Ji Mengqi, Zhang Jinzhi, Dai Qionghai, Fang Lu
IEEE Trans Pattern Anal Mach Intell. 2021 Nov;43(11):4078-4093. doi: 10.1109/TPAMI.2020.2996798. Epub 2021 Oct 1.
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.
多视图立体视觉(MVS)试图从二维图像中恢复三维模型。随着观测变得更加稀疏,显著的三维信息丢失使得MVS问题更具挑战性。我们不再只关注密集采样条件,而是研究具有大基线角度的稀疏MVS,因为更稀疏的感知更具实用性且成本效益更高。通过研究各种观测稀疏性,我们表明,对于基线角度较大的情况,经典的深度融合流程会失效,这会使光度一致性检查恶化。作为另一种解决方案,我们提出了SurfaceNet+,这是一种体素方法,用于处理由非常稀疏的MVS设置引起的“不完整性”和“不准确”问题。具体而言,前一个问题通过一种新颖的逐体素视图选择方法来处理。通过考虑几何先验,它在选择有效视图同时丢弃无效遮挡视图方面具有优势。此外,后一个问题通过多尺度策略来处理,该策略进而在具有重复图案的区域周围细化恢复的几何形状。实验证明了SurfaceNet+与现有方法在精度和召回率方面存在巨大的性能差距。在两个数据集中的极端稀疏MVS设置下,现有方法只能返回很少的点,而SurfaceNet+在这种情况下仍能像在密集MVS设置中一样有效工作。