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Mesoscopic Facial Geometry Inference Using Deep Neural Networks

机译:使用深神经网络的介观面部几何学推断

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We present a learning-based approach for synthesizing facial geometry at medium and fine scales from diffusely-lit facial texture maps. When applied to an image sequence, the synthesized detail is temporally coherent. Unlike current state-of-the-art methods [17, 5], which assume "dark is deep", our model is trained with measured facial detail collected using polarized gradient illumination in a Light Stage [20]. This enables us to produce plausible facial detail across the entire face, including where previous approaches may incorrectly interpret dark features as concavities such as at moles, hair stubble, and occluded pores. Instead of directly inferring 3D geometry, we propose to encode fine details in high-resolution displacement maps which are learned through a hybrid network adopting the state-of-the-art image-to-image translation network [29] and super resolution network [43]. To effectively capture geometric detail at both mid- and high frequencies, we factorize the learning into two separate sub-networks, enabling the full range of facial detail to be modeled. Results from our learning-based approach compare favorably with a high-quality active facial scanhening technique, and require only a single passive lighting condition without a complex scanning setup.
机译:我们介绍了一种基于学习的方法,用于在漫射的面部纹理地图中合成培养基和精细鳞片的面部几何形状。当应用于图像序列时,合成的细节在时间上连贯。与当前的最先进方法[17,5]不同,假设“暗深度”,我们的模型培训,测量的面部细节在光级中使用偏振梯度照明收集的测量面部细节[20]。这使我们能够在整个面上产生合理的面部细节,包括先前的方法可能错误地将黑暗特征解释为诸如摩尔,发茬和闭塞孔的凹陷。我们提出通过采用现有技术到图像转换网络[29]和超分辨率网络的混合网络来编码高分辨率位移图中的精细细节来编码精细细节。 43]。为了在中高频率和高频上有效地捕获几何细节,我们将学习分解为两个单独的子网,从而实现要建模的全系列面部细节。我们基于学习的方法的结果与高质量的有效面部扫描技术有利地比较,并且只需要单一的无源照明条件而无需复杂的扫描设置。

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