Enhancing Visual Representation for Text-based Person Searching
- URL: http://arxiv.org/abs/2412.20646v1
- Date: Mon, 30 Dec 2024 01:38:14 GMT
- Title: Enhancing Visual Representation for Text-based Person Searching
- Authors: Wei Shen, Ming Fang, Yuxia Wang, Jiafeng Xiao, Diping Li, Huangqun Chen, Ling Xu, Weifeng Zhang,
- Abstract summary: VFE-TPS is a Visual Feature Enhanced Text-based Person Search model.
It introduces a pre-trained backbone CLIP to learn basic multimodal features.
It constructs Text Guided Masked Image Modeling task to enhance the model's ability of learning local visual details.
- Score: 9.601697802095119
- License:
- Abstract: Text-based person search aims to retrieve the matched pedestrians from a large-scale image database according to the text description. The core difficulty of this task is how to extract effective details from pedestrian images and texts, and achieve cross-modal alignment in a common latent space. Prior works adopt image and text encoders pre-trained on unimodal data to extract global and local features from image and text respectively, and then global-local alignment is achieved explicitly. However, these approaches still lack the ability of understanding visual details, and the retrieval accuracy is still limited by identity confusion. In order to alleviate the above problems, we rethink the importance of visual features for text-based person search, and propose VFE-TPS, a Visual Feature Enhanced Text-based Person Search model. It introduces a pre-trained multimodal backbone CLIP to learn basic multimodal features and constructs Text Guided Masked Image Modeling task to enhance the model's ability of learning local visual details without explicit annotation. In addition, we design Identity Supervised Global Visual Feature Calibration task to guide the model learn identity-aware global visual features. The key finding of our study is that, with the help of our proposed auxiliary tasks, the knowledge embedded in the pre-trained CLIP model can be successfully adapted to text-based person search task, and the model's visual understanding ability is significantly enhanced. Experimental results on three benchmarks demonstrate that our proposed model exceeds the existing approaches, and the Rank-1 accuracy is significantly improved with a notable margin of about $1\%\sim9\%$. Our code can be found at https://github.com/zhangweifeng1218/VFE_TPS.
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