Discrete-continuous optimization for large-scale structure from motion

David J. Crandall, Andrew Owens, Noah Snavely, Dan Huttenlocher
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引用次数: 57

Abstract

Recent work in structure from motion (SfM) has successfully built 3D models from large unstructured collections of images downloaded from the Internet. Most approaches use incremental algorithms that solve progressively larger bundle adjustment problems. These incremental techniques scale poorly as the number of images grows, and can drift or fall into bad local minima. We present an alternative formulation for SfM based on finding a coarse initial solution using a hybrid discrete-continuous optimization, and then improving that solution using bundle adjustment. The initial optimization step uses a discrete Markov random field (MRF) formulation, coupled with a continuous Levenberg-Marquardt refinement. The formulation naturally incorporates various sources of information about both the cameras and the points, including noisy geotags and vanishing point estimates. We test our method on several large-scale photo collections, including one with measured camera positions, and show that it can produce models that are similar to or better than those produced with incremental bundle adjustment, but more robustly and in a fraction of the time.
大型结构运动离散-连续优化
最近在运动结构(SfM)方面的工作已经成功地从从互联网下载的大量非结构化图像中建立了3D模型。大多数方法使用增量算法来解决逐渐增大的束调整问题。随着图像数量的增长,这些增量技术的可扩展性很差,并且可能会漂移或陷入糟糕的局部最小值。我们提出了一种SfM的替代公式,该公式基于使用混合离散-连续优化找到粗初始解,然后使用束平差改进该解。初始优化步骤使用离散马尔可夫随机场(MRF)公式,加上连续的Levenberg-Marquardt细化。该公式自然地结合了关于相机和点的各种信息来源,包括噪声地理标记和消失点估计。我们在几个大规模的照片集上测试了我们的方法,包括一个测量相机位置的照片集,并表明它可以产生与增量束调整产生的模型相似或更好的模型,但更健壮,而且在一小部分时间内。
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