3D Face Recognition with Contrastive Learning Network on Low-Quality Data

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Author(s)
Jing, Y
Mian, A
Zhang, L
Gao, S
Lu, X
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Magnenat-Thalmann, Nadia

Kim, Jinman

Sheng, Bin

Deng, Zhigang

Thalmann, Daniel

Li, Ping

Date
2025
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Geneva, Switzerland

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Abstract

Face recognition has gained widespread use as a biometric technology. While many deep learning-based 3D face recognition techniques have achieved promising results using high-quality databases, recognizing faces on low-quality face data, often characterized by poses, occlusions, and temporal changes, remains a challenge, especially when captured with low-cost sensors. In this paper, we propose a novel end-to-end dual network using contrastive learning for 3D face recognition on low-quality data. In particular, we construct a pair of contrastive encoders with the MobileNet V2 backbone for contrastive representation learning. Furthermore, we introduce a joint loss function that combines the contrastive loss and the cross-entropy loss to facilitate joint contrastive learning and classification. Experiments show that our approach achieves state-of-the-art performance under different settings.

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Advances in Computer Graphics: 41st Computer Graphics International Conference, CGI 2024, Geneva, Switzerland, July 1–5, 2024, Proceedings, Part I

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15338

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Jing, Y; Mian, A; Zhang, L; Gao, S; Lu, X, 3D Face Recognition with Contrastive Learning Network on Low-Quality Data, Advances in Computer Graphics: 41st Computer Graphics International Conference, CGI 2024, Geneva, Switzerland, July 1–5, 2024, Proceedings, Part I, 2025, 15338, pp. 145-157