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arxiv: 2506.18256 · v1 · pith:B5YIJ3SMnew · submitted 2025-06-23 · 💻 cs.RO

Robot Tactile Gesture Recognition Based on Full-body Modular E-skin

classification 💻 cs.RO
keywords robottactilegesturesskine-skinelectronicmodularrobots
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With the development of robot electronic skin technology, various tactile sensors, enhanced by AI, are unlocking a new dimension of perception for robots. In this work, we explore how robots equipped with electronic skin can recognize tactile gestures and interpret them as human commands. We developed a modular robot E-skin, composed of multiple irregularly shaped skin patches, which can be assembled to cover the robot's body while capturing real-time pressure and pose data from thousands of sensing points. To process this information, we propose an equivariant graph neural network-based recognizer that efficiently and accurately classifies diverse tactile gestures, including poke, grab, stroke, and double-pat. By mapping the recognized gestures to predefined robot actions, we enable intuitive human-robot interaction purely through tactile input.

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