Prototypical Prompting for Text-to-image Person Re-identification
Shuanglin Yan, Jun Liu, Neng Dong, Liyan Zhang, Jinhui Tang

TL;DR
This paper introduces a novel prototypical prompting framework that enhances text-to-image person re-identification by modeling both instance-level and identity-level matching through identity-enriched prototypes, improving accuracy.
Contribution
The proposed Propot framework uniquely combines prototype learning with domain- and instance-conditional prompting to better capture identity information in TIReID tasks.
Findings
Propot outperforms existing methods on three benchmarks.
Identity-enriched prototypes improve matching accuracy.
The framework effectively models both instance and identity-level matching.
Abstract
In this paper, we study the problem of Text-to-Image Person Re-identification (TIReID), which aims to find images of the same identity described by a text sentence from a pool of candidate images. Benefiting from Vision-Language Pre-training, such as CLIP (Contrastive Language-Image Pretraining), the TIReID techniques have achieved remarkable progress recently. However, most existing methods only focus on instance-level matching and ignore identity-level matching, which involves associating multiple images and texts belonging to the same person. In this paper, we propose a novel prototypical prompting framework (Propot) designed to simultaneously model instance-level and identity-level matching for TIReID. Our Propot transforms the identity-level matching problem into a prototype learning problem, aiming to learn identity-enriched prototypes. Specifically, Propot works by 'initialize,…
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Taxonomy
TopicsAuthorship Attribution and Profiling · Literature, Language, and Rhetoric Studies
