Non-Parametric Self-Identification and Model Predictive Control of Dexterous In-Hand Manipulation

Building hand-object models for dexterous in-hand manipulation remains a crucial and open problem. Major challenges include the difficulty of obtaining the geometric and dynamical models of the hand, object, and time-varying contacts, as well as the inevitable physical and perception uncertainties. Instead of building accurate models to map between the actuation inputs and the object motions, this work proposes to enable the hand-object systems to continuously approximate their local models via a self-identification process where an underlying manipulation model is estimated through a small number of exploratory actions and non-parametric learning. With a very small number of data points, as opposed to most data-driven methods, our system self-identifies the underlying manipulation models online through exploratory actions and non-parametric learning. By integrating the self-identified hand-object model into a model predictive control framework, the proposed system closes the control loop to provide high accuracy in-hand manipulation. Furthermore, the proposed self-identification is able to adaptively trigger online updates through additional exploratory actions, as soon as the self-identified local models render large discrepancies against the observed manipulation outcomes. We implemented the proposed approach on a sensorless underactuated Yale Model O hand with a single external camera to observe the object's motion. With extensive experiments, we show that the proposed self-identification approach can enable accurate and robust dexterous manipulation without requiring an accurate system model nor a large amount of data for offline training.

READ FULL TEXT

page 1

page 4

page 6

page 7

research
07/19/2021

Ab Initio Particle-based Object Manipulation

This paper presents Particle-based Object Manipulation (Prompt), a new a...
research
06/12/2022

Reinforcement Learning for Vision-based Object Manipulation with Non-parametric Policy and Action Primitives

The object manipulation is a crucial ability for a service robot, but it...
research
03/23/2020

Linear Time-Varying MPC for Nonprehensile Object Manipulation with a Nonholonomic Mobile Robot

This paper proposes a technique to manipulate an object with a nonholono...
research
02/08/2023

Kinodynamic Rapidly-exploring Random Forest for Rearrangement-Based Nonprehensile Manipulation

Rearrangement-based nonprehensile manipulation still remains as a challe...
research
06/26/2021

Vision-driven Compliant Manipulation for Reliable, High-Precision Assembly Tasks

Highly constrained manipulation tasks continue to be challenging for aut...
research
03/26/2020

Functionally Divided Manipulation Synergy for Controlling Multi-fingered Hands

Synergy supplies a practical approach for expressing various postures of...
research
06/04/2019

Active Object Manipulation Facilitates Visual Object Learning: An Egocentric Vision Study

Inspired by the remarkable ability of the infant visual learning system,...

Please sign up or login with your details

Forgot password? Click here to reset