Invariant neuromorphic representations of tactile stimuli improve robustness of a real-time texture classification system
Mark M. Iskarous, Zan Chaudhry, Fangjie Li, Samuel Bello, Sriramana, Sankar, Ariel Slepyan, Natasha Chugh, Christopher L. Hunt, Rebecca J. Greene,, Nitish V. Thakor

TL;DR
This paper presents neuromorphic algorithms that create invariant tactile representations, enhancing real-time texture classification robustness for robotic and prosthetic systems by mimicking human skin mechanoreceptor activity.
Contribution
The work introduces novel speed and force invariant neuromorphic encoding algorithms for tactile sensing, improving accuracy and efficiency in texture classification under varied conditions.
Findings
Invariant representations improve classification accuracy.
Enhanced robustness in novel speed-force conditions.
Real-time system implementation demonstrates practical benefits.
Abstract
Humans have an exquisite sense of touch which robotic and prosthetic systems aim to recreate. We developed algorithms to create neuron-like (neuromorphic) spiking representations of texture that are invariant to the scanning speed and contact force applied in the sensing process. The spiking representations are based on mimicking activity from mechanoreceptors in human skin and further processing up to the brain. The neuromorphic encoding process transforms analog sensor readings into speed and force invariant spiking representations in three sequential stages: the force invariance module (in the analog domain), the spiking activity encoding module (transforms from analog to spiking domain), and the speed invariance module (in the spiking domain). The algorithms were tested on a tactile texture dataset collected in 15 speed-force conditions. An offline texture classification system…
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Taxonomy
TopicsNeural Networks and Applications · EEG and Brain-Computer Interfaces · Advanced Memory and Neural Computing
