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Multi-shot SURF-based person re-identification via sparse representation

机译:通过稀疏表示,多射冲浪的人重新识别

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We present in this paper a multi-shot human reidentification system from video sequences based on SURF matching. Our contribution is about the matching step which is crucial. In this context, we propose a new method of SURF matching via sparse representation. Each SURF Interest Point in the test sequence is represented by a sparse representation of SURFs points in the reference dataset. For efficiency purposes, a dynamic dictionary is selected for each SURF from this dataset through KD-Tree Neighborhood search. Then a majority vote rule is applied to classify the test sequence. This approach is evaluated on two public datasets : PRID-2011 and CAVIAR4REID. The experimental results show that our approach compares favorably with and outperforms current state-of-the-art on the two datasets by 1% to 7%.
机译:我们在本文中展示了一种来自基于冲浪匹配的视频序列的多枪式人力避寒系统。 我们的贡献是关于至关重要的匹配步骤。 在这种情况下,我们提出了一种通过稀疏表示冲浪匹配的新方法。 测试序列中的每个冲浪兴趣点由参考数据集中的冲浪点的稀疏表示表示。 出于效率目的,通过KD-Tree邻域搜索从该数据集中选择动态字典。 然后应用大多数表决规则来对测试序列进行分类。 这种方法是在两个公共数据集中评估:PRID-2011和Caviar4Reid。 实验结果表明,我们的方法在两个数据集上与当前最先进的最新功能相比,我们的方法比较了1%至7%。

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