral network for object detections.
    Type: Grant
    Filed: January 23, 2019
    Date of Patent: December 6, 2022
    Assignee: BAIDU USA LLC
    Inventors: Liangliang Zhang, Hongyi Sun, Li Zhuang, Jiangtao Hu, Dong Li, Jiaming Tao
  • Patent number: 11518404
    Abstract: In one embodiment, static-state curvature error compensation control logic for autonomous driving vehicles (ADV) receives planning and control data associated with the ADV, including a planned steering angle and a planned speed. A steering command is generated based on a current steering angle and the planned steering angle of the ADV. A throttle command is generated based on the planned speed in view of a current speed of the ADV. A curvature error is calculated based on a difference between the current steering angle and the planned steering angle. The steering command is issued to the ADV while withholding the throttle command, in response to determining that the curvature error is greater than a predetermined curvature threshold, such that the steering angle of the ADV is adjusted in view of the planned steering angle without acceleration.
    Type: Grant
    Filed: March 23, 2020
    Date of Patent: December 6, 2022
    Assignee: BAIDU USA LLC
    Inventors: Yu Wang, Qi Luo, Jinyun Zhou, Shu Jiang, Jiaxuan Xu, Jinghao Miao, Jiangtao Hu