Face Normals "In-the-Wild" Using Fully Convolutional Networks

George Trigeorgis, Patrick Snape, Iasonas Kokkinos, S. Zafeiriou
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引用次数: 40

Abstract

In this work we pursue a data-driven approach to the problem of estimating surface normals from a single intensity image, focusing in particular on human faces. We introduce new methods to exploit the currently available facial databases for dataset construction and tailor a deep convolutional neural network to the task of estimating facial surface normals in-the-wild. We train a fully convolutional network that can accurately recover facial normals from images including a challenging variety of expressions and facial poses. We compare against state-of-the-art face Shape-from-Shading and 3D reconstruction techniques and show that the proposed network can recover substantially more accurate and realistic normals. Furthermore, in contrast to other existing face-specific surface recovery methods, we do not require the solving of an explicit alignment step due to the fully convolutional nature of our network.
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使用完全卷积网络“在野外”面对法线
在这项工作中,我们采用数据驱动的方法来解决从单个强度图像中估计表面法线的问题,特别关注人脸。我们引入了新的方法来利用现有的面部数据库来构建数据集,并定制了一个深度卷积神经网络来估计野外面部表面法线。我们训练了一个完全卷积的网络,可以准确地从图像中恢复面部法线,包括具有挑战性的各种表情和面部姿势。我们与最先进的面部形状-从阴影和3D重建技术进行了比较,并表明所提出的网络可以恢复更准确和真实的法线。此外,与其他现有的特定于人脸的表面恢复方法相比,由于我们的网络具有完全卷积的性质,我们不需要求解显式对齐步骤。
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