Better Patch Stitching for Parametric Surface Reconstruction

Zhantao Deng, Jan Bednarík, M. Salzmann, P. Fua
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引用次数: 21

Abstract

Recently, parametric mappings have emerged as highly effective surface representations, yielding low reconstruction error. In particular, the latest works represent the target shape as an atlas of multiple mappings, which can closely encode object parts. Atlas representations, however, suffer from one major drawback: The individual mappings are not guaranteed to be consistent, which results in holes in the reconstructed shape or in jagged surface areas.We introduce an approach that explicitly encourages global consistency of the local mappings. To this end, we introduce two novel loss terms. The first term exploits the surface normals and requires that they remain locally consistent when estimated within and across the individual mappings. The second term further encourages better spatial configuration of the mappings by minimizing novel stitching error. We show on standard benchmarks that the use of normal consistency requirement outperforms the baselines quantitatively while enforcing better stitching leads to much better visual quality of the reconstructed objects as compared to the state-of-the-art.
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面向参数曲面重构的更好的补丁拼接方法
近年来,参数映射作为一种高效的曲面表示形式出现,其重构误差较低。特别是,最新的作品将目标形状表示为多个映射的地图集,可以对对象部分进行紧密编码。然而,Atlas表示有一个主要缺点:不能保证单个映射是一致的,这会导致重建形状中出现孔洞或表面区域参差不齐。我们引入了一种明确鼓励局部映射的全局一致性的方法。为此,我们引入了两个新的损失术语。第一项利用表面法线,并要求它们在单个映射内部和跨映射估计时保持局部一致。第二项通过最小化新的拼接错误进一步鼓励映射的更好的空间配置。我们在标准基准测试中表明,使用正常一致性要求在定量上优于基线,同时强制更好的拼接导致重建对象的视觉质量比最先进的要好得多。
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