基于高效向量稀疏编码的线性支持向量机的城市车辆分类

Tao Ma, Yuexian Zou, Qing Ding
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引用次数: 6

摘要

本文提出了一种将高效向量稀疏编码技术与线性支持向量机(SVM)分类器相结合的方法来解决城市车辆分类问题。从本质上讲,SIFT描述符能够给出车辆图像的良好局部特征。然而,一般来说,SIFT特征向量是非线性判别的。通过稀疏编码,首先将SIFT特征向量投影到高维特征域,得到的稀疏编码向量比原始特征域的稀疏编码向量更容易区分,从而采用线性支持向量机分类器。传统的矢量稀疏编码计算量大,降低了稀疏编码在实际车辆分类中的应用价值。本文提出并推导了一种高效的基于l2范数约束的矢量稀疏编码车辆分类算法。使用从监控视频数据中提取的真实车辆图像进行性能评估,并考虑了6种车辆类别(公共汽车,卡车,SUV,面包车,轿车和摩托车)。实验结果验证了该方法的有效性,并取得了良好的分类效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Urban vehicle classification based on linear SVM with efficient vector sparse coding
This paper presents a new method to solve the urban vehicle classification problem by incorporating an efficient vector sparse coding technique with the linear support vector machine (SVM) classifier. Essentially, SIFT descriptors are able to give good local characteristics of a vehicle image. However, in general, SIFT feature vectors are nonlinearly discriminated. With sparse coding, the SIFT feature vectors can be firstly projected to a higher dimensional feature domain where the resultant sparse code vectors may be more distinguishable than those in original feature domain and thus the linear SVM classifier can be adopted. Conventional vector sparse coding is computationally expensive which reduces the practical value of sparse coding for real vehicle classification applications. In this paper, an efficient L2-norm constraint based vector sparse coding algorithm for vehicle classification has been formulated and derived accordingly. The performance evaluations using real vehicle images extracted from surveillance video data are carried out and six vehicle classes (bus, truck, SUV, van, car, and motorcycle) are considered. Experimental results validate the effectiveness of the proposed method and it is encouraged to see that a good classification performance is achieved.
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