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3D Line Segment Reconstruction in Structured Scenes via Coplanar Line Segment Clustering

机译:3D线段重建在结构化场景中通过共面线段群集

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This paper presents a new algorithm aiming for 3D Line Segment (LS) reconstruction in structured scenes that are comprised of a set of planes. Due to location imprecision of image LSs, it often produces many erroneous reconstructions when reconstructing 3D LSs by triangulating corresponding LSs from two images. We propose to solve this problem by first recovering space planes and then back-projecting image LSs onto the recovered space planes to get reliable 3D LSs. Given LS matches identified from two images, we estimate a set of planar homo-graphies and use them to cluster the LS matches into groups such that LS matches in each group are related by the same homography induced by a space plane. In each LS match group, the corresponding space plane can be recovered from the 3D LSs obtained by triangulating all the LS correspondences. To reduce the incidence of incorrect LS match grouping, we formulate to solve the LS match grouping problem into solving a multi-label optimization problem. The advantages of the proposed algorithm over others in this area are that it can generate more complete and detailed 3D models of scenes using much fewer images and can recover the space planes where the reconstructed 3D LSs lie, which is beneficial for upper level applications, like scene understanding and building facade extraction.
机译:本文介绍了一种旨在在由一组平面组成的结构化场景中的3D线段(LS)重建的新算法。由于图像LSS的位置不精确,当通过从两个图像进行三维LSS来重建3D LSS时,通常会产生许多错误的重建。我们建议通过首先恢复空间平面,然后将图像LSS恢复到恢复的空间平面上来解决这个问题,以获得可靠的3D LSS。给定从两个图像中识别的LS匹配,我们估计一组平面的同性计,并使用它们将LS匹配群集成组,使得每个组中的LS匹配是由空间平面引起的相同的相同字母相关的。在每个LS匹配组中,可以通过通过三个LS对应关系来从获得的3D LSS恢复相应的空间平面。为了减少不正确的LS匹配分组的发生率,我们制定了解决LS匹配分组问题,以解决多标签优化问题。该区域中所提出的算法的优点是它可以使用更少的图像生成更完整和详细的3D模型,并且可以恢复重建的3D LSS LIE的空间平面,这对上层应用有益,类似场景理解和建筑立面提取。

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