TAMEn: Tactile-Aware Manipulation Engine for Closed-Loop Data Collection in Contact-Rich Tasks
Longyan Wu, Jieji Ren, Chenghang Jiang, Junxi Zhou, Shijia Peng, Ran Huang, Guoying Gu, Li Chen, Hongyang Li

TL;DR
TAMEn introduces a tactile-aware manipulation system with dual-modal data collection for improved contact-rich task performance and policy refinement in robotics.
Contribution
The paper presents a novel hardware and data pipeline enabling adaptive, tactile-aware, closed-loop data collection for contact-rich manipulation tasks.
Findings
Replayability of demonstrations significantly improved.
Task success rates increased from 34% to 75%.
Open-sourced hardware and dataset support reproducibility.
Abstract
Handheld paradigms offer an efficient and intuitive way for collecting large-scale demonstration of robot manipulation. However, achieving contact-rich bimanual manipulation through these methods remains a pivotal challenge, which is substantially hindered by hardware adaptability and data efficacy. Prior hardware designs remain gripper-specific and often face a trade-off between tracking precision and portability. Furthermore, the lack of online feasibility checking during demonstration leads to poor replayability. More importantly, existing handheld setups struggle to collect interactive recovery data during robot execution, lacking the authentic tactile information necessary for robust policy refinement. To bridge these gaps, we present TAMEn, a tactile-aware manipulation engine for closed-loop data collection in contact-rich tasks. Our system features a cross-morphology wearable…
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