4.8 Article

SurfaceNet plus : An End-to-end 3D Neural Network for Very Sparse Multi-View Stereopsis

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2020.2996798

关键词

Three-dimensional displays; Cameras; Surface reconstruction; Two dimensional displays; Solid modeling; Geometry; Image reconstruction; Multi-view stereopsis; volumetric MVS; sparse views; occlusion aware; view selection

资金

  1. Natural Science Foundation of China (NSFC) [61722209, 61860206003]
  2. Shenzhen Science and Technology Research and Development Funds [JCYJ20180507183706645, ZDYBH201900000002]

向作者/读者索取更多资源

Researchers investigate sparse-MVS and find that the classical depth-fusion method becomes powerless in cases with larger baseline angles. They introduce SurfaceNet+ as a volumetric solution to address the 'incompleteness' and 'inaccuracy' problems induced by very sparse MVS setups, demonstrating superior performance compared to state-of-the-art methods in terms of precision and recall.
Multi-view stereopsis (MVS) tries to recover the 3D model from 2D images. As the observations become sparser, the significant 3D information loss makes the MVS problem more challenging. Instead of only focusing on densely sampled conditions, we investigate sparse-MVS with large baseline angles since the sparser sensation is more practical and more cost-efficient. By investigating various observation sparsities, we show that the classical depth-fusion pipeline becomes powerless for the case with a larger baseline angle that worsens the photo-consistency check. As another line of the solution, we present SurfaceNet+, a volumetric method to handle the 'incompleteness' and the 'inaccuracy' problems induced by a very sparse MVS setup. Specifically, the former problem is handled by a novel volume-wise view selection approach. It owns superiority in selecting valid views while discarding invalid occluded views by considering the geometric prior. Furthermore, the latter problem is handled via a multi-scale strategy that consequently refines the recovered geometry around the region with the repeating pattern. The experiments demonstrate the tremendous performance gap between SurfaceNet+ and state-of-the-art methods in terms of precision and recall. Under the extreme sparse-MVS settings in two datasets, where existing methods can only return very few points, SurfaceNet+ still works as well as in the dense MVS setting.

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