Learning Multi-Arm Manipulation Through Collaborative Teleoperation
Albert Tung, Josiah Wong, Ajay Mandlekar, Roberto Mart\'in-Mart\'in,, Yuke Zhu, Li Fei-Fei, Silvio Savarese

TL;DR
This paper introduces a multi-user teleoperation platform for collecting multi-arm manipulation demonstrations, analyzes coordination challenges, and proposes a hybrid policy architecture that improves multi-arm task learning.
Contribution
We developed MART, a platform for multi-user multi-arm data collection, and proposed a base-residual policy framework that enhances multi-arm manipulation learning.
Findings
Centralized policies struggle with mixed coordination tasks.
Residual models improve adaptation to coordination variability.
Our hybrid approach outperforms other models on benchmark tasks.
Abstract
Imitation Learning (IL) is a powerful paradigm to teach robots to perform manipulation tasks by allowing them to learn from human demonstrations collected via teleoperation, but has mostly been limited to single-arm manipulation. However, many real-world tasks require multiple arms, such as lifting a heavy object or assembling a desk. Unfortunately, applying IL to multi-arm manipulation tasks has been challenging -- asking a human to control more than one robotic arm can impose significant cognitive burden and is often only possible for a maximum of two robot arms. To address these challenges, we present Multi-Arm RoboTurk (MART), a multi-user data collection platform that allows multiple remote users to simultaneously teleoperate a set of robotic arms and collect demonstrations for multi-arm tasks. Using MART, we collected demonstrations for five novel two and three-arm tasks from…
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