Generalize by Touching: Tactile Ensemble Skill Transfer for Robotic Furniture Assembly
Haohong Lin, Radu Corcodel, Ding Zhao

TL;DR
This paper introduces TEST, an offline reinforcement learning framework that uses tactile feedback to improve robotic furniture assembly, enabling better generalization, robustness, and efficiency in long-horizon manipulation tasks.
Contribution
The paper presents a novel offline RL approach incorporating tactile feedback for skill transfer in robotic furniture assembly, addressing generalization and robustness challenges.
Findings
Achieves 90% success rate in furniture assembly tasks.
Over 4 times more efficient than heuristic policies.
Demonstrates robustness to visual disturbances.
Abstract
Furniture assembly remains an unsolved problem in robotic manipulation due to its long task horizon and nongeneralizable operations plan. This paper presents the Tactile Ensemble Skill Transfer (TEST) framework, a pioneering offline reinforcement learning (RL) approach that incorporates tactile feedback in the control loop. TEST's core design is to learn a skill transition model for high-level planning, along with a set of adaptive intra-skill goal-reaching policies. Such design aims to solve the robotic furniture assembly problem in a more generalizable way, facilitating seamless chaining of skills for this long-horizon task. We first sample demonstration from a set of heuristic policies and trajectories consisting of a set of randomized sub-skill segments, enabling the acquisition of rich robot trajectories that capture skill stages, robot states, visual indicators, and crucially,…
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Taxonomy
TopicsTactile and Sensory Interactions · Teleoperation and Haptic Systems · Advanced Manufacturing and Logistics Optimization
MethodsSparse Evolutionary Training
