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Evaluating features for person re-identification

机译:评估人员重新识别的功能

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Many features have been proposed for person re-identification, but most of them are the combination of several different kinds of single features. And there is no research about what role the single features play and which can be fused together to improve the performance. In this paper, we explore eight single features (four colors, two textures, two gradients) and their fusions. Evaluations are conducted on four public datasets with two metric learning algorithms. Experimental results show that the color features are the more effective features comparing with texture and gradient features. It can greatly improve the accuracy when the single features are fused with different type, region segmentation and quantization. The conclusion can guide us to fuse several single features to improve the performance.
机译:已经提出了许多用于人员重新识别的功能,但是其中大多数是几种不同类型的单一功能的组合。而且,还没有关于单个功能扮演什么角色以及可以将哪些功能融合在一起以提高性能的研究。在本文中,我们探索了八个单一特征(四种颜色,两种纹理,两种渐变)及其融合。使用两个度量学习算法对四个公共数据集进行评估。实验结果表明,与纹理和渐变特征相比,颜色特征是更有效的特征。当单个特征与不同类型,区域分割和量化融合时,可以大大提高准确性。结论可以指导我们融合几个单一功能以提高性能。

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