R4-CGQA: Retrieval-based Vision Language Models for Computer Graphics Image Quality Assessment
arXiv cs.CV / 3/12/2026
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Key Points
- The paper identifies six perceptual CG quality dimensions from the user perspective and builds a dataset of 3,500 CG images with corresponding quality descriptions.
- It constructs QA benchmarks based on these descriptions to evaluate Vision Language Models on CG quality tasks.
- It finds that current VLMs struggle with fine-grained CG quality judgments, but descriptions of visually similar images can significantly improve a model's understanding.
- It proposes a two-stream retrieval framework with retrieval-augmented generation that substantially improves VLM performance on CG quality assessment across several representative models.
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