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Temporally aligned pooling representation for video-based person re-identification

机译:临时对齐的池表示,用于基于视频的人员重新识别

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This paper proposes an effective Temporally Aligned Pooling Representation (TAPR) for video-based person re-identification. To extract the motion information from a sequence, we propose to track the superpixels of the lowest portions of human. To perform temporal alignment of videos, we propose to select the “best” walking cycle from the noisy motion information according to the intrinsic periodicity property of walking persons, that is fitted sinusoid in our implementation. To describe the video data in the selected walking cycle, we first divide the cycle into several segments according to the sinusoid, and then describe each segment by temporally aligned pooling. Extensive experimental results on the public datasets demonstrate the effectiveness of the proposed method compared with the state-of-the-art approaches.
机译:本文提出了一种有效的基于时间的合并池表示(TAPR),用于基于视频的人员重新识别。为了从序列中提取运动信息,我们建议跟踪人类最下部的超像素。为了执行视频的时间对准,我们建议根据步行者的固有周期性属性从嘈杂的运动信息中选择“最佳”步行周期,在我们的实现中将其拟合为正弦曲线。为了描述所选步行周期中的视频数据,我们首先根据正弦波将周期划分为几个片段,然后通过时间对齐的池描述每个片段。与最新技术相比,在公共数据集上的大量实验结果证明了该方法的有效性。

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