In this paper, we introduce iART: an open Web platform for art-historical research that facilitates the process of comparative vision. The system integrates various machine learning techniques for keyword- and content-based image retrieval as well as category formation via clustering. An intuitive GUI supports users to define queries and explore results. By using a state-of-the-art cross-modal deep learning approach, it is possible to search for concepts that were not previously detected by trained classification models. Art-historical objects from large, openly licensed collections such as Amsterdam Rijksmuseum and Wikidata are made available to users.
翻译:在本文中,我们引入了iART:一个开放的网络平台,用于艺术历史研究,为比较视野进程提供便利。该系统整合了各种基于关键词和内容的图像检索以及通过集群形成分类的机器学习技术。直观的GUI支持用户定义查询和探索结果。通过使用最先进的跨模式深层次学习方法,可以搜索以前未经经过培训的分类模型探测到的概念。来自大片公开许可的收藏品,如阿姆斯特丹·里杰克斯姆森和维基数据,可以提供给用户。