CVMMMay 8, 2025

Does CLIP perceive art the same way we do?

arXiv:2505.05229v22 citationsh-index: 29CBMI
Originality Incremental advance
AI Analysis

This work addresses the problem of evaluating multimodal AI models for creative domains, providing insights for researchers and practitioners using CLIP in generative processes like style transfer.

The paper investigated CLIP's ability to extract semantic and stylistic information from artworks, comparing its responses to human annotations and revealing strengths and limitations in its visual representations, particularly regarding aesthetic cues and artistic intent.

CLIP has emerged as a powerful multimodal model capable of connecting images and text through joint embeddings, but to what extent does it 'see' the same way humans do - especially when interpreting artworks? In this paper, we investigate CLIP's ability to extract high-level semantic and stylistic information from paintings, including both human-created and AI-generated imagery. We evaluate its perception across multiple dimensions: content, scene understanding, artistic style, historical period, and the presence of visual deformations or artifacts. By designing targeted probing tasks and comparing CLIP's responses to human annotations and expert benchmarks, we explore its alignment with human perceptual and contextual understanding. Our findings reveal both strengths and limitations in CLIP's visual representations, particularly in relation to aesthetic cues and artistic intent. We further discuss the implications of these insights for using CLIP as a guidance mechanism during generative processes, such as style transfer or prompt-based image synthesis. Our work highlights the need for deeper interpretability in multimodal systems, especially when applied to creative domains where nuance and subjectivity play a central role.

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