Learning a Meta-Controller for Dynamic Grasping

02/16/2023
by   Yinsen Jia, et al.
0

Grasping moving objects is a challenging task that combines multiple submodules such as object pose predictor, arm motion planner, etc. Each submodule operates under its own set of meta-parameters. For example, how far the pose predictor should look into the future (i.e., look-ahead time) and the maximum amount of time the motion planner can spend planning a motion (i.e., time budget). Many previous works assign fixed values to these parameters either heuristically or through grid search; however, at different moments within a single episode of dynamic grasping, the optimal values should vary depending on the current scene. In this work, we learn a meta-controller through reinforcement learning to control the look-ahead time and time budget dynamically. Our extensive experiments show that the meta-controller improves the grasping success rate (up to 12 reduces grasping time, compared to the strongest baseline. Our meta-controller learns to reason about the reachable workspace and maintain the predicted pose within the reachable region. In addition, it assigns a small but sufficient time budget for the motion planner. Our method can handle different target objects, trajectories, and obstacles. Despite being trained only with 3-6 randomly generated cuboidal obstacles, our meta-controller generalizes well to 7-9 obstacles and more realistic out-of-domain household setups with unseen obstacle shapes. Video is available at https://youtu.be/CwHq77wFQqI.

READ FULL TEXT

page 1

page 3

page 5

page 7

page 8

research
03/04/2022

GraspARL: Dynamic Grasping via Adversarial Reinforcement Learning

Grasping moving objects, such as goods on a belt or living animals, is a...
research
05/14/2022

F1 Hand: A Versatile Fixed-Finger Gripper for Delicate Teleoperation and Autonomous Grasping

Teleoperation is often limited by the ability of an operator to react an...
research
09/23/2022

Towards Robust Autonomous Grasping with Reflexes Using High-Bandwidth Sensing and Actuation

Modern robotic manipulation systems fall short of human manipulation ski...
research
06/14/2017

Learning a visuomotor controller for real world robotic grasping using simulated depth images

We want to build robots that are useful in unstructured real world appli...
research
06/07/2020

Multi-Task Reinforcement Learning based Mobile Manipulation Control for Dynamic Object Tracking and Grasping

Agile control of mobile manipulator is challenging because of the high c...
research
05/28/2022

Learning to Use Chopsticks in Diverse Gripping Styles

Learning dexterous manipulation skills is a long-standing challenge in c...
research
05/18/2023

Efficient Prompting via Dynamic In-Context Learning

The primary way of building AI applications is shifting from training sp...

Please sign up or login with your details

Forgot password? Click here to reset