基于累积声信号的交通密度状态估计

P. Borkar, L. Malik
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引用次数: 2

摘要

基于路旁单麦克风采集的累积声信号所包含的信息,研究了车辆交通密度状态估计问题。交通噪音信号(轮胎、发动机、空气湍流、排气和喇叭声等)的出现和混合权重由路段上普遍的交通密度条件决定。在这项工作中,我们使用LPC(线性预测编码)提取累积声信号的短期频谱包络特征。使用支持向量机(SVM)作为分类器,将交通密度状态建模为Low (40 Km/h及以上),Medium (20-40 Km/h)和Heavy (0-20 Km/h)。对于发展中国家,交通是非车道驱动和混乱的,其他技术(磁路检测器)是不适用的。采用不同核的SVM分类器对跨度为20 ~ 40 s的声信号片段进行分类,二次核函数和多项式核函数的平均分类准确率分别为98.33%和96.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cumulative Acoustic Signal Based Traffic Density State Estimation
Based on the information present in cumulative acoustic signal acquired from a roadside-installed single microphone, this paper considers the problem of vehicular traffic density state estimation. The occurrence and mixture weightings of traffic noise signals (Tyre, Engine, Air Turbulence, Exhaust, and Honks etc) are determined by the prevalent traffic density conditions on the road segment. In this work, we extract the short-term spectral envelope features of the cumulative acoustic signals using LPC (Linear Predictive Coding). Support Vector Machines (SVM) is used as classifier is used to model the traffic density state as Low (40 Km/h and above), Medium (20-40 Km/h), and Heavy (0-20 Km/h). For the developing geographies where the traffic is non-lane driven and chaotic, other techniques (magnetic loop detectors) are inapplicable. SVM classifier with different kernels are used to classify the acoustic signal segments spanning duration of 20-40 s, which results in average classification accuracy of 98.33% and 96.67% for quadratic and polynomial kernel functions respectively.
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