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Main Authors: Zhou, Wang, Duan, Boran, Ai, Haojun, Lan, Ruiqi, Zhou, Ziyue
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.21482
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author Zhou, Wang
Duan, Boran
Ai, Haojun
Lan, Ruiqi
Zhou, Ziyue
author_facet Zhou, Wang
Duan, Boran
Ai, Haojun
Lan, Ruiqi
Zhou, Ziyue
contents Recent vision-language models such as CLIP provide strong cross-modal alignment, but current CLIP-guided ReID pipelines rely on global features and fixed prompts. This limits their ability to capture fine-grained attribute cues and adapt to diverse appearances. We propose ALADIN, an attribute-language distillation network that distills knowledge from a frozen CLIP teacher to a lightweight ReID student. ALADIN introduces fine-grained attribute-local alignment to establish adaptive text-visual correspondence and robust representation learning. A Scene-Aware Prompt Generator produces image-specific soft prompts to facilitate adaptive alignment. Attribute-local distillation enforces consistency between textual attributes and local visual features, significantly enhancing robustness under occlusions. Furthermore, we employ cross-modal contrastive and relation distillation to preserve the inherent structural relationships among attributes. To provide precise supervision, we leverage Multimodal LLMs to generate structured attribute descriptions, which are then converted into localized attention maps via CLIP. At inference, only the student is used. Experiments on Market-1501, DukeMTMC-reID, and MSMT17 show improvements over CNN-, Transformer-, and CLIP-based methods, with better generalization and interpretability.
format Preprint
id arxiv_https___arxiv_org_abs_2603_21482
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ALADIN:Attribute-Language Distillation Network for Person Re-Identification
Zhou, Wang
Duan, Boran
Ai, Haojun
Lan, Ruiqi
Zhou, Ziyue
Computer Vision and Pattern Recognition
I.4.8
Recent vision-language models such as CLIP provide strong cross-modal alignment, but current CLIP-guided ReID pipelines rely on global features and fixed prompts. This limits their ability to capture fine-grained attribute cues and adapt to diverse appearances. We propose ALADIN, an attribute-language distillation network that distills knowledge from a frozen CLIP teacher to a lightweight ReID student. ALADIN introduces fine-grained attribute-local alignment to establish adaptive text-visual correspondence and robust representation learning. A Scene-Aware Prompt Generator produces image-specific soft prompts to facilitate adaptive alignment. Attribute-local distillation enforces consistency between textual attributes and local visual features, significantly enhancing robustness under occlusions. Furthermore, we employ cross-modal contrastive and relation distillation to preserve the inherent structural relationships among attributes. To provide precise supervision, we leverage Multimodal LLMs to generate structured attribute descriptions, which are then converted into localized attention maps via CLIP. At inference, only the student is used. Experiments on Market-1501, DukeMTMC-reID, and MSMT17 show improvements over CNN-, Transformer-, and CLIP-based methods, with better generalization and interpretability.
title ALADIN:Attribute-Language Distillation Network for Person Re-Identification
topic Computer Vision and Pattern Recognition
I.4.8
url https://arxiv.org/abs/2603.21482