Patents by Inventor Jasmine Hsu

Jasmine Hsu 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: 12112494
    Abstract: Implementations relate to training a point cloud prediction model that can be utilized to process a single-view two-and-a-half-dimensional (2.5D) observation of an object, to generate a domain-invariant three-dimensional (3D) representation of the object. Implementations additionally or alternatively relate to utilizing the domain-invariant 3D representation to train a robotic manipulation policy model using, as at least part of the input to the robotic manipulation policy model during training, the domain-invariant 3D representations of simulated objects to be manipulated. Implementations additionally or alternatively relate to utilizing the trained robotic manipulation policy model in control of a robot based on output generated by processing generated domain-invariant 3D representations utilizing the robotic manipulation policy model.
    Type: Grant
    Filed: February 28, 2020
    Date of Patent: October 8, 2024
    Assignee: GOOGLE LLC
    Inventors: Honglak Lee, Xinchen Yan, Soeren Pirk, Yunfei Bai, Seyed Mohammad Khansari Zadeh, Yuanzheng Gong, Jasmine Hsu
  • Patent number: 11554483
    Abstract: Deep machine learning methods and apparatus, some of which are related to determining a grasp outcome prediction for a candidate grasp pose of an end effector of a robot. Some implementations are directed to training and utilization of both a geometry network and a grasp outcome prediction network. The trained geometry network can be utilized to generate, based on two-dimensional or two-and-a-half-dimensional image(s), geometry output(s) that are: geometry-aware, and that represent (e.g., high-dimensionally) three-dimensional features captured by the image(s). In some implementations, the geometry output(s) include at least an encoding that is generated based on a trained encoding neural network trained to generate encodings that represent three-dimensional features (e.g., shape). The trained grasp outcome prediction network can be utilized to generate, based on applying the geometry output(s) and additional data as input(s) to the network, a grasp outcome prediction for a candidate grasp pose.
    Type: Grant
    Filed: November 10, 2020
    Date of Patent: January 17, 2023
    Assignee: GOOGLE LLC
    Inventors: James Davidson, Xinchen Yan, Yunfei Bai, Honglak Lee, Abhinav Gupta, Seyed Mohammad Khansari Zadeh, Arkanath Pathak, Jasmine Hsu
  • Publication number: 20210101286
    Abstract: Implementations relate to training a point cloud prediction model that can be utilized to process a single-view two-and-a-half-dimensional (2.5D) observation of an object, to generate a domain-invariant three-dimensional (3D) representation of the object. Implementations additionally or alternatively relate to utilizing the domain-invariant 3D representation to train a robotic manipulation policy model using, as at least part of the input to the robotic manipulation policy model during training, the domain-invariant 3D representations of simulated objects to be manipulated. Implementations additionally or alternatively relate to utilizing the trained robotic manipulation policy model in control of a robot based on output generated by processing generated domain-invariant 3D representations utilizing the robotic manipulation policy model.
    Type: Application
    Filed: February 28, 2020
    Publication date: April 8, 2021
    Inventors: Honglak Lee, Xinchen Yan, Soeren Pirk, Yunfei Bai, Seyed Mohammad Khansari Zadeh, Yuanzheng Gong, Jasmine Hsu
  • Publication number: 20210053217
    Abstract: Deep machine learning methods and apparatus, some of which are related to determining a grasp outcome prediction for a candidate grasp pose of an end effector of a robot. Some implementations are directed to training and utilization of both a geometry network and a grasp outcome prediction network. The trained geometry network can be utilized to generate, based on two-dimensional or two-and-a-half-dimensional image(s), geometry output(s) that are: geometry-aware, and that represent (e.g., high-dimensionally) three-dimensional features captured by the image(s). In some implementations, the geometry output(s) include at least an encoding that is generated based on a trained encoding neural network trained to generate encodings that represent three-dimensional features (e.g., shape). The trained grasp outcome prediction network can be utilized to generate, based on applying the geometry output(s) and additional data as input(s) to the network, a grasp outcome prediction for a candidate grasp pose.
    Type: Application
    Filed: November 10, 2020
    Publication date: February 25, 2021
    Inventors: James Davidson, Xinchen Yan, Yunfei Bai, Honglak Lee, Abhinav Gupta, Seyed Mohammad Khansari Zadeh, Arkanath Pathak, Jasmine Hsu
  • Patent number: 10864631
    Abstract: Deep machine learning methods and apparatus, some of which are related to determining a grasp outcome prediction for a candidate grasp pose of an end effector of a robot. Some implementations are directed to training and utilization of both a geometry network and a grasp outcome prediction network. The trained geometry network can be utilized to generate, based on two-dimensional or two-and-a-half-dimensional image(s), geometry output(s) that are: geometry-aware, and that represent (e.g., high-dimensionally) three-dimensional features captured by the image(s). In some implementations, the geometry output(s) include at least an encoding that is generated based on a trained encoding neural network trained to generate encodings that represent three-dimensional features (e.g., shape). The trained grasp outcome prediction network can be utilized to generate, based on applying the geometry output(s) and additional data as input(s) to the network, a grasp outcome prediction for a candidate grasp pose.
    Type: Grant
    Filed: June 18, 2018
    Date of Patent: December 15, 2020
    Assignee: GOOGLE LLC
    Inventors: James Davidson, Xinchen Yan, Yunfei Bai, Honglak Lee, Abhinav Gupta, Seyed Mohammad Khansari Zadeh, Arkanath Pathak, Jasmine Hsu
  • Publication number: 20200094405
    Abstract: Deep machine learning methods and apparatus, some of which are related to determining a grasp outcome prediction for a candidate grasp pose of an end effector of a robot. Some implementations are directed to training and utilization of both a geometry network and a grasp outcome prediction network. The trained geometry network can be utilized to generate, based on two-dimensional or two-and-a-half-dimensional image(s), geometry output(s) that are: geometry-aware, and that represent (e.g., high-dimensionally) three-dimensional features captured by the image(s). In some implementations, the geometry output(s) include at least an encoding that is generated based on a trained encoding neural network trained to generate encodings that represent three-dimensional features (e.g., shape). The trained grasp outcome prediction network can be utilized to generate, based on applying the geometry output(s) and additional data as input(s) to the network, a grasp outcome prediction for a candidate grasp pose.
    Type: Application
    Filed: June 18, 2018
    Publication date: March 26, 2020
    Inventors: James Davidson, Xinchen Yan, Yunfei Bai, Honglak Lee, Abhinav Gupta, Seyed Mohammad Khansari Zadeh, Arkanath Pathak, Jasmine Hsu