Enriching Image Archives via Facial Recognition
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Published:2023-11-16
Issue:4
Volume:16
Page:1-18
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ISSN:1556-4673
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Container-title:Journal on Computing and Cultural Heritage
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language:en
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Short-container-title:J. Comput. Cult. Herit.
Author:
Milleville Kenzo1ORCID,
Van den Broeck Alec1ORCID,
Vanderperren Nastasia2ORCID,
Vissers Rony2ORCID,
Priem Matthias2ORCID,
Van de Weghe Nico3ORCID,
Verstockt Steven1ORCID
Affiliation:
1. Ghent University—IDLab, Imec, Belgium
2. Meemoo, FlemishInstitute for Archives, Belgium
3. Ghent University—CartoGIS, Belgium
Abstract
The digitization of image archives across the globe has opened up vast collections of libraries, museums, and cultural heritage institutions. These collections provide valuable historical information to the public and researchers. Many image collections have little metadata describing who or what is depicted in a structured format, making it difficult to search for specific persons. This work presents a facial recognition pipeline to enrich these collections by recognizing the persons in each image. A reference dataset of over 6,000 known persons was constructed and facial recognition was performed on a dataset of over 150 thousand images. Detected faces were matched with the known faces using a similarity score on the face embeddings. We developed an interactive labeling tool to efficiently validate the face recognition predictions. A total of 182 thousand detected faces were labeled with this tool. Using a minimum similarity score of 0.5, the face recognition model achieved a precision of 0.936 and identified over 62 thousand persons from the image archives. We show how clustering can be used to identify new persons that were not included in the reference dataset. Furthermore, we highlight the potential of facial recognition to enhance the accessibility of the collections and offer new insights.
Funder
Ghent University, Imec, Meemoo, the Belgian Science Policy Office
Flanders Department of Culture, Youth, and Media
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design,Computer Science Applications,Information Systems,Conservation
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