Non-linear metric learning with multiple features for person re-identification

Jianguo Jiang, Hao Liu, Meibin Qi
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引用次数: 1

Abstract

In video surveillance, person re-identification across disjoint camera views has important applications. Many factors make it difficult to tackle such as the varieties of varying lighting conditions, viewing angles, body gestures, background clutter and occlusion. To address the problem, several methods exploited combination or the fusion of multiple features, or built models. However, in these methods, contributions of different features were determined too subjectively or the use of differences between different samples is inadequate in building model. For these problems, a novel method is proposed by us, which combines multiple kernel learning (MKL) and distance metric learning (DML) to fully employ the information of several different features in the process of re-identification and build the most descriptive and robust model. Furthermore, the distance metric learning method is improved according to the practical and the related parameters of kernels can be self-selected by our method. Experiments are conducted on benchmarking dataset, and the experimental results suggest that our approach achieves encouraging performance.
多特征非线性度量学习用于人的再识别
在视频监控中,跨不相交摄像机视图的人员再识别具有重要的应用。许多因素使其难以解决,如各种不同的照明条件,视角,身体姿势,背景杂乱和遮挡。为了解决这个问题,几种方法利用了多个特征的组合或融合,或构建模型。然而,在这些方法中,不同特征的贡献的确定过于主观,或者在建立模型时不充分利用不同样本之间的差异。针对这些问题,我们提出了一种新的方法,将多核学习(MKL)和距离度量学习(DML)相结合,充分利用再识别过程中多个不同特征的信息,建立最具描述性和鲁棒性的模型。此外,根据实际情况对距离度量学习方法进行了改进,使核的相关参数可以自选。在基准测试数据集上进行了实验,实验结果表明我们的方法取得了令人鼓舞的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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