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A neuromorphic physiological signal processing system based on VO memristor for next-generation human-machine interface. | LitMetric

A neuromorphic physiological signal processing system based on VO memristor for next-generation human-machine interface.

Nat Commun

Beijing Advanced Innovation Center for Integrated Circuits, School of Integrated Circuits, Peking University, Beijing, 100871, China.

Published: June 2023

Physiological signal processing plays a key role in next-generation human-machine interfaces as physiological signals provide rich cognition- and health-related information. However, the explosion of physiological signal data presents challenges for traditional systems. Here, we propose a highly efficient neuromorphic physiological signal processing system based on VO memristors. The volatile and positive/negative symmetric threshold switching characteristics of VO memristors are leveraged to construct a sparse-spiking yet high-fidelity asynchronous spike encoder for physiological signals. Besides, the dynamical behavior of VO memristors is utilized in compact Leaky Integrate and Fire (LIF) and Adaptive-LIF (ALIF) neurons, which are incorporated into a decision-making Long short-term memory Spiking Neural Network. The system demonstrates superior computing capabilities, needing only small-sized LSNNs to attain high accuracies of 95.83% and 99.79% in arrhythmia classification and epileptic seizure detection, respectively. This work highlights the potential of memristors in constructing efficient neuromorphic physiological signal processing systems and promoting next-generation human-machine interfaces.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10284901PMC
http://dx.doi.org/10.1038/s41467-023-39430-4DOI Listing

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