Event-Driven Implementation of a Physical Reservoir Computing Framework for superficial EMG-based Gesture Recognition
Journal:
arXiv
Published Date:
Mar 10, 2025
Abstract
Wearable health devices have a strong demand in real-time biomedical signal
processing. However traditional methods often require data transmission to
centralized processing unit with substantial computational resources after
collecting it from edge devices. Neuromorphic computing is an emerging field
that seeks to design specialized hardware for computing systems inspired by the
structure, function, and dynamics of the human brain, offering significant
advantages in latency and power consumption. This paper explores a novel
neuromorphic implementation approach for gesture recognition by extracting
spatiotemporal spiking information from surface electromyography (sEMG) data in
an event-driven manner. At the same time, the network was designed by
implementing a simple-structured and hardware-friendly Physical Reservoir
Computing (PRC) framework called Rotating Neuron Reservoir (RNR) within the
domain of Spiking neural network (SNN). The spiking RNR (sRNR) is promising to
pipeline an innovative solution to compact embedded wearable systems, enabling
low-latency, real-time processing directly at the sensor level. The proposed
system was validated by an open-access large-scale sEMG database and achieved
an average classification accuracy of 74.6\% and 80.3\% using a classical
machine learning classifier and a delta learning rule algorithm respectively.
While the delta learning rule could be fully spiking and implementable on
neuromorphic chips, the proposed gesture recognition system demonstrates the
potential for near-sensor low-latency processing.