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SREFI: Synthesis of realistic example face images

机译:SREFI:逼真的人脸图像合成

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摘要

In this paper, we propose a novel face synthesis approach that can generate an arbitrarily large number of synthetic images of both real and synthetic identities. Thus a face image dataset can be expanded in terms of the number of identities represented and the number of images per identity using this approach, without the identity-labeling and privacy complications that come from downloading images from the web. To measure the visual fidelity and uniqueness of the synthetic face images and identities, we conducted face matching experiments with both human participants and a CNN pre-trained on a dataset of 2.6M real face images. To evaluate the stability of these synthetic faces, we trained a CNN model with an augmented dataset containing close to 200,000 synthetic faces. We used a snapshot of this trained CNN to recognize extremely challenging frontal (real) face images. Experiments showed training with the augmented faces boosted the face recognition performance of the CNN.
机译:在本文中,我们提出了一种新颖的人脸合成方法,该方法可以生成任意数量的真实和合成身份的合成图像。因此,使用该方法可以根据表示的身份数量和每个身份的图像数量扩展面部图像数据集,而无需从网络下载图像而导致的身份标签和隐私复杂性。为了测量合成人脸图像和身份的视觉保真度和唯一性,我们与人类参与者以及在2.6M真实人脸图像数据集上进行预训练的CNN一起进行了人脸匹配实验。为了评估这些合成人脸的稳定性,我们使用包含近200,000个合成人脸的增强数据集训练了CNN模型。我们使用此经过训练的CNN的快照来识别极具挑战性的正面(真实)面部图像。实验表明,增强脸部训练可以提高CNN的脸部识别性能。

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