基于分解的投影重建框架分组方法

Yoon-Yong Jung, Yongho Hwang, H. Hong
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引用次数: 3

摘要

与合并方法相比,基于因子分解的方法受漂移和误差积累的影响较小。然而,因式分解方法假定所有的对应关系必须保留在所有的帧中。为了克服这一局限性,我们提出了一种新的基于分解的非校准图像序列投影重建方法。该方法综合考虑帧间匹配点的数量、单应性误差和匹配点在图像中的分布,基于定量度量将完整序列分解为子序列。子序列中的所有投影重建都注册到同一坐标帧中,以完整地描述场景。实验结果表明,该算法可以比合并方法更精确地恢复三维结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Frame grouping measure for factorization-based projective reconstruction
The factorization-based method generally suffers less from drift and error accumulation than the merging. However, the factorization method assumes that all correspondences must remain in all frames. In order to overcome the limitation, we present a new factorization-based projective reconstruction from un-calibrated image sequences. The proposed method breaks the full sequence into sub-sequences based on a quantitative measure considering the number of matching points between frames, the homography error, and the distribution of matching points in the image. All of projective reconstructions in sub-sequences are registered into the same coordinate frame for a complete description of the scene. Experimental results showed our algorithm could recover more precise 3D structure than the merging method.
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