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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Linear SFM: A hierarchical approach to solving structure-from-motion problems by decoupling the linear and nonlinear components
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Linear SFM: A hierarchical approach to solving structure-from-motion problems by decoupling the linear and nonlinear components

机译:线性SFM:通过解耦线性和非线性分量来解决运动结构问题的分层方法

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This paper presents a novel hierarchical approach to solving structure-from-motion (SFM) problems. The algorithm begins with small local reconstructions based on nonlinear bundle adjustment (BA). These are then joined in a hierarchical manner using a strategy that requires solving a linear least squares optimization problem followed by a nonlinear transform. The algorithm can handle ordered monocular and stereo image sequences. Two stereo images or three monocular images are adequate for building each initial reconstruction. The bulk of the computation involves solving a linear least squares problem and, therefore, the proposed algorithm avoids three major issues associated with most of the nonlinear optimization algorithms currently used for SFM: the need for a reasonably accurate initial estimate, the need for iterations, and the possibility of being trapped in a local minimum. Also, by summarizing all the original observations into the small local reconstructions with associated information matrices, the proposed Linear SFM manages to preserve all the information contained in the observations. The paper also demonstrates that the proposed problem formulation results in a sparse structure that leads to an efficient numerical implementation. The experimental results using publicly available datasets show that the proposed algorithm yields solutions that are very close to those obtained using a global BA starting with an accurate initial estimate. The C/C++ source code of the proposed algorithm is publicly available at https://github.com/LiangZhaoPKUlmperial/LinearSFM. (C) 2018 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:本文提出了一种新颖的分层方法来解决运动结构(SFM)问题。该算法从基于非线性束调整(BA)的小局部重建开始。然后使用需要解决线性最小二乘最优化问题并随后进行非线性变换的策略,以分层方式将它们组合在一起。该算法可以处理有序的单眼和立体图像序列。两个立体图像或三个单眼图像足以构建每个初始重建。大量的计算都涉及解决线性最小二乘问题,因此,提出的算法避免了与当前用于SFM的大多数非线性优化算法相关的三个主要问题:需要合理准确的初始估算,需要迭代,以及陷入局部最小值的可能性。此外,通过将所有原始观测值汇总到带有相关信息矩阵的小型局部重建中,提出的线性SFM设法保留了观测值中包含的所有信息。本文还证明了所提出的问题表述导致结构稀疏,从而导致有效的数值实现。使用可公开获得的数据集的实验结果表明,所提出的算法产生的解决方案与使用准确初始估计值开始的全局BA获得的解决方案非常接近。拟议算法的C / C ++源代码可从https://github.com/LiangZhaoPKUlmperial/LinearSFM公开获得。 (C)2018国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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