Person re-identification by discriminant analytical least squares metric learning

被引:0
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作者
Zhao Yang
Xiao Hu
Fei Dai
Jianxin Pang
Tao Jiang
Dapeng Tao
机构
[1] Guangzhou University,School of Mechanical and Electric Engineering
[2] Southwest Forestry University,School of Big Data and Intelligence Engineering
[3] UBTECH Robotics,School of Mathematics and Computer Science
[4] Yunnan Minzu University,School of Information Science and Engineering
[5] Yunnan University,undefined
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关键词
Person re-identification; Metric learning; Discriminant analysis; Least squares; Incremental learning; Kernel method;
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摘要
Person re-identification means retrieving a same person in large amounts of images among disjoint camera views. An effective and robust similarity measure between a person image pair plays an important role in the re-identification tasks. In this work, we propose a new metric learning method based on least squares for person re-identification. Specifically, the similar training images pairs are used to learn a linear transformation matrix by being projected to finite discrete discriminant points using regression model; then, the metric matrix can be deduced by solving least squares problem with a closed form solution. We call it discriminant analytical least squares (DALS) metric. In addition, we develop the incremental learning scheme of DALS, which is particularly valuable in model retraining when given additional samples. Furthermore, DALS could be effectively kernelized to further improve the matching performance. Extensive experiments on the VIPeR, GRID, PRID450S and CUHK01 datasets demonstrate the effectiveness and efficiency of our approaches.
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页码:1019 / 1031
页数:12
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