Despite the impressive results achieved by many existing Structure from Motion (SfM) approaches, there is still a need to improve the robustness, accuracy, and efficiency on large-scale scenes with many outlier matches and sparse view graphs. In this paper, we propose AdaSfM: a coarse-to-fine adaptive SfM approach that is scalable to large-scale and challenging datasets. Our approach first does a coarse global SfM which improves the reliability of the view graph by leveraging measurements from low-cost sensors such as Inertial Measurement Units (IMUs) and wheel encoders. Subsequently, the view graph is divided into sub-scenes that are refined in parallel by a fine local incremental SfM regularised by the result from the coarse global SfM to improve the camera registration accuracy and alleviate scene drifts. Finally, our approach uses a threshold-adaptive strategy to align all local reconstructions to the coordinate frame of global SfM. Extensive experiments on large-scale benchmark datasets show that our approach achieves state-of-the-art accuracy and efficiency.
翻译:尽管许多现有的运动结构(SfM)方法取得了令人印象深刻的成果,但仍需要提高大型场景的稳健性、准确性和效率,并使用许多外部匹配和稀少的视图图。在本文中,我们建议AdaSfM:一种粗到软的适应性适应性SfM方法,可扩缩到大规模和具有挑战性的数据集。我们的方法首先采用粗粗全球SfM方法,利用从惰性计量单位和轮式编码仪等低成本传感器测量的方法,提高视觉图的可靠性。随后,该视图图被分为子屏幕,同时根据粗度全球SfM的结果进行精细的本地递增 SfM 常规化,以提高摄像器的准确性,缓解场外漂流。最后,我们的方法使用一个临界适应战略,使所有地方的重建与全球SfM协调框架相协调。大规模基准数据集的广泛实验表明,我们的方法达到了最新水平的准确性和效率。