基于共面直线相交的宽基线图像匹配

Hyunwoo J. Kim, Sukhan Lee
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引用次数: 6

摘要

本文提出了一种基于共面线对交点上下文的宽基线图像匹配新方法,专门用于处理纹理差和/或非平面结构场景。由于视角畸变大,局部区域不符合平面性假设,大间距视图的线匹配具有挑战性。为了克服较大的透视畸变,通过校正共面线对使其正交,将局部区域归一化为规范帧。此外,共面线对相交上下文的三维解释有助于通过根据不同类型的三维非平面结构调整规范框架的兴趣区域来匹配非平面局部区域。与以往的方法相比,该方法在线段端点检测不可靠、线段拓扑或连接点结构较差的情况下提供了高效且鲁棒的宽基线线匹配性能。对比研究和实验结果证明了该方法在各种真实场景下的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wide-baseline image matching based on coplanar line intersections
This paper presents a novel method of wide-baseline image matching based on the intersection context of coplanar line pairs especially designed for dealing with poorly textured and/or non-planar structured scenes. The line matching in widely separated views is challenging because of large perspective distortion and the violation of the planarity assumption in local regions. To overcome the large perspective distortion, the local regions are normalized into the canonical frames by rectifying coplanar line pairs to be orthogonal. Also, the 3D interpretation of the intersection context of the coplanar line pairs helps to match the non-planar local regions by adjusting the region of interest of the canonical frame according to the different types of 3D non-planar structures. Compared to previous approaches, the proposed method offers efficient yet robust wide-baseline line matching performance under unreliable detection of end-points of line segments and poor line topologies or junction structures. Comparison studies and experimental results demonstrate the accuracy of the proposed method for various real world scenes.
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