PerSRV: Personalized Sticker Retrieval with Vision-Language Model
Heng Er Metilda Chee, Jiayin Wang, Zhiqiang Guo, Weizhi Ma, Min Zhang

TL;DR
PerSRV is a personalized sticker retrieval framework that leverages vision-language models, user interaction data, and clustering to improve accuracy and user satisfaction in instant messaging applications.
Contribution
The paper introduces PerSRV, a novel personalized sticker retrieval system combining offline semantic understanding, utility evaluation, and user preference modeling with online retrieval, outperforming existing methods.
Findings
PerSRV significantly outperforms existing retrieval methods.
Fine-tuned VLM improves sticker semantic understanding.
Personalization enhances retrieval relevance.
Abstract
Instant Messaging is a popular means for daily communication, allowing users to send text and stickers. As the saying goes, "a picture is worth a thousand words", so developing an effective sticker retrieval technique is crucial for enhancing user experience. However, existing sticker retrieval methods rely on labeled data to interpret stickers, and general-purpose Vision-Language Models (VLMs) often struggle to capture the unique semantics of stickers. Additionally, relevant-based sticker retrieval methods lack personalization, creating a gap between diverse user expectations and retrieval results. To address these, we propose the Personalized Sticker Retrieval with Vision-Language Model framework, namely PerSRV, structured into offline calculations and online processing modules. The online retrieval part follows the paradigm of relevant recall and personalized ranking, supported by…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Multimodal Machine Learning Applications
