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Deep Disentangled Representations for Volumetric Reconstruction

机译:体积重建的深入解除戒章

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We introduce a convolutional neural network for inferring a compact disentangled graphical description of objects from 2D images that can be used for volumetric reconstruction. The network comprises an encoder and a twin-tailed decoder. The encoder generates a disentangled graphics code. The first decoder generates a volume, and the second decoder reconstructs the input image using a novel training regime that allows the graphics code to learn a separate representation of the 3D object and a description of its lighting and pose conditions. We demonstrate this method by generating volumes and disentangled graphical descriptions from images and videos of faces and chairs.
机译:我们介绍了一种卷积神经网络,用于推断可用于从2D图像的对象的紧凑脱屑图形描述,该图形描述可用于体积重建。该网络包括编码器和双尾解码器。编码器生成脱屑的图形代码。第一解码器产生卷,第二解码器使用新颖的训练制度重建输入图像,该训练制度允许图形代码学习3D对象的单独表示和其照明和姿势条件的描述。我们通过生成从面孔和椅子的图像和视频的卷和解除图形描述来展示该方法。

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