Remarkable progress has been made in self-supervised monocular depth estimation (SS-MDE) by exploring cross-view consistency, e.g., photometric consistency and 3D point cloud consistency. However, they are very vulnerable to illumination variance, occlusions, texture-less regions, as well as moving objects, making them not robust enough to deal with various scenes. To address this challenge, we study two kinds of robust cross-view consistency in this paper. Firstly, the spatial offset field between adjacent frames is obtained by reconstructing the reference frame from its neighbors via deformable alignment, which is used to align the temporal depth features via a Depth Feature Alignment (DFA) loss. Secondly, the 3D point clouds of each reference frame and its nearby frames are calculated and transformed into voxel space, where the point density in each voxel is calculated and aligned via a Voxel Density Alignment (VDA) loss. In this way, we exploit the temporal coherence in both depth feature space and 3D voxel space for SS-MDE, shifting the "point-to-point" alignment paradigm to the "region-to-region" one. Compared with the photometric consistency loss as well as the rigid point cloud alignment loss, the proposed DFA and VDA losses are more robust owing to the strong representation power of deep features as well as the high tolerance of voxel density to the aforementioned challenges. Experimental results on several outdoor benchmarks show that our method outperforms current state-of-the-art techniques. Extensive ablation study and analysis validate the effectiveness of the proposed losses, especially in challenging scenes. The code and models are available at https://github.com/sunnyHelen/RCVC-depth.
翻译:在自我监督单向深度估算(SS-RC-MDE)方面,通过探索跨视图一致性,例如光度一致性和3D点云值一致性,在自我监督单向深度估算(SS-RC-MDE)方面取得了显著进展。然而,它们很容易受到光化差异、分解、无纹理区域以及移动对象的影响,使得它们不够强大,无法应对各种场景。为了应对这一挑战,我们研究了本文中两种强有力的交叉视图一致性。首先,通过通过可变校正的校正校正,从邻居处重建参照框架的空间偏移。该校正校正校正,用来通过深度功能调整,通过深度功能校正(DFA)校正(DA)校正,将“当前至点”的时深深度特征与时间深度校正(DA)校正值校正值校正值校正(VDA), 将“当前至点”的轨正正正值校正值校正值校正值调整模式转变为“区域”的拟议高度损失。