TaSA: Two-Phased Deep Predictive Learning of Tactile Sensory Attenuation for Improving In-Grasp Manipulation
Pranav Ponnivalavan, Satoshi Funabashi, Alexander Schmitz, Tetsuya Ogata, Shigeki Sugano

TL;DR
TaSA introduces a two-phased deep learning framework that enables robots to differentiate between self-generated and external tactile signals, significantly enhancing dexterous in-hand manipulation capabilities.
Contribution
This work presents the first deep predictive learning model incorporating sensory attenuation for tactile perception in robotic manipulation, inspired by human self-touch mechanisms.
Findings
Policies with TaSA outperform baselines in success rates.
Structured tactile perception improves manipulation accuracy.
Self-touch modeling enhances generalization to complex tasks.
Abstract
Humans can achieve diverse in-hand manipulations, such as object pinching and tool use, which often involve simultaneous contact between the object and multiple fingers. This is still an open issue for robotic hands because such dexterous manipulation requires distinguishing between tactile sensations generated by their self-contact and those arising from external contact. Otherwise, object/robot breakage happens due to contacts/collisions. Indeed, most approaches ignore self-contact altogether, by constraining motion to avoid/ignore self-tactile information during contact. While this reduces complexity, it also limits generalization to real-world scenarios where self-contact is inevitable. Humans overcome this challenge through self-touch perception, using predictive mechanisms that anticipate the tactile consequences of their own motion, through a principle called sensory attenuation,…
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Taxonomy
TopicsRobot Manipulation and Learning · Tactile and Sensory Interactions · Advanced Sensor and Energy Harvesting Materials
