CVMar 11

HanMoVLM: Large Vision-Language Models for Professional Artistic Painting Evaluation

arXiv:2603.10814v137.01 citationsh-index: 8
Predicted impact top 12% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the need for automated professional art evaluation in the Chinese painting domain, though it's a domain-specific incremental advancement.

The researchers tackled the problem that large vision-language models lack professional artistic evaluation capabilities by developing HanMoVLM, a model specialized for evaluating Chinese paintings, which achieved high consistency with human experts and significantly improved the quality of generated Chinese paintings.

While Large Vision-Language Models (VLMs) demonstrate impressive general visual capabilities, they remain artistically blind and unable to offer professional evaluation of artworks within specific artistic domains like human experts. To bridge this gap, we transform VLMs into experts capable of professional-grade painting evaluation in the Chinese Artistic Domain, which is more abstract and demands extensive artistic training for evaluation. We introduce HanMo-Bench, a new dataset that features authentic auction-grade masterpieces and AI-generated works, grounded in real-world market valuations. To realize the rigorous judgment, we propose the HanMoVLM and construct a Chain-of-Thought (CoT) validated by experts. This CoT guides the model to perform expert-level reasoning: from content identification and Region of Interest (RoI) localization to professional evaluation, guided by both theme-specific evaluation and typical three-tier evaluation in Chinese paintings. Furthermore, we design a reward function to refine the reasoning process of the HanMoVLM to improve the accuracy. We demonstrate that HanMoVLM can serve as a critical backbone for Test-time Scaling in image generation. By acting as a high-quality verifier, HanMoVLM enables generative models to select the most artistically superior outputs from multiple candidates. Experimental results and human studies confirm that the proposed HanMoVLM effectively bridges the gap, achieving a high consistency with professional experts and significantly improving the quality of Chinese Painting generation.

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