用于鼾声和非鼾声事件分类的长短期记忆尖峰神经网络

IF 1.6 4区 计算机科学 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Chinese Journal of Electronics Pub Date : 2024-03-31 DOI:10.23919/cje.2022.00.210
Rulin Zhang;Ruixue Li;Jiakai Liang;Keqiang Yue;Wenjun Li;Yilin Li
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引用次数: 0

摘要

打鼾是影响人类睡眠质量的一种普遍现象。它也是许多睡眠障碍的最早症状之一。准确检测出打鼾,可以更容易地对睡眠问题进行进一步筛查和诊断。打鼾常常被忽视,因为它被低估了,而且检测成本高昂。因此,本研究提供了一种基于长短期记忆尖峰神经网络(LSTM-SNN)的鼾声检测替代方法,该方法适合大规模家庭鼾声检测。我们设计了采集设备来收集 54 名受试者的睡眠录音,并在家庭环境中构建了睡眠声音数据库。然后从这些声音信号中提取梅尔频率共振频率系数(MFCC),并通过阈值编码方法将其编码为尖峰序列。我们的 LSTM-SNN 模型将这些声音自动分类为非打鼾声和打鼾声。我们在 LSTM-SNN 中使用了基于替代梯度的反向传播算法来完成参数更新。与普通 LSTM 模型相比,分类率达到了令人印象深刻的 93.4%,同时还显著降低了 36.9% 的计算机功耗。
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Long Short-Term Memory Spiking Neural Networks for Classification of Snoring and Non-Snoring Sound Events
Snoring is a widespread occurrence that impacts human sleep quality. It is also one of the earliest symptoms of many sleep disorders. Snoring is accurately detected, making further screening and diagnosis of sleep problems easier. Snoring is frequently ignored because of its underrated and costly detection costs. As a result, this research offered an alternative method for snoring detection based on a long short-term memory based spiking neural network (LSTM-SNN) that is appropriate for large-scale home detection for snoring. We designed acquisition equipment to collect the sleep recordings of 54 subjects and constructed the sleep sound database in the home environment. And Mel frequency cepstral coefficients (MFCCs) were extracted from these sound signals and encoded into spike trains by a threshold encoding approach. They were classified automatically as non-snoring or snoring sounds by our LSTM-SNN model. We used the backpropagation algorithm based on an alternative gradient in the LSTM-SNN to complete the parameter update. The categorization percentage reached an impressive 93.4%, accompanied by a remarkable 36.9% reduction in computer power compared to the regular LSTM model.
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来源期刊
Chinese Journal of Electronics
Chinese Journal of Electronics 工程技术-工程:电子与电气
CiteScore
3.70
自引率
16.70%
发文量
342
审稿时长
12.0 months
期刊介绍: CJE focuses on the emerging fields of electronics, publishing innovative and transformative research papers. Most of the papers published in CJE are from universities and research institutes, presenting their innovative research results. Both theoretical and practical contributions are encouraged, and original research papers reporting novel solutions to the hot topics in electronics are strongly recommended.
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