Real-time human detection based on cascade frame

Liu Zhihui, Shao Chunyan, S. Di
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引用次数: 1

Abstract

A real-time pedestrian detection approach with two steps is proposed in this paper. The first step is the detection by HOG in combination with the classifier of cascade frame. The weak classifer in cascade is Boosting which corresponds to block features of HOG. To make it more accurate in feature selection we define a model of feature selection to limit the range of feature block to the edge of human in detect window. The second step is to extract the head image in positive window and compute the color histograms as feature. Traditional AdaBoost is used to validate the detection result. Only when a window passes both steps it is judged as a human. The experiment result in the paper shows that the approach is effective and real-time detection is implemented.
基于级联帧的实时人体检测
提出了一种分两步的实时行人检测方法。第一步是HOG结合级联帧分类器进行检测。级联中的弱分类器是Boosting,它对应于HOG的块特征。为了提高特征选择的准确性,我们定义了一个特征选择模型,将特征块的范围限制在检测窗口的人体边缘。第二步,提取正窗口头部图像,计算颜色直方图作为特征。传统的AdaBoost用于验证检测结果。只有当一个窗口通过这两个步骤时,它才被判定为人类。实验结果表明,该方法是有效的,能够实现实时检测。
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