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Auteurs principaux: Shen, Yi-Ting, Eum, Sungmin, Lee, Doheon, Shete, Rohit, Wang, Chiao-Yi, Kwon, Heesung, Bhattacharyya, Shuvra S.
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2503.22884
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author Shen, Yi-Ting
Eum, Sungmin
Lee, Doheon
Shete, Rohit
Wang, Chiao-Yi
Kwon, Heesung
Bhattacharyya, Shuvra S.
author_facet Shen, Yi-Ting
Eum, Sungmin
Lee, Doheon
Shete, Rohit
Wang, Chiao-Yi
Kwon, Heesung
Bhattacharyya, Shuvra S.
contents Composed pose retrieval (CPR) enables users to search for human poses by specifying a reference pose and a transition description, but progress in this field is hindered by the scarcity and inconsistency of annotated pose transitions. Existing CPR datasets rely on costly human annotations or heuristic-based rule generation, both of which limit scalability and diversity. In this work, we introduce AutoComPose, the first framework that leverages multimodal large language models (MLLMs) to automatically generate rich and structured pose transition descriptions. Our method enhances annotation quality by structuring transitions into fine-grained body part movements and introducing mirrored/swapped variations, while a cyclic consistency constraint ensures logical coherence between forward and reverse transitions. To advance CPR research, we construct and release two dedicated benchmarks, AIST-CPR and PoseFixCPR, supplementing prior datasets with enhanced attributes. Extensive experiments demonstrate that training retrieval models with AutoComPose yields superior performance over human-annotated and heuristic-based methods, significantly reducing annotation costs while improving retrieval quality. Our work pioneers the automatic annotation of pose transitions, establishing a scalable foundation for future CPR research.
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spellingShingle AutoComPose: Automatic Generation of Pose Transition Descriptions for Composed Pose Retrieval Using Multimodal LLMs
Shen, Yi-Ting
Eum, Sungmin
Lee, Doheon
Shete, Rohit
Wang, Chiao-Yi
Kwon, Heesung
Bhattacharyya, Shuvra S.
Computer Vision and Pattern Recognition
Composed pose retrieval (CPR) enables users to search for human poses by specifying a reference pose and a transition description, but progress in this field is hindered by the scarcity and inconsistency of annotated pose transitions. Existing CPR datasets rely on costly human annotations or heuristic-based rule generation, both of which limit scalability and diversity. In this work, we introduce AutoComPose, the first framework that leverages multimodal large language models (MLLMs) to automatically generate rich and structured pose transition descriptions. Our method enhances annotation quality by structuring transitions into fine-grained body part movements and introducing mirrored/swapped variations, while a cyclic consistency constraint ensures logical coherence between forward and reverse transitions. To advance CPR research, we construct and release two dedicated benchmarks, AIST-CPR and PoseFixCPR, supplementing prior datasets with enhanced attributes. Extensive experiments demonstrate that training retrieval models with AutoComPose yields superior performance over human-annotated and heuristic-based methods, significantly reducing annotation costs while improving retrieval quality. Our work pioneers the automatic annotation of pose transitions, establishing a scalable foundation for future CPR research.
title AutoComPose: Automatic Generation of Pose Transition Descriptions for Composed Pose Retrieval Using Multimodal LLMs
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.22884