Performance evaluation of an improved relational feature model for pedestrian detection

A. Zweng, M. Kampel
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引用次数: 8

Abstract

In this paper, we evaluate a new algorithm for pedestrian detection using a relational feature model (RFM) in combination with histogram similarity functions. For histogram comparison, we use the bhattacharyya distance, histogram intersection, histogram correlation and the chi-square χ2 histogram similarity function. Relational features using the HOG descriptor compute the similarity between histograms of the HOG descriptor. The features are computed for all combinations of extracted histograms from a feature detection algorithm. Our experiments show, that the information of spatial histogram similarities reduces the number of false positives while preserving true positive detections. The detection algorithm is done, using a multi-scale overlapping sliding window approach. In our experiments, we show results for different sizes of the cell size from the HOG descriptor due to the large size of the resulting relational feature vector as well as different results from the mentioned histogram similarity functions. Additionally, the results show the influence of the amount of positive example images and negative example images during training on the classification performance of our approach.
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一种改进的关系特征模型在行人检测中的性能评价
在本文中,我们评估了一种结合直方图相似度函数的关系特征模型(RFM)行人检测新算法。对于直方图的比较,我们使用了巴塔查里亚距离、直方图相交、直方图相关和卡方χ2直方图相似函数。使用HOG描述符的关系特征计算HOG描述符直方图之间的相似性。从特征检测算法中提取的直方图的所有组合计算特征。我们的实验表明,空间直方图相似性信息在保留真阳性检测的同时减少了假阳性的数量。采用多尺度重叠滑动窗方法进行检测。在我们的实验中,由于所得到的关系特征向量的大小较大,我们展示了来自HOG描述符的不同大小的细胞大小的结果,以及来自上述直方图相似函数的不同结果。此外,结果还显示了训练过程中正例图像和负例图像的数量对我们方法分类性能的影响。
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