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Unsupervised face Frontalization for pose-invariant face recognition

机译:针对姿势不变的人脸识别的无监督面部正化

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摘要

Face frontalization aims to normalize profile faces to frontal ones for pose-invariant face recognition. Current works have achieved promising results in face frontalization by using deep learning techniques. However, training deep models of face frontalization usually needs paired training data which is undoubtedly costly and time-consuming to acquire. To address this issue, we propose a Pose Conditional CycleGAN (PCCycleGAN) to generate authentic and identity-preserving frontal face images for pose-invariant face recognition. First, through coupling with a pair of inverse mappings, constraining with cycle consistent loss and using conditional pose label to control specific face pose generation, PCCycleGAN can be trained with unpaired samples. Second, pixel-level loss, feature space perception loss, and identity preserving loss are introduced in PCCycleGAN to help synthesize realistic and identity-preserving frontal face images. Extensive experiments on both constrained Multi-PIE dataset and unconstrained LFW and IJB-A datasets are conducted on face synthesis and pose-invariant face recognition. Results demonstrate that the proposed face frontalization model can synthesize frontal faces with high image quality as well as maintaining the identity information in both the constrained and unconstrained environments. In addition, our method enhances the performance of face recognition on the Multi-PIE, LFW and IJB-A datasets and achieves competitive face recognition performance on LFW and IJB-A datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:面部正面化旨在将轮廓面向正面造成姿势的面部识别。目前的作品通过使用深度学习技术,实现了面临的校长结果。然而,培训面部正化的深层模型通常需要配对的培训数据,这无疑是昂贵且耗时的收购。为了解决这个问题,我们提出了一种姿势条件传奇(PCCYCLEGAN),以产生用于构成不变性面部识别的真实和身份保存的正面图像。首先,通过与一对逆映射的耦合,通过循环一致损耗和使用条件姿势标签来控制特定的面部姿势产生,可以用未配对的样品培训Pccyclegan。其次,在PCCYCLEANAN中引入了像素级损失,特征空间感知损失和身份保持损失,以帮助合成现实和身份保存的正面图像。在面部合成和姿势不变的面部识别上进行了对受约束的多派数据集和无约束的LFW和IJB-A数据集的大量实验。结果表明,所提出的面部正化模型可以合成具有高图像质量的正面面,以及维护受约束和无约束环境中的身份信息。此外,我们的方法提高了对多派,LFW和IJB-A数据集的面部识别的性能,并在LFW和IJB-A数据集上实现了竞争性面部识别性能。 (c)2020 Elsevier B.v.保留所有权利。

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