基于视频的人物再识别三维高斯描述符

Chirine Riachy, Noor Al-Máadeed, Daniel Organisciak, F. Khelifi, A. Bouridane
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引用次数: 2

摘要

尽管通常被认为比基于图像的人员再识别(re-id)更具挑战性,但基于视频的人员再识别仍然很有吸引力,因为它模仿了更现实的场景,因为监控摄像头可以提供行人序列。为了利用所提供的时间信息,已经提出了许多特征提取方法。虽然这些特征可以用更高的计算成本来学习,但标记的重新标识数据集的稀缺性鼓励了鲁棒的手工特征表示的发展,作为一种有效的替代方案,特别是当需要验证新的距离度量或多帧排序算法时。本文提出了一种基于三维分层高斯描述符的基于视频的人物身份识别手工特征表示方法。与类似的方法相比,所提出的描述符(i)不需要任何步行周期提取,从而避免了该任务的复杂性,(ii)可以很容易地输入现成的学习距离度量,(iii)无论采用何种匹配方法,都能始终保持优异的性能。在PRID2011和iLIDS-VID数据集上验证了该方法的性能,并在两个基准测试中优于类似方法。
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3D Gaussian Descriptor for Video-based Person Re-Identification
Despite being often considered less challenging than image-based person re-identification (re-id), video-based person re-id is still appealing as it mimics a more realistic scenario owing to the availability of pedestrian sequences from surveillance cameras. In order to exploit the temporal information provided, a number of feature extraction methods have been proposed. Although the features could be equally learned at a significantly higher computational cost, the scarce nature of labelled re-id datasets encourages the development of robust hand-crafted feature representations as an efficient alternative, especially when novel distance metrics or multi-shot ranking algorithms are to be validated. This paper presents a novel hand-crafted feature representation for video-based person re-id based on a 3-dimensional hierarchical Gaussian descriptor. Compared to similar approaches, the proposed descriptor (i) does not require any walking cycle extraction, hence avoiding the complexity of this task, (ii) can be easily fed into off-shelf learned distance metrics, (iii) and consistently achieves superior performance regardless of the matching method adopted. The performance of the proposed method was validated on PRID2011 and iLIDS-VID datasets outperforming similar methods on both benchmarks.
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