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Vehicle classification for traffic surveillance videos based on spatial location information and Sparse Representation-based Classifier

机译:基于空间位置信息和基于稀疏表示的分类器对交通监控视频进行车辆分类

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摘要

Vehicle classification plays an important part in Intelligent Transport System (ITS). However, the existing vehicle classification methods are not very robust to various changes such as lighting, weathers, noises, and the classification accuracy has been requiring to be improved. Sparse Representation-based Classifier (SRC) is not sensitive to the shortage and damage of data, the feature selection methods, is robust to lighting changes of the images, and can achieve excellent performance in multi-class classification problems. Therefore, this paper presents a new method based on spatial location information and SRC. Firstly, taken the specific characteristics of vehicles into consideration, the features of HOG (Histogram of Oriented Gradient) and HU moments are extracted to characterize the property of vehicles. In addition, the spatial location information is added to HU moment features in this paper to improve its ability to distinguish and describe vehicles. Then, vehicles are classified into six classes (large bus, car, motorcycle, minibus, truck and van) by SRC. The performance evaluation is carried out on the dataset which consists of 13300 vehicle images extracted from the real highway surveillance videos. The experimental results show that, using the proposed method, the time cost of classification can be speeded up by about 1.57 times and the average classification precision can achieve 96.53%, which is drastically improved by more than 2.7% compared to other existing methods.
机译:车辆分类在智能运输系统(ITS)中起着重要的作用。然而,现有的车辆分类方法对于诸如照明,天气,噪声之类的各种变化不是很鲁棒,并且已经需要提高分类精度。基于稀疏表示的分类器(SRC)对数据的短缺和损坏不敏感,是一种特征选择方法,对图像的光照变化具有鲁棒性,并且可以在多类分类问题中实现出色的性能。因此,本文提出了一种基于空间位置信息和SRC的新方法。首先,考虑车辆的特定特性,提取HOG(定向梯度直方图)和HU矩的特征,以表征车辆的特性。另外,本文将空间位置信息添加到HU矩特征中,以提高其区分和描述车辆的能力。然后,SRC将车辆分为六类(大型巴士,汽车,摩托车,小巴,卡车和货车)。对数据集进行性能评估,该数据集由从真实的公路监控视频中提取的13300张车辆图像组成。实验结果表明,使用该方法可以将分类的时间成本提高1.57倍左右,平均分类精度可以达到96.53%,比其他现有方法大大提高了2.7%以上。

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