Model-Based Deep Portrait Relighting

Frederik David Schreiber, A. Hilsmann, P. Eisert
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Abstract

Like most computer vision problems the relighting of portrait face images is more and more being entirely formulated as a deep learning problem. However, data-driven approaches need a detailed and exhaustive database to work on and the creation of ground truth data is tedious and oftentimes technically complex. At the same time, networks get bigger and deeper. Knowledge about the problem statement, scene structure, and physical laws are often neglected. In this paper, we propose to encompass prior knowledge for relighting directly in the network learning process, adding model-based building blocks to the training. Thereby, we improve the learning speed and effectiveness of the network, thus performing better even with a restricted dataset. We demonstrate through an ablation study that the proposed model-based building blocks improve the network’s training and enhance the generated images compared with the naive approach.
基于模型的深度肖像重照明
像大多数计算机视觉问题一样,人脸图像的重新照明越来越完全被表述为一个深度学习问题。然而,数据驱动的方法需要一个详细和详尽的数据库来工作,并且创建地面真实数据是乏味的,并且通常在技术上很复杂。与此同时,网络变得越来越大,越来越深。关于问题陈述、场景结构和物理定律的知识常常被忽视。在本文中,我们建议在网络学习过程中直接包含先验知识,并在训练中添加基于模型的构建块。因此,我们提高了网络的学习速度和有效性,从而即使在有限的数据集上也能表现得更好。我们通过消融研究证明,与朴素方法相比,提出的基于模型的构建块改善了网络的训练并增强了生成的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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