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首页> 外文期刊>Journal of Computational Methods in Sciences and Engineering >A vehicle recognition algorithm based on fusion feature and improved binary normalized gradient feature
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A vehicle recognition algorithm based on fusion feature and improved binary normalized gradient feature

机译:一种基于融合功能的车辆识别算法和改进的二进制归一化梯度特征

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摘要

A vehicle detection method based on the fast extraction of object-oriented candidate window and fused feature of HOG-LBP is proposed for the vehicle detection algorithms based on the single shape feature in the video monitoring of expressway may lead to mistaken inspection and the detection algorithm using the support vector machine (SVM) sliding window is quite time-consuming. Firstly, the vehicle candidate window is quickly extracted based on the binary normalized gradient feature and the background difference, then the histograms of oriented gradients (HOG) feature of the candidate window image and the local binary pattern (LBP) feature are calculated and the feature fusion is carried out, and finally the vehicle detection is taken combing with the SVM classifier. The experimental results show that the fusion of shape and texture features can effectively improve the performance of vehicle detection, and the detection speed of SVM can be raised about 8 times by fast extraction of the candidate window, which can meet the requirements of real time engineering.
机译:基于高速公路视频监测中的单个形状特征的车辆检测算法提出了一种基于对面向对象候选窗口的快速提取和融合特征的车辆检测方法,可能导致检测和检测算法使用支持向量机(SVM)滑动窗口非常耗时。首先,基于二进制归一化梯度特征和背景差异快速提取车辆候选窗口,然后计算候选窗口图像的面向梯度(Hog)特征和局部二进制模式(LBP)特征的直方图和该特征进行融合,最后将车辆检测与SVM分类器进行梳理。实验结果表明,形状和纹理特征的融合可以有效地提高车辆检测的性能,并且通过快速提取候选窗口的SVM检测速度可以提高8次,这可以满足实时工程的要求。

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