Multimodal Learning 相关度: 8/10

Iconographic Classification and Content-Based Recommendation for Digitized Artworks

Krzysztof Kutt, Maciej Baczyński
arXiv: 2602.19698v1 发布: 2026-02-23 更新: 2026-02-23

AI 摘要

本文提出一个基于Iconclass词汇表,结合YOLOv8和推荐算法的数字化艺术品分类和推荐系统。

主要贡献

  • 自动化艺术品iconographic分类
  • 基于内容的艺术品推荐
  • 结合计算机视觉和符号结构的分类方法

方法论

结合YOLOv8目标检测、Iconclass映射、规则推理和三种推荐器(层级邻近,IDF加权重叠,Jaccard相似性)。

原文摘要

We present a proof-of-concept system that automates iconographic classification and content-based recommendation of digitized artworks using the Iconclass vocabulary and selected artificial intelligence methods. The prototype implements a four-stage workflow for classification and recommendation, which integrates YOLOv8 object detection with algorithmic mappings to Iconclass codes, rule-based inference for abstract meanings, and three complementary recommenders (hierarchical proximity, IDF-weighted overlap, and Jaccard similarity). Although more engineering is still needed, the evaluation demonstrates the potential of this solution: Iconclass-aware computer vision and recommendation methods can accelerate cataloging and enhance navigation in large heritage repositories. The key insight is to let computer vision propose visible elements and to use symbolic structures (Iconclass hierarchy) to reach meaning.

标签

艺术品分类 内容推荐 Iconclass YOLOv8 计算机视觉

arXiv 分类

cs.DL cs.AI cs.CV cs.IR