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ElasticFace: Elastic Margin Loss for Deep Face Recognition

Boutros, Fadi ; Damer, Naser ; Kirchbuchner, Florian ; Kuijper, Arjan (2022)
ElasticFace: Elastic Margin Loss for Deep Face Recognition.
2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition. New Orleans, USA (19.-24.06.2022)
Konferenzveröffentlichung, Bibliographie

Kurzbeschreibung (Abstract)

Learning discriminative face features plays a major role in building high-performing face recognition models. The recent state-of-the-art face recognition solutions proposed to incorporate a fixed penalty margin on commonly used classification loss function, softmax loss, in the normalized hypersphere to increase the discriminative power of face recognition models, by minimizing the intra-class variation and maximizing the inter-class variation. Marginal penalty softmax losses, such as ArcFace and CosFace, assume that the geodesic distance between and within the different identities can be equally learned using a fixed penalty margin. However, such a learning objective is not realistic for real data with inconsistent inter-and intra-class variation, which might limit the discriminative and generalizability of the face recognition model. In this paper, we relax the fixed penalty margin constrain by proposing elastic penalty margin loss (ElasticFace) that allows flexibility in the push for class separability. The main idea is to utilize random margin values drawn from a normal distribution in each training iteration. This aims at giving the decision boundary chances to extract and retract to allow space for flexible class separability learning. We demonstrate the superiority of our ElasticFace loss over ArcFace and CosFace losses, using the same geometric transformation, on a large set of mainstream benchmarks. From a wider perspective, our ElasticFace has advanced the state-of-the-art face recognition performance on seven out of nine mainstream benchmarks. All training codes, pre-trained models, training logs will be publicly released.

Typ des Eintrags: Konferenzveröffentlichung
Erschienen: 2022
Autor(en): Boutros, Fadi ; Damer, Naser ; Kirchbuchner, Florian ; Kuijper, Arjan
Art des Eintrags: Bibliographie
Titel: ElasticFace: Elastic Margin Loss for Deep Face Recognition
Sprache: Englisch
Publikationsjahr: Juni 2022
Verlag: IEEE
Buchtitel: Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) Workshops
Veranstaltungstitel: 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition
Veranstaltungsort: New Orleans, USA
Veranstaltungsdatum: 19.-24.06.2022
URL / URN: https://openaccess.thecvf.com/content/CVPR2022W/Biometrics/h...
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Kurzbeschreibung (Abstract):

Learning discriminative face features plays a major role in building high-performing face recognition models. The recent state-of-the-art face recognition solutions proposed to incorporate a fixed penalty margin on commonly used classification loss function, softmax loss, in the normalized hypersphere to increase the discriminative power of face recognition models, by minimizing the intra-class variation and maximizing the inter-class variation. Marginal penalty softmax losses, such as ArcFace and CosFace, assume that the geodesic distance between and within the different identities can be equally learned using a fixed penalty margin. However, such a learning objective is not realistic for real data with inconsistent inter-and intra-class variation, which might limit the discriminative and generalizability of the face recognition model. In this paper, we relax the fixed penalty margin constrain by proposing elastic penalty margin loss (ElasticFace) that allows flexibility in the push for class separability. The main idea is to utilize random margin values drawn from a normal distribution in each training iteration. This aims at giving the decision boundary chances to extract and retract to allow space for flexible class separability learning. We demonstrate the superiority of our ElasticFace loss over ArcFace and CosFace losses, using the same geometric transformation, on a large set of mainstream benchmarks. From a wider perspective, our ElasticFace has advanced the state-of-the-art face recognition performance on seven out of nine mainstream benchmarks. All training codes, pre-trained models, training logs will be publicly released.

Freie Schlagworte: Biometrics, Feature representation, Face recognition, Machine learning, Deep learning
Fachbereich(e)/-gebiet(e): 20 Fachbereich Informatik
20 Fachbereich Informatik > Graphisch-Interaktive Systeme
20 Fachbereich Informatik > Mathematisches und angewandtes Visual Computing
Hinterlegungsdatum: 24 Aug 2022 06:57
Letzte Änderung: 23 Nov 2022 14:06
PPN: 501939350
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