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Deep Learning Approach For Audio Signal Classification And Its Application In Fiber Optic Sensor Security System

机译:音频信号分类的深度学习方法及其在光纤传感器安全系统中的应用

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The perimeter intrusion detection system (PIDS), as a new type of security system, is getting more and more people's attention. And the positioning and early warning algorithms for intrusion signals have always been the focus of people's research. Signals collected by fiber optic sensors can be regarded as an audio signals. However, traditional audio signal recognition algorithms have poor classification effects due to the excessive sensitivity of fiber optic sensors. In this paper, a fully residual convolution neural network with long short-term memory (LSTM) is proposed to solve the signal identification problem. Three different audio feature spectrograms are used as parallel inputs to improve the network stability. Experiments and comparisons are carried out among our network and the support vector machines (SVM), back propagation neural networks (BPNN), simple DNN network, which prove that our system has higher recognition accuracy and strong resistance to environmental interference.
机译:外围入侵检测系统(PIDS)作为一种新型的安全系统,受到越来越多的关注。入侵信号的定位和预警算法一直是人们研究的重点。光纤传感器收集的信号可以视为音频信号。但是,由于光纤传感器的灵敏度过高,传统的音频信号识别算法的分类效果不佳。为了解决信号识别问题,提出了一种具有长短期记忆(LSTM)的完全残差卷积神经网络。三种不同的音频特征频谱图用作并行输入,以提高网络稳定性。在我们的网络与支持向量机(SVM),反向传播神经网络(BPNN),简单DNN网络之间进行了实验和比较,证明了我们的系统具有更高的识别精度和较强的抗环境干扰能力。

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