身份相关应用的gan评估

Richard T. Marriott, Safa Madiouni, S. Romdhani, S. Gentric, Liming Chen
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引用次数: 10

摘要

生成对抗网络(GANs)现在能够产生非常高视觉质量的合成人脸图像。在gan本身发展的同时,已经努力开发客观评估合成图像特征的指标,主要集中在视觉质量和图像的多样性上。然而,评估gan的过拟合及其产生新身份的能力的工作很少。在本文中,我们将最先进的生物识别网络应用于各种合成图像数据集,并对其身份相关特征进行彻底评估。我们得出结论,gan确实可以用来生成新的、想象的身份,这意味着图像集的匿名化和用干扰图像增强训练数据集等应用是可行的应用。我们还评估了GAN从其他图像特征中分离身份的能力,并提出了一种新的GAN三重态损失,我们证明了它可以改善这种分离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Assessment of GANs for Identity-related Applications
Generative Adversarial Networks (GANs) are now capable of producing synthetic face images of exceptionally high visual quality. In parallel to the development of GANs themselves, efforts have been made to develop metrics to objectively assess the characteristics of the synthetic images, mainly focusing on visual quality and the variety of images. Little work has been done, however, to assess overfitting of GANs and their ability to generate new identities. In this paper we apply a state of the art biometric network to various datasets of synthetic images and perform a thorough assessment of their identity-related characteristics. We conclude that GANs can indeed be used to generate new, imagined identities meaning that applications such as anonymisation of image sets and augmentation of training datasets with distractor images are viable applications. We also assess the ability of GANs to disentangle identity from other image characteristics and propose a novel GAN triplet loss that we show to improve this disentanglement.
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