ROBOT NAVIGATION IN DEPENDENCE ON GESTURE(S) OF HUMAN(S) IN ENVIRONMENT WITH ROBOT

    公开(公告)号:US20240094736A1

    公开(公告)日:2024-03-21

    申请号:US18240124

    申请日:2023-08-30

    Applicant: GOOGLE LLC

    Abstract: Training and/or utilizing a high-level neural network (NN) model, such as a sequential NN model. The high-level NN model, when trained, can be used to process a sequence of consecutive state data instances (e.g., N most recent, including a current state date instance) to generate a sequence of outputs that indicate a sequence of position deltas. The sequence of position deltas can be used to generate an intermediate target position for navigation and, optionally, an intermediate target orientation that corresponds to the intermediate target position. The intermediate target position and, optionally, the intermediate target orientation, can be provided to a low-level navigation policy, such as an MPC policy, and used by the low-level navigation policy as its goal position (and optionally goal orientation) for a plurality of iterations (e.g., until a new intermediate target position (and optionally new target orientation) is generated using the high-level NN model.

    UPDATE OF LOCAL FEATURES MODEL BASED ON CORRECTION TO ROBOT ACTION

    公开(公告)号:US20250061302A1

    公开(公告)日:2025-02-20

    申请号:US18939168

    申请日:2024-11-06

    Applicant: GOOGLE LLC

    Abstract: Methods, apparatus, and computer-readable media for determining and utilizing corrections to robot actions. Some implementations are directed to updating a local features model of a robot in response to determining a human correction of an action performed by the robot. The local features model is used to determine, based on an embedding generated over a corresponding neural network model, one or more features that are most similar to the generated embedding. Updating the local features model in response to a human correction can include updating a feature embedding, of the local features model, that corresponds to the human correction. Adjustment(s) to the features model can immediately improve robot performance without necessitating retraining of the corresponding neural network model.

    Update of local features model based on correction to robot action

    公开(公告)号:US12159210B2

    公开(公告)日:2024-12-03

    申请号:US18140366

    申请日:2023-04-27

    Applicant: GOOGLE LLC

    Abstract: Methods, apparatus, and computer-readable media for determining and utilizing corrections to robot actions. Some implementations are directed to updating a local features model of a robot in response to determining a human correction of an action performed by the robot. The local features model is used to determine, based on an embedding generated over a corresponding neural network model, one or more features that are most similar to the generated embedding. Updating the local features model in response to a human correction can include updating a feature embedding, of the local features model, that corresponds to the human correction. Adjustment(s) to the features model can immediately improve robot performance without necessitating retraining of the corresponding neural network model.

    ROBOT NAVIGATION USING A HIGH-LEVEL POLICY MODEL AND A TRAINED LOW-LEVEL POLICY MODEL

    公开(公告)号:US20210397195A1

    公开(公告)日:2021-12-23

    申请号:US17291540

    申请日:2019-11-27

    Applicant: GOOGLE LLC

    Abstract: Training and/or using both a high-level policy model and a low-level policy model for mobile robot navigation. High-level output generated using the high-level policy model at each iteration indicates a corresponding high-level action for robot movement in navigating to the navigation target. The low-level output generated at each iteration is based on the determined corresponding high-level action for that iteration, and is based on observation(s) for that iteration. The low-level policy model is trained to generate low-level output that defines low-level action(s) that define robot movement more granularly than the high-level action—and to generate low-level action(s) that avoid obstacles and/or that are efficient (e.g., distance and/or time efficiency).

    Robot navigation using a high-level policy model and a trained low-level policy model

    公开(公告)号:US12061481B2

    公开(公告)日:2024-08-13

    申请号:US17291540

    申请日:2019-11-27

    Applicant: GOOGLE LLC

    CPC classification number: G05D1/0221

    Abstract: Training and/or using both a high-level policy model and a low-level policy model for mobile robot navigation. High-level output generated using the high-level policy model at each iteration indicates a corresponding high-level action for robot movement in navigating to the navigation target. The low-level output generated at each iteration is based on the determined corresponding high-level action for that iteration, and is based on observation(s) for that iteration. The low-level policy model is trained to generate low-level output that defines low-level action(s) that define robot movement more granularly than the high-level action—and to generate low-level action(s) that avoid obstacles and/or that are efficient (e.g., distance and/or time efficiency).

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