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Vehicle detection and classification from acoustic signal using ANN and KNN

机译:使用ANN和KNN根据声音信号进行车辆检测和分类

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摘要

In this paper, a new efficient method for detection and classification of vehicles from acoustic signal using ANN and KNN is presented. Automatic Identification and classification of vehicles is a very challenging area, which is in contrast to the traditional practice of monitoring the vehicles manually. In this paper, an algorithm has been developed and implemented for classification of vehicles belonging to different classes in a typical of Indian scenario. Automatic identification and classification of vehicles is a challenging problem in traffic planning, in contrast to the traditional practice of monitoring traffic manually. This becomes even more challenging in single|double lane road with heterogeneous traffic, which is typical in Indian scenario. In this work we propose an algorithm for automatic detection and broad classification of vehicles in to three categories namely heavy, medium and light. When a vehicle passes the microphone the recorded acoustic signal shows a peak in energy. The energy contour is smoothed and peaks are automatically located for detection of vehicle sound signal. Mel frequency cepstral coefficients are extracted for detection the regions around detected peaks. The feature vectors are used for training ANN/KNN classifiers. Efficiency of the method is illustrated using test data which contains approximately 160 vehicles belonging to different categories.
机译:本文提出了一种基于ANN和KNN的声信号车辆分类检测方法。自动识别和分类车辆是一个非常具有挑战性的领域,这与手动监视车辆的传统做法形成了鲜明对比。在本文中,已经开发并实现了一种算法,用于在典型的印度情景中对属于不同类别的车辆进行分类。与手动监控交通的传统做法相比,车辆的自动识别和分类在交通规划中是一个具有挑战性的问题。这在具有异构交通的单车道道路上变得更加具有挑战性,这在印度情景中很常见。在这项工作中,我们提出了一种自动检测车辆并将其大致分为三类的算法,即重型,中型和轻型。当车辆经过麦克风时,记录的声音信号会显示能量峰值。能量轮廓被平滑,并且自动定位峰值以检测车辆声音信号。提取梅尔频率倒谱系数以检测检测到的峰周围的区域。特征向量用于训练ANN / KNN分类器。使用包含大约160辆属于不同类别的车辆的测试数据来说明该方法的效率。

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