Bernhart, C., & Kampel, M. (2022). AI Based Actors Identification with High Intra-Class Variations. In Proc. of the International Conference on Electrical, Computer, Communications and Mechatronics Engineering (ICECCME 2022). ICECCME 2022, Male, Maldives.
Proc. of the International Conference on Electrical, Computer, Communications and Mechatronics Engineering (ICECCME 2022)
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Date (published):
2022
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Event name:
ICECCME 2022
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Event date:
16-Nov-2022 - 18-Nov-2022
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Event place:
Male, Maldives
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Number of Pages:
7
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Peer reviewed:
Yes
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Keywords:
Actor Identification; deep learning; face recognition; face detection; historical images collection; high intra-class variations
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Abstract:
While deep learning based face recognition sur-
passes human performance in constrained settings, it still strug-
gles to achieve similar results applied in completely unconstrained
settings. This paper explores the effectiveness of state-of-the-art
face recognition models in the specific case of identifying actors
in a historical photography collection of a Theatre Museum.
Actors can be pictured at different angles and poses, at a
different age, with masks and costumes leading to strong intra-
class variations. In addition, images might show signs of decay
due to their historical nature, further increasing the difficulty for
a face recognition model to make correct predictions. This paper
shows that ElasticFace, a face recognition model trained using
a novel learning loss strategy, achieves 79.6% accuracy on the
museum’s photo database. Based on those outcomes, deploying
face recognition to analyse historical image collections delivers
valuable results for historians.
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Research Areas:
Visual Computing and Human-Centered Technology: 100%