Enhancing Zero-shot Personalized Image Aesthetics Assessment with Profile-aware Multimodal LLM

April 19, 2026 ยท Grace Period ยท + Add venue

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Authors Chun Wang, Chenfeng Wei, Chenyang Liu, Weihong Deng arXiv ID 2604.17233 Category cs.CV: Computer Vision Cross-listed cs.AI Citations 0
Abstract
Personalized image aesthetics assessment (PIAA) aims to predict an individual user's subjective rating of an image, which requires modeling user-specific aesthetic preferences. Existing methods rely on historical user ratings for this modeling and therefore struggle when such data are unavailable. We address this zero-shot setting by using user profiles as contextual signals for personalization and adopting a profile-based personalization paradigm. We introduce P-MLLM, a profile-aware multimodal LLM that augments a frozen LLM with selective fusion modules for controlled visual integration. These modules selectively integrate visual information into the model's evolving hidden states during profile-conditioned reasoning, allowing visual information to be incorporated in a profile-aware manner. Experiments on recent PIAA benchmarks show that P-MLLM achieves competitive zero-shot performance and remains effective even with coarse profile information, highlighting the potential of profile-based personalization for zero-shot PIAA.
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