Dexterous Manipulation from Images: Autonomous Real-World RL via Substep Guidance
Kelvin Xu, Zheyuan Hu, Ria Doshi, Aaron Rovinsky, Vikash Kumar,, Abhishek Gupta, Sergey Levine

TL;DR
This paper presents a vision-based reinforcement learning system enabling real-world dexterous manipulation by robots with minimal manual engineering, using high-level image-based supervision for autonomous task learning.
Contribution
It introduces a
Findings
Robots learned multi-stage manipulation tasks directly in the real world.
The system reduces manual engineering by using high-level image supervision.
Robots autonomously practiced and improved task performance without interventions.
Abstract
Complex and contact-rich robotic manipulation tasks, particularly those that involve multi-fingered hands and underactuated object manipulation, present a significant challenge to any control method. Methods based on reinforcement learning offer an appealing choice for such settings, as they can enable robots to learn to delicately balance contact forces and dexterously reposition objects without strong modeling assumptions. However, running reinforcement learning on real-world dexterous manipulation systems often requires significant manual engineering. This negates the benefits of autonomous data collection and ease of use that reinforcement learning should in principle provide. In this paper, we describe a system for vision-based dexterous manipulation that provides a "programming-free" approach for users to define new tasks and enable robots with complex multi-fingered hands to…
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Taxonomy
TopicsRobot Manipulation and Learning · Teleoperation and Haptic Systems · Tactile and Sensory Interactions
