A hybrid approach for acoustic signal segmentation by computing similarity matrix, novelty score and peak detection for vehicular classification in wireless sensor networks

G. Padmavathi, D. Shanmugapriya, M. Kalaivani
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引用次数: 1

Abstract

Vehicle acoustic signals have long been considered as significant source in sensor networks for classification. In this research acoustic signals generated by each vehicle will be used to detect its presence and classify the type. Vehicle acoustic signal segmentation is important for continuous signal recognition because it reduces the search space effectively in vehicle's signal recognition. However, for Vehicle classification, it is difficult to segment the signal input reliably into useful sub-units because i) vehicle sound units can often be located roughly via intensity changes ii) energy changes in signal spectrum or amplitude help to estimate unit boundaries, but these cues are often unreliable. In this paper the series of steps proposed are signal segmentation is presented. includes decomposition of signals into successive frames of 50 ms without overlap. The computations of the spectrum representation (FFT) of the frames are carried out. The similarity matrix that shows the similarity between the spectrums of different frames is computed. Estimation of the novelty score related to the similarity matrix is done. The detection of the peaks in the novelty score is made and finally segmenting the vehicle acoustic signals using the peaks as position is done. These segmented signals are further used for feature extraction and classification.
基于相似性矩阵、新颖性评分和峰值检测的混合声信号分割方法在无线传感器网络中用于车辆分类
车辆声信号一直被认为是传感器网络分类的重要来源。在本研究中,每辆车产生的声信号将用于检测其存在并对其类型进行分类。车辆声信号分割是车辆信号连续识别的重要手段,它有效地缩小了车辆信号识别中的搜索空间。然而,对于车辆分类,很难将信号输入可靠地分割成有用的子单元,因为i)车辆声音单元通常可以通过强度变化粗略地定位ii)信号频谱或振幅的能量变化有助于估计单元边界,但这些线索通常不可靠。本文提出了信号分割的一系列步骤。包括将信号分解成50毫秒的连续帧,没有重叠。对帧的频谱表示(FFT)进行了计算。计算了显示不同帧的频谱之间相似度的相似矩阵。对与相似矩阵相关的新颖性得分进行了估计。对新颖性分数中的峰值进行检测,最后以峰值为位置对车辆声信号进行分割。这些分割后的信号进一步用于特征提取和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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