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Hauptverfasser: Tan, Lei, Zhang, Yukang, Han, Keke, Dai, Pingyang, Zhang, Yan, Wu, Yongjian, Ji, Rongrong
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2411.01225
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author Tan, Lei
Zhang, Yukang
Han, Keke
Dai, Pingyang
Zhang, Yan
Wu, Yongjian
Ji, Rongrong
author_facet Tan, Lei
Zhang, Yukang
Han, Keke
Dai, Pingyang
Zhang, Yan
Wu, Yongjian
Ji, Rongrong
contents This paper makes a step towards modeling the modality discrepancy in the cross-spectral re-identification task. Based on the Lambertain model, we observe that the non-linear modality discrepancy mainly comes from diverse linear transformations acting on the surface of different materials. From this view, we unify all data augmentation strategies for cross-spectral re-identification by mimicking such local linear transformations and categorizing them into moderate transformation and radical transformation. By extending the observation, we propose a Random Linear Enhancement (RLE) strategy which includes Moderate Random Linear Enhancement (MRLE) and Radical Random Linear Enhancement (RRLE) to push the boundaries of both types of transformation. Moderate Random Linear Enhancement is designed to provide diverse image transformations that satisfy the original linear correlations under constrained conditions, whereas Radical Random Linear Enhancement seeks to generate local linear transformations directly without relying on external information. The experimental results not only demonstrate the superiority and effectiveness of RLE but also confirm its great potential as a general-purpose data augmentation for cross-spectral re-identification. The code is available at \textcolor{magenta}{\url{https://github.com/stone96123/RLE}}.
format Preprint
id arxiv_https___arxiv_org_abs_2411_01225
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RLE: A Unified Perspective of Data Augmentation for Cross-Spectral Re-identification
Tan, Lei
Zhang, Yukang
Han, Keke
Dai, Pingyang
Zhang, Yan
Wu, Yongjian
Ji, Rongrong
Computer Vision and Pattern Recognition
This paper makes a step towards modeling the modality discrepancy in the cross-spectral re-identification task. Based on the Lambertain model, we observe that the non-linear modality discrepancy mainly comes from diverse linear transformations acting on the surface of different materials. From this view, we unify all data augmentation strategies for cross-spectral re-identification by mimicking such local linear transformations and categorizing them into moderate transformation and radical transformation. By extending the observation, we propose a Random Linear Enhancement (RLE) strategy which includes Moderate Random Linear Enhancement (MRLE) and Radical Random Linear Enhancement (RRLE) to push the boundaries of both types of transformation. Moderate Random Linear Enhancement is designed to provide diverse image transformations that satisfy the original linear correlations under constrained conditions, whereas Radical Random Linear Enhancement seeks to generate local linear transformations directly without relying on external information. The experimental results not only demonstrate the superiority and effectiveness of RLE but also confirm its great potential as a general-purpose data augmentation for cross-spectral re-identification. The code is available at \textcolor{magenta}{\url{https://github.com/stone96123/RLE}}.
title RLE: A Unified Perspective of Data Augmentation for Cross-Spectral Re-identification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.01225