OCFR 2022: Competition on Occluded Face Recognition From Synthetically
Generated Structure-Aware Occlusions
- URL: http://arxiv.org/abs/2208.02760v1
- Date: Thu, 4 Aug 2022 16:39:08 GMT
- Title: OCFR 2022: Competition on Occluded Face Recognition From Synthetically
Generated Structure-Aware Occlusions
- Authors: Pedro C. Neto, Fadi Boutros, Joao Ribeiro Pinto, Naser Damer, Ana F.
Sequeira, Jaime S. Cardoso, Messaoud Bengherabi, Abderaouf Bousnat, Sana
Boucheta, Nesrine Hebbadj, Bahia Yahya-Zoubir, Mustafa Ekrem Erak{\i}n,
U\u{g}ur Demir, Haz{\i}m Kemal Ekenel, Pedro Beber de Queiroz Vidal, David
Menotti
- Abstract summary: This work summarizes the IJCB Occluded Face Recognition Competition 2022 (IJCB-OCFR-2022) embraced by the 2022 International Joint Conference on Biometrics (IJCB 2022)
The competition was held to address the challenge of face recognition in the presence of severe face occlusions.
A major output of this competition is a challenging, realistic, and diverse, and publicly available occluded face recognition benchmark with well defined evaluation protocols.
- Score: 11.360543538677916
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This work summarizes the IJCB Occluded Face Recognition Competition 2022
(IJCB-OCFR-2022) embraced by the 2022 International Joint Conference on
Biometrics (IJCB 2022). OCFR-2022 attracted a total of 3 participating teams,
from academia. Eventually, six valid submissions were submitted and then
evaluated by the organizers. The competition was held to address the challenge
of face recognition in the presence of severe face occlusions. The participants
were free to use any training data and the testing data was built by the
organisers by synthetically occluding parts of the face images using a
well-known dataset. The submitted solutions presented innovations and performed
very competitively with the considered baseline. A major output of this
competition is a challenging, realistic, and diverse, and publicly available
occluded face recognition benchmark with well defined evaluation protocols.
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