Does AI See like Art Historians? Interpreting How Vision Language Models Recognize Artistic Style
AI 摘要
该论文分析了视觉语言模型识别艺术风格的机制,并与艺术史家的认知进行对比。
主要贡献
- 揭示VLM预测艺术风格的驱动概念
- 量化评估VLM与艺术史家认知的一致性
- 分析VLM成功预测但概念不相关的案例
方法论
采用潜在空间分解识别驱动艺术风格预测的概念,通过量化评估、因果分析以及艺术史家的评估。
原文摘要
VLMs have become increasingly proficient at a range of computer vision tasks, such as visual question answering and object detection. This includes increasingly strong capabilities in the domain of art, from analyzing artwork to generation of art. In an interdisciplinary collaboration between computer scientists and art historians, we characterize the mechanisms underlying VLMs' ability to predict artistic style and assess the extent to which they align with the criteria art historians use to reason about artistic style. We employ a latent-space decomposition approach to identify concepts that drive art style prediction and conduct quantitative evaluations, causal analysis and assessment by art historians. Our findings indicate that 73% of the extracted concepts are judged by art historians to exhibit a coherent and semantically meaningful visual feature and 90% of concepts used to predict style of a given artwork were judged relevant. In cases where an irrelevant concept was used to successfully predict style, art historians identified possible reasons for its success; for example, the model might "understand" a concept in more formal terms, such as dark/light contrasts.