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PeeledHuman: Robust Shape Representation for Textured 3D Human Body Reconstruction

机译:Peeledhuman:纹理3D人体重建的强大形状表示

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We introduce PeeledHuman - a novel shape representation of the human body that is robust to self-occlusions. PeeledHuman encodes the human body as a set of Peeled Depth and RGB maps in 2D, obtained by performing raytracing on the 3D body model and extending each ray beyond its first intersection. This formulation allows us to handle self-occlusions efficiently compared to other representations. Given a monocular RGB image, we learn these Peeled maps in an end-to-end generative adversarial fashion using our novel framework - PeelGAN. We train PeelGAN using a 3D Chamfer loss and other 2D losses to generate multiple depth values per-pixel and a corresponding RGB field per-vertex in a dual-branch setup. In our simple non-parametric solution, the generated Peeled Depth maps are back-projected to 3D space to obtain a complete textured 3D shape. The corresponding RGB maps provide vertex-level texture details. We compare our method with current parametric and non-parametric methods in 3D reconstruction and find that we achieve state-of-the-art-results. We demonstrate the effectiveness of our representation on publicly available BUFF and MonoPerfCap datasets as well as loose clothing data collected by our calibrated multi-Kinect setup.
机译:我们介绍了Peeledhuman - 一种对自我闭塞的人体的新形状表示。 Peeledhuman通过在3D体模型上执行光线跟踪并将其延伸超出其第一个交叉点,将人体作为一组剥离深度和RGB地图编码为2D的一组剥离深度和RGB映射。该配方允许我们与其他表示有效地处理自闭锁。鉴于单眼RGB图像,我们使用我们的小说框架 - Peelgan以端到端的生成对抗性时尚学习这些去皮地图。我们使用3D倒角丢失和其他2D损耗训练Peelgan,以在双分支设置中生成每像素的多个深度值和相应的RGB字段。在我们简单的非参数解中,生成的剥离深度映射被抛回3D空间以获得完整的纹理3D形状。相应的RGB映射提供顶点级纹理详细信息。我们将我们的方法与三维重建中的当前参数和非参数方法进行比较,发现我们实现了最先进的结果。我们展示了我们对公开的Buff和Monoperfop数据集的代表的有效性以及我们校准的多kinect设置收集的松动的服装数据。

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