CVApr 10, 2025

LAPIS: A novel dataset for personalized image aesthetic assessment

arXiv:2504.07670v115 citationsh-index: 9Has Code2025 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
Originality Synthesis-oriented
AI Analysis

This addresses the problem of personalized aesthetic assessment for art images, providing a new dataset but with incremental methodological contributions.

The authors introduced LAPIS, a novel dataset of 11,723 artwork images for personalized image aesthetic assessment, and found that removing personal or image attributes deteriorates model performance, with existing models making similar incorrect predictions.

We present the Leuven Art Personalized Image Set (LAPIS), a novel dataset for personalized image aesthetic assessment (PIAA). It is the first dataset with images of artworks that is suitable for PIAA. LAPIS consists of 11,723 images and was meticulously curated in collaboration with art historians. Each image has an aesthetics score and a set of image attributes known to relate to aesthetic appreciation. Besides rich image attributes, LAPIS offers rich personal attributes of each annotator. We implemented two existing state-of-the-art PIAA models and assessed their performance on LAPIS. We assess the contribution of personal attributes and image attributes through ablation studies and find that performance deteriorates when certain personal and image attributes are removed. An analysis of failure cases reveals that both existing models make similar incorrect predictions, highlighting the need for improvements in artistic image aesthetic assessment. The LAPIS project page can be found at: https://github.com/Anne-SofieMaerten/LAPIS

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