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A Symmetry Prior for Convex Variational 3D Reconstruction

机译:凸变分变分3D重建之前的对称性

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We propose a novel prior for variational 3D reconstruction that favors symmetric solutions when dealing with noisy or incomplete data. We detect symmetries from incomplete data while explicitly handling unexplored areas to allow for plausible scene completions. The set of detected symmetries is then enforced on their respective support domain within a variational reconstruction framework. This formulation also handles multiple symmetries sharing the same support. The proposed approach is able to denoise and complete surface geometry and even hallucinate large scene parts. We demonstrate in several experiments the benefit of harnessing symmetries when regularizing a surface.
机译:我们在分析3D重建之前提出了一种新颖的,可在处理嘈杂或不完整的数据时解决对称解决方案。我们从不完整的数据中检测到对称性,同时明确处理未开发的区域以允许合理的场景完成。然后在变分重建框架内对检测到的对称性的集合在其各自的支持域上强制执行。此配方还处理共享相同支持的多个对称性。所提出的方法能够去噪和完整的表面几何形状,甚至是幻觉大场景部件。我们在几个实验中证明了在规则化表面时利用对称性的益处。

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