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Bidirectional sparse representations for multi-shot person re-identification

机译:多射击人重新识别的双向稀疏表示

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With the development of surveillance cameras, person re-identification has gained much interest, however re-identifying people across cameras remains a challenging problem which not only requires a good feature description but also a reliable matching scheme. Our method can be applied with any feature and focuses on the second requirement. We propose a robust bidirectional sparse coding method that improves simple sparse coding performances. Some recent work have already explored sparse representation for the re-identification task but none has considered the problem from both the probe and the gallery perspectives. We propose a bidirectional sparse representations method which searches for the most likely match for the test element in the gallery set and makes sure that the selected gallery match is indeed closely related to the probe. Extensive experiments on two datasets, CUHK03 and iLIDS-VID, show the effectiveness of our approach.
机译:随着监控摄像机的发展,人员重新识别已经获得了很多兴趣,然而,在相机中重新识别人们仍然是一个具有挑战性的问题,这不仅需要良好的特征描述,而且还需要一种可靠的匹配方案。我们的方法可以应用于任何特征,并专注于第二个要求。我们提出了一种强大的双向稀疏编码方法,可提高简单的稀疏编码性能。一些最近的工作已经探索了重新识别任务的稀疏表示,但没有考虑来自探测和画廊的角度来的问题。我们提出了一种双向稀疏表示方法,该方法搜索了库集中的测试元素的最可能匹配,并确保所选的图库匹配确实与探测密切相关。在两个数据集,CUHK03和ILIDS-VID上进行广泛的实验,表明了我们的方法的有效性。

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