Person Re-identification based on Robust Features in Open-world
Yaguan Qian, Anlin Sun

TL;DR
This paper introduces a robust person re-identification method for open-world scenarios, utilizing pose estimation and dynamic time warping to handle multi-factor variability and improve accuracy over existing models.
Contribution
The paper proposes a novel re-ID approach combining pose estimation with DTW and introduces a new dataset reflecting real-world multi-factor variability.
Findings
Achieves Rank-1 accuracy of 60.9% on the new dataset.
Outperforms most existing re-ID models in experiments.
Effectively handles multi-factor variables like clothing and modality.
Abstract
Deep learning technology promotes the rapid development of person re-identifica-tion (re-ID). However, some challenges are still existing in the open-world. First, the existing re-ID research usually assumes only one factor variable (view, clothing, pedestrian pose, pedestrian occlusion, image resolution, RGB/IR modality) changing, ignoring the complexity of multi-factor variables in the open-world. Second, the existing re-ID methods are over depend on clothing color and other apparent features of pedestrian, which are easily disguised or changed. In addition, the lack of benchmark datasets containing multi-factor variables is also hindering the practically application of re-ID in the open-world. In this paper, we propose a low-cost and high-efficiency method to solve shortcomings of the existing re-ID research, such as unreliable feature selection, low efficiency of feature extraction,…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Gait Recognition and Analysis · Face recognition and analysis
MethodsConvolution
