基于全局和局部约束的不完全轨迹投影重建

H. Ackermann, B. Rosenhahn
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引用次数: 3

摘要

本文讨论了用子空间迭代法重建物体的投影形状和运动。分解式算法的一个先决条件是需要在所有图像中观察到所有特征点,这在真实视频中很难实现。因此,我们解决了考虑缺失特征的估计结构和运动的问题。该算法不需要初始化,并统一处理所有可用数据。计算的解决方案是全局的,因为它不会以增量或分层方式合并部分解决方案。通过局部约束进一步修正因式分解引起的全局代价,使估计规范化和稳定化。它展示了如何在未观测点存在的情况下共同最小化这两个成本。通过数据缺失率高达60%的合成图像序列和真实图像序列,验证了算法的准确性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Projective Reconstruction from Incomplete Trajectories by Global and Local Constraints
The paper deals with projective shape and motion reconstruction by subspace iterations. A prerequisite of factorization-style algorithms is that all feature points need be observed in all images, a condition which is hardly realistic in real videos. We therefore address the problem of estimating structure and motion considering missing features. The proposed algorithm does not require initialization and uniformly handles all available data. The computed solution is global in the sense that it does not merge partial solutions incrementally or hierarchically. The global cost due to the factorization is further amended by local constraints to regularize and stabilize the estimations. It is shown how both costs can be jointly minimized in the presence of unobserved points. By synthetic and real image sequences with up to $60\%$ missing data we demonstrate that our algorithm is accurate and reliable.
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