Baek Suwhan, Lee Jaewon
AI R &D Laboratory, Posco-Holdings, Cheongam-ro, Pohang-si, Gyeongsangbuk-do 37673 Korea.
Department of Computer Science, Kwangwoon University, Gwangun-ro, Nowon-gu, Seoul, 01899 Republic of Korea.
Biomed Eng Lett. 2024 Jul 11;14(5):981-991. doi: 10.1007/s13534-024-00406-y. eCollection 2024 Sep.
The rapid advancement of AI and machine learning has significantly enhanced sound and acoustic recognition technologies, moving beyond traditional models to more sophisticated neural network-based methods. Among these, Spiking Neural Networks (SNNs) are particularly noteworthy. SNNs mimic biological neurons and operate on principles similar to the human brain, using analog computing mechanisms. This capability allows for efficient sound processing with low power consumption and minimal latency, ideal for real-time applications in embedded systems. This paper reviews recent developments in SNNs for sound recognition, underscoring their potential to overcome the limitations of digital computing and suggesting directions for future research. The unique attributes of SNNs could lead to breakthroughs in mimicking human auditory processing more closely.
人工智能和机器学习的迅速发展显著提升了声音和声学识别技术,从传统模型发展到了更为复杂的基于神经网络的方法。其中,脉冲神经网络(SNN)尤为值得关注。SNN模仿生物神经元,基于与人类大脑相似的原理运行,采用模拟计算机制。这种能力使得在低功耗和最小延迟的情况下进行高效的声音处理成为可能,这对于嵌入式系统中的实时应用来说非常理想。本文综述了用于声音识别的SNN的最新进展,强调了它们克服数字计算局限性的潜力,并为未来研究指明了方向。SNN的独特属性可能会在更紧密地模仿人类听觉处理方面带来突破。