行人检测采用主成分梯度分布分析

S. Mehralian, M. Palhang
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引用次数: 5

摘要

本文提出了一种新的图像和视频行人检测方法。我们的方法使用滑动窗口来搜索图像。为了提取特征,将每个窗口划分为重叠的单元,并从中提取特征。我们提取的特征描述每个窗口是基于分析每个细胞的梯度分布。在计算出细胞的梯度分布后,将主成分分析应用到细胞上,利用测量边缘姿态的数学表达式得到细胞的特征。将单元格的特征彼此相邻,形成窗口的特征向量。然后,使用支持向量机(SVM)对提取的特征进行分类。最后,将学习到的SVM模型在INRIA行人数据集上进行测试。将该方法与直方图定向梯度(HOG)方法进行了比较,结果表明,该方法具有相当的检测精度,并且在面对噪声时具有更强的鲁棒性。
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Pedestrian detection using principal components analysis of gradient distribution
In this paper we proposed a new method for pedestrian detection in images and videos. Our method uses a sliding window to search through images. In order to extract the features, each window is divided into overlapping cells and features are extracted from them. The feature that we extracted to describe each window is based on analysis of gradient distribution of each cell. After gradient distribution of a cell computed, the PCA is applied on it and using a mathematical expression that gauges the attitude of edges we got the feature of the cell. Putting the features of the cells next to each other forms the feature vector of the window. Then, the extracted features are classified using Support Vector Machine (SVM). Finally, the learned SVM model tested on the INRIA pedestrian dataset. The proposed method was compared with Histograms of Oriented Gradient (HOG) approach and the results show that our method has comparable detection accuracy as well as having more robustness when facing with noise.
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