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A Neuromorphic Incipient Slip Detection System using Papillae Morphology

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arxiv 2509.09546 v1 pith:TBPXLVOE submitted 2025-09-11 cs.RO

A Neuromorphic Incipient Slip Detection System using Papillae Morphology

classification cs.RO
keywords slipincipientsystemgrossneuromorphicscnnacrossclassification
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Detecting incipient slip enables early intervention to prevent object slippage and enhance robotic manipulation safety. However, deploying such systems on edge platforms remains challenging, particularly due to energy constraints. This work presents a neuromorphic tactile sensing system based on the NeuroTac sensor with an extruding papillae-based skin and a spiking convolutional neural network (SCNN) for slip-state classification. The SCNN model achieves 94.33% classification accuracy across three classes (no slip, incipient slip, and gross slip) in slip conditions induced by sensor motion. Under the dynamic gravity-induced slip validation conditions, after temporal smoothing of the SCNN's final-layer spike counts, the system detects incipient slip at least 360 ms prior to gross slip across all trials, consistently identifying incipient slip before gross slip occurs. These results demonstrate that this neuromorphic system has stable and responsive incipient slip detection capability.

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