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SynFace: Face Recognition with Synthetic Data

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With the recent success of deep neural networks, remarkable progress has been achieved on face recognition. However, collecting large-scale real-world training data for face recognition has turned out to be challenging, especially due to the label noise and privacy issues. Meanwhile, existing face recognition datasets are usually collected from web images, lacking detailed annotations on attributes (e.g., pose and expression), so the influences of different attributes on face recognition have been poorly investigated. In this paper, we address the above-mentioned issues in face recognition using synthetic face images, i.e., SynFace. Specifically, we first explore the performance gap between recent state-of-the-art face recognition models trained with synthetic and real face images. We then analyze the underlying causes behind the performance gap, e.g., the poor intra-class variations and the domain gap between synthetic and real face images. Inspired by this, we devise the SynFace with identity mixup (IM) and domain mixup (DM) to mitigate the above performance gap, demonstrating the great potentials of synthetic data for face recognition. Furthermore, with the controllable face synthesis model, we can easily manage different factors of synthetic face generation, including pose, expression, illumination, the number of identities, and samples per identity. Therefore, we also perform a systematically empirical analysis on synthetic face images to provide some insights on how to effectively utilize synthetic data for face recognition.

Haibo Qiu, Baosheng Yu, Dihong Gong, Zhifeng Li, Wei Liu, Dacheng Tao• 2021

Related benchmarks

TaskDatasetResultRank
Face VerificationLFW
Mean Accuracy91.97
339
Face VerificationAgeDB-30
Accuracy61.63
204
Face VerificationCFP-FP
Accuracy75.03
127
Face VerificationCA-LFW
Accuracy74.73
64
Face VerificationAgeDB
Accuracy61.63
55
Face VerificationLFW, AgeDB, CALFW, CPLFW, CFP-FP (10-fold cross-val)
Average Accuracy74.75
34
Face VerificationCP-LFW
TAR (%)70.43
19
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