We address rotation averaging (RA) and its application to real-world 3D reconstruction. Local optimisation based approaches are the defacto choice, though they only guarantee a local optimum. Global optimizers ensure global optimality in low noise conditions, but they are inefficient and may easily deviate under the influence of outliers or elevated noise levels. We push the envelope of rotation averaging by leveraging the advantages of global RA method and local RA method. Combined with a fast view graph filtering as preprocessing, the proposed hybrid approach is robust to outliers. We apply the proposed hybrid rotation averaging approach to incremental Structure from Motion (SfM) by adding the resulting global rotations as regularizers to bundle adjustment. Overall, we demonstrate high practicality of the proposed method as bad camera poses are effectively corrected and drift is reduced.
翻译:我们处理的是平均轮换(RA)及其应用于现实世界的3D重建。基于地方优化的方法是实际选择,尽管它们只能保证地方的最佳选择。全球优化在低噪音条件下确保全球最佳化,但它们效率低下,在外部噪音或高噪音水平的影响下很容易偏离。我们利用全球RA方法和地方RA方法的优势,推推下平均轮换的范围。结合在预处理时快速浏览图表过滤,拟议的混合方法对外部线十分有力。我们采用拟议的混合平均轮换方法,从运动(SfM)到递增结构(SfM),将由此产生的全球轮换作为捆绑调整的常规。总体而言,我们证明拟议方法的高度实用性,因为糟糕的摄像器姿势得到有效纠正,漂移减少。