Patents by Inventor Xiangquan XIAO

Xiangquan XIAO 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).

  • Patent number: 11860634
    Abstract: An obstacle state evolution of a spatial position of a moving obstacle over a period of time is determined. A lane-obstacle relation evolution of the moving obstacle with each of one or more lanes near the moving obstacle over the period of time is further determined. An intended movement of the moving obstacle is predicted based on the obstacle state evolution and the lane-obstacle evolution. Thereafter, a trajectory of the ADV is planned to control the ADV to avoid a collision with the moving obstacle based on the predicted intended movement of the moving obstacle. The above process is iteratively performed for each of the moving obstacles detected within a predetermined proximity of the ADV.
    Type: Grant
    Filed: December 12, 2019
    Date of Patent: January 2, 2024
    Assignee: BAIDU USA LLC
    Inventors: Jiacheng Pan, Hongyi Sun, Kecheng Xu, Yifei Jiang, Xiangquan Xiao, Jiangtao Hu, Jinghao Miao
  • Patent number: 11740628
    Abstract: In one embodiment, control of an autonomous driving vehicle (ADV) includes determining a current scenario of the ADV. Based on the scenario, a control algorithm is selected among a plurality of distinct control algorithms as the active control algorithm. One or more control commands are generated using the active control algorithm, based one or more target inputs. The control commands are applied to effect movement of the ADV.
    Type: Grant
    Filed: March 18, 2020
    Date of Patent: August 29, 2023
    Assignee: BAIDU USA LLC
    Inventors: Shu Jiang, Qi Luo, Jinghao Miao, Jiangtao Hu, Yu Wang, Jinyun Zhou, Jiaming Tao, Xiangquan Xiao
  • Patent number: 11731651
    Abstract: Systems and methods are disclosed for optimizing values of a set of tunable parameters of an autonomous driving vehicle (ADV). The controllers can be a linear quadratic regular, a “bicycle model,” a model-reference adaptive controller (MRAC) that reduces actuation latency in control subsystems such as steering, braking, and throttle, or other controller (“controllers”). An optimizer selects a set tunable parameters for the controllers. A task distribution system pairs each set of parameters with each of a plurality of simulated driving scenarios, and dispatches a task to the simulator to perform the simulation with the set of parameters. Each simulation is scored. A weighted score is generated from the simulation. The optimizer uses the weighted score as a target objective for a next iteration of the optimizer, for a fixed number of iterations. A physical real-world ADV is navigated using the optimized set of parameters for the controllers in the ADV.
    Type: Grant
    Filed: September 30, 2020
    Date of Patent: August 22, 2023
    Assignee: BAIDU USA LLC
    Inventors: Weiman Lin, Yu Cao, Yu Wang, Qi Luo, Shu Jiang, Xiangquan Xiao, Longtao Lin, Jinghao Miao, Jiangtao Hu
  • 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
  • Patent number: 11511760
    Abstract: Systems and methods are disclosed for collecting driving data from simulated autonomous driving vehicle (ADV) driving sessions and real-world ADV driving sessions. The driving data is processed to exclude manual (human) driving data and to exclude data corresponding to the ADV being stationary (not driving). Data can further be filtered based on driving direction: forward or reverse driving. Driving data records are time stamped. The driving data can be aligned according to the timestamp, then a standardized set of metrics is generated from the collected, filtered, and time-aligned data. The standardized set of metrics are used to grade the performance the control system of the ADV, and to generate an updated ADV controller, based on the standardized set of metrics.
    Type: Grant
    Filed: January 23, 2020
    Date of Patent: November 29, 2022
    Assignees: BAIDU USA LLC, BAIDU.COM TIMES TECHNOLOGY (BEIJING) CO., LTD.
    Inventors: Yu Wang, Qi Luo, Yu Cao, Zongbao Feng, Longtao Lin, Xiangquan Xiao, Jinghao Miao, Jiangtao Hu, Jingao Wang, Shu Jiang, Jinyun Zhou, Jiaxuan Xu
  • Patent number: 11427211
    Abstract: According to some embodiments, described herein is a system and method for handling sensor failures in autonomous driving vehicles (ADV) that is navigating in a world coordination as an absolute coordination system. When the ADV encounters a sensor failure, but still has at least one camera working properly, the sensor failure handling system can switch the ADV from navigating in the world coordination to a local coordination, in which the ADV relies camera-based obstacle detection and lane mark detection to drive safely until human dis-engagement or until the ADV is parked along a road side.
    Type: Grant
    Filed: June 18, 2018
    Date of Patent: August 30, 2022
    Assignee: BAIDU USA LLC
    Inventors: Jiangtao Hu, Yifei Jiang, Dong Li, Liangliang Zhang, Jiaming Tao, Qi Luo, Xiangquan Xiao
  • Patent number: 11338819
    Abstract: In one embodiment, a computer-implemented method for calibrating autonomous driving vehicles at a cloud-based server includes receiving, at the cloud-based server, one or more vehicle calibration requests from at least one user, each vehicle calibration request including calibration data for one or more vehicles and processing in parallel, by the cloud-based server, the one or more vehicle calibration requests for the at least one user to generate a calibration result for each vehicle. The method further includes sending, by the cloud-based server, the calibration result for each vehicle to the at least one user.
    Type: Grant
    Filed: September 30, 2019
    Date of Patent: May 24, 2022
    Assignee: BAIDU USA LLC
    Inventors: Shu Jiang, Qi Luo, Jinghao Miao, Jiangtao Hu, Xiangquan Xiao, Jiaxuan Xu, Yu Wang, Jinyun Zhou, Runxin He
  • Publication number: 20220097728
    Abstract: Systems and methods are disclosed for optimizing values of a set of tunable parameters of an autonomous driving vehicle (ADV). The controllers can be a linear quadratic regular, a “bicycle model,” a model-reference adaptive controller (MRAC) that reduces actuation latency in control subsystems such as steering, braking, and throttle, or other controller (“controllers”). An optimizer selects a set tunable parameters for the controllers. A task distribution system pairs each set of parameters with each of a plurality of simulated driving scenarios, and dispatches a task to the simulator to perform the simulation with the set of parameters. Each simulation is scored. A weighted score is generated from the simulation. The optimizer uses the weighted score as a target objective for a next iteration of the optimizer, for a fixed number of iterations. A physical real-world ADV is navigated using the optimized set of parameters for the controllers in the ADV.
    Type: Application
    Filed: September 30, 2020
    Publication date: March 31, 2022
    Inventors: Weiman LIN, Yu CAO, Yu WANG, Qi LUO, Shu JIANG, Xiangquan XIAO, Longtao LIN, Jinghao MIAO, Jiangtao HU
  • Patent number: 11199846
    Abstract: In an embodiment, a learning-based dynamic modeling method is provided for use with an autonomous driving vehicle. A control module in the ADV can generate current states of the ADV and control commands for a first driving cycle, and send the current states and control commands to a dynamic model implemented using a trained neural network model. Based on the current states and the control commands, the dynamic model generates expected future states for a second driving cycle, during which the control module generates actual future states. The ADV compares the expected future states and the actual future states to generate a comparison result, for use in evaluating one or more of a decision module, a planning module and a control module in the ADV.
    Type: Grant
    Filed: November 29, 2018
    Date of Patent: December 14, 2021
    Assignee: BAIDU USA LLC
    Inventors: Qi Luo, Jiaxuan Xu, Kecheng Xu, Xiangquan Xiao, Siyang Yu, Jinghao Miao, Jiangtao Hu
  • Publication number: 20210294324
    Abstract: In one embodiment, control of an autonomous driving vehicle (ADV) includes determining a current scenario of the ADV. Based on the scenario, a control algorithm is selected among a plurality of distinct control algorithms as the active control algorithm. One or more control commands are generated using the active control algorithm, based one or more target inputs. The control commands are applied to effect movement of the ADV.
    Type: Application
    Filed: March 18, 2020
    Publication date: September 23, 2021
    Inventors: Shu JIANG, Qi LUO, Jinghao MIAO, Jiangtao HU, Yu WANG, Jinyun ZHOU, Jiaming TAO, Xiangquan XIAO
  • Patent number: 11127142
    Abstract: A system and method for predicting the near-term trajectory of a moving obstacle sensed by an autonomous driving vehicle (ADV) is disclosed. The method applies neural networks such as a LSTM model to learn dynamic features of the moving obstacle's motion based on its past trajectory up to its current position and a CNN model to learn the semantic map features of the driving environment in a portion of an image map. From the learned dynamic features of the moving obstacle and the learned semantic map features of the environment, the method applies a neural network to iteratively predict the moving obstacle's positions for successive time points of a prediction interval. To predict the moving obstacle's position at the next time point from the currently predicted position, the methods may update the learned dynamic features of the moving obstacle based on its past trajectory up to the currently predicted position.
    Type: Grant
    Filed: December 31, 2019
    Date of Patent: September 21, 2021
    Assignee: BAIDU USA LLC
    Inventors: Kecheng Xu, Hongyi Sun, Jiacheng Pan, Xiangquan Xiao, Jiangtao Hu, Jinghao Miao
  • Publication number: 20210201504
    Abstract: A system and method for predicting the near-term trajectory of a moving obstacle sensed by an autonomous driving vehicle (ADV) is disclosed. The method applies neural networks such as a LSTM model to learn dynamic features of the moving obstacle's motion based on its past trajectory up to its current position and a CNN model to learn the semantic map features of the driving environment in a portion of an image map. From the learned dynamic features of the moving obstacle and the learned semantic map features of the environment, the method applies a neural network to iteratively predict the moving obstacle's positions for successive time points of a prediction interval. To predict the moving obstacle's position at the next time point from the currently predicted position, the methods may update the learned dynamic features of the moving obstacle based on its past trajectory up to the currently predicted position.
    Type: Application
    Filed: December 31, 2019
    Publication date: July 1, 2021
    Inventors: KECHENG XU, HONGYI SUN, JIACHENG PAN, XIANGQUAN XIAO, JIANGTAO HU, JINGHAO MIAO
  • Publication number: 20210179097
    Abstract: An obstacle state evolution of a spatial position of a moving obstacle over a period of time is determined. A lane-obstacle relation evolution of the moving obstacle with each of one or more lanes near the moving obstacle over the period of time is further determined. An intended movement of the moving obstacle is predicted based on the obstacle state evolution and the lane-obstacle evolution. Thereafter, a trajectory of the ADV is planned to control the ADV to avoid a collision with the moving obstacle based on the predicted intended movement of the moving obstacle. The above process is iteratively performed for each of the moving obstacles detected within a predetermined proximity of the ADV.
    Type: Application
    Filed: December 12, 2019
    Publication date: June 17, 2021
    Inventors: JIACHENG PAN, HONGYI SUN, KECHENG XU, YIFEI JIANG, XIANGQUAN XIAO, JIANGTAO HU, JINGHAO MIAO
  • Publication number: 20210173408
    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: Application
    Filed: December 5, 2019
    Publication date: June 10, 2021
    Inventors: QI LUO, KECHENG XU, JINYUN ZHOU, XIANGQUAN XIAO, SHUO HUANG, JIANGTAO HU, JINGHAO MIAO
  • Publication number: 20210094561
    Abstract: In one embodiment, a computer-implemented method for calibrating autonomous driving vehicles at a cloud-based server includes receiving, at the cloud-based server, one or more vehicle calibration requests from at least one user, each vehicle calibration request including calibration data for one or more vehicles and processing in parallel, by the cloud-based server, the one or more vehicle calibration requests for the at least one user to generate a calibration result for each vehicle. The method further includes sending, by the cloud-based server, the calibration result for each vehicle to the at least one user.
    Type: Application
    Filed: September 30, 2019
    Publication date: April 1, 2021
    Inventors: SHU JIANG, QI LUO, JINGHAO MIAO, JIANGTAO HU, XIANGQUAN XIAO, JIAXUAN XU, YU WANG, JINYUN ZHOU, RUNXIN HE
  • Publication number: 20200174486
    Abstract: In an embodiment, a learning-based dynamic modeling method is provided for use with an autonomous driving vehicle. A control module in the ADV can generate current states of the ADV and control commands for a first driving cycle, and send the current states and control commands to a dynamic model implemented using a trained neural network model. Based on the current states and the control commands, the dynamic model generates expected future states for a second driving cycle, during which the control module generates actual future states. The ADV compares the expected future states and the actual future states to generate a comparison result, for use in evaluating one or more of a decision module, a planning module and a control module in the ADV.
    Type: Application
    Filed: November 29, 2018
    Publication date: June 4, 2020
    Inventors: QI LUO, JIAXUAN XU, KECHENG XU, XIANGQUAN XIAO, SIYANG YU, JINGHAO MIAO, JIANGTAO HU
  • Publication number: 20190382031
    Abstract: According to some embodiments, described herein is a system and method for handling sensor failures in autonomous driving vehicles (ADV) that is navigating in a world coordination as an absolute coordination system. When the ADV encounters a sensor failure, but still has at least one camera working properly, the sensor failure handling system can switch the ADV from navigating in the world coordination to a local coordination, in which the ADV relies camera-based obstacle detection and lane mark detection to drive safely until human dis-engagement or until the ADV is parked along a road side.
    Type: Application
    Filed: June 18, 2018
    Publication date: December 19, 2019
    Inventors: Jiangtao HU, Yifei JIANG, Dong LI, Liangliang ZHANG, Jiaming TAO, Qi LUO, Xiangquan Xiao
  • Patent number: 10452065
    Abstract: An autonomous driving vehicle (ADV) is operated using a human-machine interface (HMI). The web server provides the HMI to a computing device in response to an input received from the computing device. An ADV command is entered into the HMI and passed to an interface of the web server. In response to receiving the ADV command, the web server calls a remote procedure call to a proxy server in a backend server for processing by a perception and control module of the ADV. Results of the ADV command are received by the web server interface and stored in results memory with a unique identifier. The web server interface opens a socket that accesses the results memory. In response to a change in the results memory, the socket reads the results memory and provides the ADV command results to the HMI. Multiple HMIs can simultaneously communicate with the web server interface and socket.
    Type: Grant
    Filed: July 3, 2017
    Date of Patent: October 22, 2019
    Assignee: BAIDU USA LLC
    Inventors: Xiangquan Xiao, Lei Wang, Jiangtao Hu, Li Gao
  • Publication number: 20190004510
    Abstract: An autonomous driving vehicle (ADV) is operated using a human-machine interface (HMI). The web server provides the HMI to a computing device in response to an input received from the computing device. An ADV command is entered into the HMI and passed to an interface of the web server. In response to receiving the ADV command, the web server calls a remote procedure call to a proxy server in a backend server for processing by a perception and control module of the ADV. Results of the ADV command are received by the web server interface and stored in results memory with a unique identifier. The web server interface opens a socket that accesses the results memory. If the results memory changes, the socket reads the results memory and provides the ADV command results to the HMI. Multiple HMIs can simultaneously communicate with the web server interface and socket.
    Type: Application
    Filed: July 3, 2017
    Publication date: January 3, 2019
    Inventors: Xiangquan XIAO, Lei WANG, Jiangtao HU, Li GAO