Multimodal Search on Iconclass using Vision-Language Pre-Trained Models

June 23, 2023 Β· Declared Dead Β· πŸ› ACM/IEEE Joint Conference on Digital Libraries

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Authors Cristian Santini, Etienne Posthumus, Mary Ann Tan, Oleksandra Bruns, Tabea Tietz, Harald Sack arXiv ID 2306.16529 Category cs.IR: Information Retrieval Cross-listed cs.AI, cs.DL Citations 1 Venue ACM/IEEE Joint Conference on Digital Libraries Last Checked 4 months ago
Abstract
Terminology sources, such as controlled vocabularies, thesauri and classification systems, play a key role in digitizing cultural heritage. However, Information Retrieval (IR) systems that allow to query and explore these lexical resources often lack an adequate representation of the semantics behind the user's search, which can be conveyed through multiple expression modalities (e.g., images, keywords or textual descriptions). This paper presents the implementation of a new search engine for one of the most widely used iconography classification system, Iconclass. The novelty of this system is the use of a pre-trained vision-language model, namely CLIP, to retrieve and explore Iconclass concepts using visual or textual queries.
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