RidgeSfM:基于深度不确定性的鲁棒成对匹配的运动结构

Benjamin Graham, David Novotný
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引用次数: 3

摘要

我们考虑了同时估计大量室内场景图像的密集深度图和相机姿态的问题。而经典的SfM管道依赖于一个两步的方法,其中相机首先估计使用束调整,以便接地随后的多视图立体舞台,我们的姿势和密集重建是一个改变束调整器的直接输出。为此,我们用深度网络以单目方式预测的有限数量的基本“深度平面”的线性组合来参数化每个深度图。使用一组高质量的稀疏关键点匹配,我们优化了深度平面和相机姿势的每帧线性组合,以形成几何上一致的关键点云。虽然我们的束平差只考虑稀疏的关键点,但基平面的推断线性系数立即给出了密集的深度图。RidgeSfM能够集体对齐数百帧,这是它相对于最近内存繁重的深度替代方案的主要优势,后者通常能够对齐不超过10帧。定量比较显示性能优于最先进的大型SfM管道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RidgeSfM: Structure from Motion via Robust Pairwise Matching Under Depth Uncertainty
We consider the problem of simultaneously estimating a dense depth map and camera pose for a large set of images of an indoor scene. While classical SfM pipelines rely on a two-step approach where cameras are first estimated using a bundle adjustment in order to ground the ensuing multi-view stereo stage, both our poses and dense reconstructions are a direct output of an altered bundle adjuster. To this end, we parametrize each depth map with a linear combination of a limited number of basis “depth-planes” predicted in a monocular fashion by a deep net. Using a set of high-quality sparse keypoint matches, we optimize over the per-frame linear combinations of depth planes and camera poses to form a geometrically consistent cloud of keypoints. Although our bundle adjustment only considers sparse keypoints, the inferred linear coefficients of the basis planes immediately give us dense depth maps. RidgeSfM is able to collectively align hundreds of frames, which is its main advantage over recent memory-heavy deep alternatives that are typically capable of aligning no more than 10 frames. Quantitative comparisons reveal performance superior to a state-of-the-art large-scale SfM pipeline.
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