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Efficient large-scale photometric reconstruction using Divide-Recon-Fuse 3D Structure from Motion

机译:使用运动分割/融合-3D结构进行高效的大规模光度重建

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We propose an efficient framework for large-scale 3D reconstruction from a large set of photos following the Structure-from-Motion (SfM) paradigm with divide-conquer and fusion. Our main novelty is to ensure commonality from overlaps between image sets corresponding to their reconstructions, which facilitates effective stitching and fusion. Specifically, such commonality is ensured by selecting a set of duplicated images (which are termed anchor images) in adjacent image sets prior to the 3D reconstruction. The anchor images can assist accurate fusion of the 3D point clouds. We describe an efficient RANSAC scheme for pairwise stitching. Our method is intuitively scalable to large site reconstruction via subdivision and fusion following a graph construct. We further describe another RANSAC algorithm to improve loop closure in our anchor image approach. Experimental results on reconstructing a large portion of a university campus demonstrate the efficacy of our method.
机译:我们提出了一种有效的框架,用于从大型照片中按照运动结构(SfM)范式进行大范围的3D重建,包括分割征服和融合。我们的主要新颖之处在于确保图像集之间的重叠(对应于它们的重构)具有共同性,这有助于有效的拼接和融合。具体而言,通过在3D重建之前在相邻图像集中选择一组重复图像(称为锚图像)来确保这种通用性。锚定图像可以帮助3D点云的准确融合。我们描述了一种高效的RANSAC方案,用于成对缝合。我们的方法可以直观地扩展到大型站点的重建,通过细分和融合后的图形构造。我们进一步描述了另一种RANSAC算法,以改善锚图像方法中的闭环效果。关于重建大学校园大部分的实验结果证明了我们方法的有效性。

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