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Fast human detection using selective block-based HOG-LBP

机译:使用基于选择性块的HOG-LBP进行快速人体检测

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We propose a speed up method for the Histograms of Oriented Gradients - Local Binary Pattern (HOG-LBP) based pedestrian detector. Our method is based on the two-stage cascade structure. In the first stage evaluation, instead of extracting the features from all the region inside the detection window like in the conventional method, we extract the features from the regions which best characterize the pedestrian only. By reducing the features to be evaluated, each candidate is evaluated faster. To determine which regions are best for characterizing the pedestrian, we train the AdaBoost classifier to select the blocks whose Support Vector Machine responses of the pedestrian samples are most different from the non-pedestrians. In the second stage, we simply use the conventional HOG-LBP classifier to reevaluate the candidates which pass the first stage evaluation. Experimental results show that the detection algorithm is about three times faster than the conventional HOG-LBP SVM algorithm.
机译:我们提出了一种基于梯度梯度直方图的加速方法-基于本地二进制模式(HOG-LBP)的行人检测器。我们的方法基于两阶段级联结构。在第一阶段的评估中,我们没有像传统方法那样从检测窗口内的所有区域中提取特征,而是从仅最能描述行人特征的区域中提取了特征。通过减少要评估的特征,可以更快地评估每个候选项。为了确定最适合表征行人的区域,我们训练AdaBoost分类器选择行人样本的Support Vector Machine响应与非行人差异最大的块。在第二阶段,我们仅使用常规的HOG-LBP分类器来重新评估通过第一阶段评估的候选人。实验结果表明,该检测算法比常规HOG-LBP SVM算法快约三倍。

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