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Enhancing person re-identification via Uncertainty Feature Fusion Method and Auto-weighted Measure Combination

2 May 2024
Quang-Huy Che
Le-Chuong Nguyen
Duc-Tuan Luu
Vinh-Tiep Nguyen
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Abstract

Person re-identification (Re-ID) is a challenging task that involves identifying the same person across different camera views in surveillance systems. Current methods usually rely on features from single-camera views, which can be limiting when dealing with multiple cameras and challenges such as changing viewpoints and occlusions. In this paper, a new approach is introduced that enhances the capability of ReID models through the Uncertain Feature Fusion Method (UFFM) and Auto-weighted Measure Combination (AMC). UFFM generates multi-view features using features extracted independently from multiple images to mitigate view bias. However, relying only on similarity based on multi-view features is limited because these features ignore the details represented in single-view features. Therefore, we propose the AMC method to generate a more robust similarity measure by combining various measures. Our method significantly improves Rank@1 accuracy and Mean Average Precision (mAP) when evaluated on person re-identification datasets. Combined with the BoT Baseline on challenging datasets, we achieve impressive results, with a 7.9% improvement in Rank@1 and a 12.1% improvement in mAP on the MSMT17 dataset. On the Occluded-DukeMTMC dataset, our method increases Rank@1 by 22.0% and mAP by 18.4%. Code is available:this https URL

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@article{che2025_2405.01101,
  title={ Enhancing person re-identification via Uncertainty Feature Fusion Method and Auto-weighted Measure Combination },
  author={ Quang-Huy Che and Le-Chuong Nguyen and Duc-Tuan Luu and Vinh-Tiep Nguyen },
  journal={arXiv preprint arXiv:2405.01101},
  year={ 2025 }
}
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