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A Pedestrian Re-Identification Method Based on Multi-Feature Fusion

机译:一种基于多重特征融合的行人重新识别方法

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Single feature of pedestrian is difficult to accurately describe the target using traditional algorithms. A new reidentification algorithm combing global features and local features with different distance metric function is introduced. First, weighted color histogram feature for whole pedestrian is extracted and combined with Bhattacharyya distance to roughly recognize targets. Then pedestrians' maximum stable color area (MSCR) of torso and legs and histograms of oriented gradients (HOG) are combined with weights for fusion feature. Finally, all obtained features are combined and compared with pedestrian original characteristics for final recognition. Pearson correlation coefficient is used as similarity measurement to finely recognize pedestrian. Experimental results show that proposed method can achieve high identification accuracy.
机译:使用传统算法难以准确地描述目标的单一特征。介绍了梳理全局特征和具有不同距离度量功能的全局特征和局部特征的新的重新入住算法。首先,提取整个行人的加权颜色直方图特征,并与Bhattacharyya距离结合到大致识别目标。然后,行人的躯干和腿部的最大稳定颜色区域(MSCR)和取向梯度(HOG)的直方图与融合特征的重量相结合。最后,所有获得的功能都是组合的,并与行人原始特征进行比较,以进行最终识别。 Pearson相关系数用作相似性测量来精细识别行人。实验结果表明,提出的方法可以实现高识别精度。

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