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Acoustic Traffic Event Detection in Long Tunnels Using Fast Binary Spectral Features

机译:使用快速二进制谱特征的长隧道中的声学交通事件检测

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摘要

In this paper, we study the traffic event detection from audio signals. Real-life data are collected in a long tunnel, and audio samples are labeled in accordance with traffic events including tire friction sound, vehicle percussion sound and other background sounds. Efficient spectral features are proposed for the fast classification of audio events. In order to model the acoustic characters, deep neural network approach is adopted. Several state-of-the-art algorithms are used for comparison, including LSTM neural network and Gaussian mixture models with Mel frequency cepstral coefficients. A novel convolutional neural network architecture which processes the input audio data in an end-to-end fashion is adopted for our traffic event detection application. Furthermore, we use time delay estimation algorithms to locate the sound location when the incident happens in the long tunnel. By comparison with the state-of-the-art audio detection methods, our proposed efficient spectral features are proved to be more accurate and more efficient in the detection of audio events related to traffic incidents.
机译:在本文中,我们研究了来自音频信号的交通事件检测。现实生活数据在长隧道中收集,音频样本按照包括轮胎摩擦声,车辆打击乐声音和其他背景声音的交通事件标记。提出了高效的频谱特征,用于音频事件的快速分类。为了模拟声学特征,采用深度神经网络方法。几种最先进的算法用于比较,包括LSTM神经网络和具有MEL频率谱系数的高斯混合模型。采用新的卷积神经网络架构,用于以端到端的方式处理输入音频数据用于我们的流量事件检测应用。此外,我们使用时间延迟估计算法在长隧道中发生事件时定位声音位置。通过与最先进的音频检测方法进行比较,我们提出的高效频谱特征被证明在检测到交通事故有关的音频事件中更准确且更高效。

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