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Unsupervised Training for 3D Morphable Model Regression

机译:3D变形模型回归的无监督训练

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We present a method for training a regression network from image pixels to 3D morphable model coordinates using only unlabeled photographs. The training loss is based on features from a facial recognition network, computed on-the-fly by rendering the predicted faces with a differentiable renderer. To make training from features feasible and avoid network fooling effects, we introduce three objectives: a batch distribution loss that encourages the output distribution to match the distribution of the morphable model, a loopback loss that ensures the network can correctly reinterpret its own output, and a multi-view identity loss that compares the features of the predicted 3D face and the input photograph from multiple viewing angles. We train a regression network using these objectives, a set of unlabeled photographs, and the morphable model itself, and demonstrate state-of-the-art results.
机译:我们提出了一种仅使用未标记照片训练从图像像素到3D可变形模型坐标的回归网络的方法。训练损失基于来自面部识别网络的特征,该特征是通过使用可微分的渲染器渲染预测的面部来即时计算的。为了使功能训练变得可行并避免网络愚弄效应,我们引入了三个目标:批量分配损失,鼓励输出分配与可变形模型的分配相匹配;环回损失,确保网络可以正确地重新解释其自身的输出;以及多视图身份损失,它从多个视角比较预测的3D面部和输入照片的特征。我们使用这些目标,一组未标记的照片以及可变形模型本身来训练回归网络,并演示最新的结果。

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