VISCOUNTH: A Large-scale Multilingual Visual Question Answering Dataset for Cultural Heritage

Author:

Becattini Federico1ORCID,Bongini Pietro1ORCID,Bulla Luana2ORCID,Bimbo Alberto Del1ORCID,Marinucci Ludovica2ORCID,Mongiovì Misael2ORCID,Presutti Valentina3ORCID

Affiliation:

1. University of Florence, Italy

2. Institute of Science and Technology of Cognition, National Research Council, Italy

3. University of Bologna, Italy

Abstract

Visual question answering has recently been settled as a fundamental multi-modal reasoning task of artificial intelligence that allows users to get information about visual content by asking questions in natural language. In the cultural heritage domain, this task can contribute to assisting visitors in museums and cultural sites, thus increasing engagement. However, the development of visual question answering models for cultural heritage is prevented by the lack of suitable large-scale datasets. To meet this demand, we built a large-scale heterogeneous and multilingual (Italian and English) dataset for cultural heritage that comprises approximately 500K Italian cultural assets and 6.5M question-answer pairs. We propose a novel formulation of the task that requires reasoning over both the visual content and an associated natural language description, and present baselines for this task. Results show that the current state of the art is reasonably effective but still far from satisfactory; therefore, further research in this area is recommended. Nonetheless, we also present a holistic baseline to address visual and contextual questions and foster future research on the topic.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture

Reference69 articles.

1. VQA: Visual Question Answering

2. Luigi Asprino, Luana Bulla, Ludovica Marinucci, Misael Mongiovì, and Valentina Presutti. 2021. A large visual question answering dataset for cultural heritage. In Proceedings of the 7th International Conference on Machine Learning, Optimization, and Data Science (LOD’21). 193–197.

3. DBpedia: A Nucleus for a Web of Open Data

4. Zechen Bai, Yuta Nakashima, and Noa Garcia. 2021. Explain me the painting: Multi-topic knowledgeable art description generation. In Proceedings of the IEEE/CVF International Conference on Computer Vision. 5422–5432.

5. Visual question answering: Which investigated applications?

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