具有对抗性增强的自监督有效分辨率估计

Manuel Kansy, Julian Balletshofer, Jacek Naruniec, Christopher Schroers, Graziana Mignone, M. Gross, Romann M. Weber
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引用次数: 0

摘要

许多现代应用都需要高分辨率、高质量的人脸图像作为训练数据和输出,例如头像生成、人脸超分辨率和人脸交换。高分辨率和高质量这两个术语经常互换使用;然而,这两个概念并不等同,高分辨率并不总是意味着高质量。为了解决这个问题,我们在本文中激发并精确定义了有效解决的概念。因此,我们将信号和信息理论联系起来,并说明为什么基于频率分析或压缩的基线会失败。相反,我们提出了一种新的自监督学习方案来训练神经网络,以便在没有人类标记数据的情况下进行有效的分辨率估计。它利用对抗性增强来弥合合成和真实的、真实的退化之间的领域差距——从而允许我们在领域上进行训练,例如人类面孔,这些领域没有或只有很少的人类标签存在。最后,我们证明了我们的方法在估计真实人脸和生成人脸的清晰度方面优于最先进的图像质量评估方法,尽管在训练期间仅使用未标记的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Supervised Effective Resolution Estimation with Adversarial Augmentations
High-resolution, high-quality images of human faces are desired as training data and output for many modern applications, such as avatar generation, face super-resolution, and face swapping. The terms high-resolution and high-quality are often used interchangeably; however, the two concepts are not equivalent, and high-resolution does not always imply high-quality. To address this, we motivate and precisely define the concept of effective resolution in this paper. We thereby draw connections to signal and information theory and show why baselines based on frequency analysis or compression fail. Instead, we propose a novel self-supervised learning scheme to train a neural network for effective resolution estimation without human-labeled data. It leverages adversarial augmentations to bridge the domain gap between synthetic and real, authentic degradations - thus allowing us to train on domains, such as hu-man faces, for which no or only few human labels exist. Finally, we demonstrate that our method outperforms state-of-the-art image quality assessment methods in estimating the sharpness of real and generated human faces, despite using only unlabeled data during training.
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