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A neural network for recovering 3D shape from erroneous and few depth maps of shaded images

机译:用于从阴影图像的错误和很少深度图中恢复3D形状的神经网络

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摘要

In this paper, we present a new neural network (NN) for three-dimensional (3D) shape reconstruction. This NN provides an analytic mapping of an initial 3D polyhedral model into its projection depth images. Through this analytic mapping, the NN can analytically refine vertices position of the model using error back-propagation learning. This learning is based on shape-from-shading (SFS) depth maps taken from multiple views. The depth maps are obtained by Tsai-Shah SFS algorithm. They are considered as partial 3D shapes of the object to be reconstructed. The task is to reconstruct an accurate and complete representation of a given object relying only on a limited number of views and erroneous SFS depth maps. Through hierarchical reconstruction and annealing reinforcement strategies, our reconstruction system gives more exact and stable results. In addition, it corrects and smoothly fuses the erroneous SFS depth maps.
机译:在本文中,我们提出了一种用于三维(3D)形状重建的新神经网络(NN)。该NN提供了一个初始3D多面体模型到其投影深度图像的解析映射。通过这种解析映射,NN可以使用误差反向传播学习来分析地精炼模型的顶点位置。此学习基于从多个视图获取的阴影形状(SFS)深度图。深度图是通过Tsai-Shah SFS算法获得的。它们被视为要重建对象的部分3D形状。任务是仅依靠有限数量的视图和错误的SFS深度图来重建给定对象的准确和完整的表示形式。通过分层重建和退火强化策略,我们的重建系统可提供更精确和稳定的结果。此外,它可以校正并平滑融合错误的SFS深度图。

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