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用于生理和语音信号的脉冲神经网络综述

Spiking neural networks for physiological and speech signals: a review.

作者信息

Park Sung Soo, Choi Young-Seok

机构信息

Department of Electroincs and Communications Engineering, Kwangwoon University, Seoul, 01897 Republic of Korea.

出版信息

Biomed Eng Lett. 2024 Jun 25;14(5):943-954. doi: 10.1007/s13534-024-00404-0. eCollection 2024 Sep.

Abstract

The integration of Spiking Neural Networks (SNNs) into the analysis and interpretation of physiological and speech signals has emerged as a groundbreaking approach, offering enhanced performance and deeper insights into the underlying biological processes. This review aims to summarize key advances, methodologies, and applications of SNNs within these domains, highlighting their unique ability to mimic the temporal dynamics and efficiency of the human brain. We dive into the core principles of SNNs, their neurobiological underpinnings, and the computational advantages they bring to signal processing, particularly in handling the temporal and spatial complexities inherent in physiological and speech data. Comparative analyses with conventional neural network models are presented to underscore the superior efficiency, lower power consumption, and higher temporal resolution of SNNs. The review further explores challenges and future prospects, highlighting the potential of SNNs to revolutionize wearable healthcare monitoring systems, neuroprosthetic devices, and natural language processing technologies. By providing a comprehensive overview of current strategies, this review aims to inspire innovative approaches in the field, fostering advances in real-time and energy-efficient processing of complex biological signals.

摘要

将脉冲神经网络(SNN)集成到生理信号和语音信号的分析与解释中,已成为一种开创性的方法,它能提供更高的性能,并对潜在的生物过程有更深入的见解。本综述旨在总结SNN在这些领域的关键进展、方法和应用,突出其模仿人类大脑时间动态和效率的独特能力。我们深入探讨SNN的核心原理、其神经生物学基础以及它们给信号处理带来的计算优势,特别是在处理生理和语音数据中固有的时间和空间复杂性方面。文中还对传统神经网络模型进行了比较分析,以强调SNN的更高效率、更低功耗和更高时间分辨率。本综述进一步探讨了挑战和未来前景,突出了SNN在革新可穿戴医疗监测系统、神经假体设备和自然语言处理技术方面的潜力。通过全面概述当前策略,本综述旨在激发该领域的创新方法,推动复杂生物信号实时和节能处理方面的进展。

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Spiking neural networks for physiological and speech signals: a review.用于生理和语音信号的脉冲神经网络综述
Biomed Eng Lett. 2024 Jun 25;14(5):943-954. doi: 10.1007/s13534-024-00404-0. eCollection 2024 Sep.

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