PF -cpGAN:用于野外人脸识别的侧面到正面耦合GAN

Fariborz Taherkhani, Veeru Talreja, J. Dawson, M. Valenti, N. Nasrabadi
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引用次数: 14

摘要

近年来,由于深度学习的出现,人脸识别取得了非凡的成功。然而,与正面人脸相比,许多深度人脸识别模型在处理侧面人脸方面表现相对较差。性能不佳的主要原因是很难学习对侧面人脸识别有用的大姿态不变深度表示。在本文中,我们假设在深层特征空间中,轮廓面域与正面面域具有逐渐的联系。我们希望利用这种联系,将侧面脸和正面脸投射到一个共同的潜在空间中,并在潜在域中进行验证或检索。我们利用耦合生成对抗网络(cpGAN)结构在潜在的公共嵌入子空间中找到轮廓和正面图像之间的隐藏关系。具体来说,cp-GAN框架由两个基于gan的子网组成,一个专用于正面域,另一个专用于轮廓域。每个子网络都倾向于在公共嵌入特征子空间中找到一个投影,使两个特征域之间的成对相关性最大化。使用CFp、CMU Multi-PIE、IJB-A和IJB-C数据集证明了我们的方法与最先进的方法相比的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PF -cpGAN: Profile to Frontal Coupled GAN for Face Recognition in the Wild
In recent years, due to the emergence of deep learning, face recognition has achieved exceptional success. However, many of these deep face recognition models perform relatively poorly in handling profile faces compared to frontal faces. The major reason for this poor performance is that it is inherently difficult to learn large pose invariant deep representations that are useful for profile face recognition. In this paper, we hypothesize that the profile face domain possesses a gradual connection with the frontal face domain in the deep feature space. We look to exploit this connection by projecting the profile faces and frontal faces into a common latent space and perform verification or retrieval in the latent domain. We leverage a coupled generative adversarial network (cpGAN) structure to find the hidden relationship between the profile and frontal images in a latent common embedding subspace. Specifically, the cp-GAN framework consists of two GAN-based sub-networks, one dedicated to the frontal domain and the other dedicated to the profile domain. Each sub-network tends to find a projection that maximizes the pair-wise correlation between two feature domains in a common embedding feature subspace. The efficacy of our approach compared with the state-of-the-art is demonstrated using the CFp, CMU Multi-PIE, IJB-A, and IJB-C datasets.
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