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Image-based Building Reconstruction with Manhattan-world Assumption

机译:基于曼哈顿世界假设的基于图像的建筑物重建

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The 3D reconstruction of buildings is a challenging research problem especially for image-based methods due to the absence of textured surfaces and difficulty in detecting high-level architectural structures. In this paper, we present an image-based reconstruction algorithm for efficiently modeling of buildings with the Manhattan-world assumption. The first key component of the algorithm is a clustering of geometric primitives (e.g. stereo points and lines) into sparse planes in Manhattan-world coordinates. The combination of such clustered planes greatly limits the possibility of building models to be reconstructed. In the second stage, we employ the graph-cut minimization to obtain an optimal model based on an energy functional that embeds image consistency, surface smoothness and Manhattanworld constraints. Real world building reconstruction results demonstrate the efficiency of the proposed algorithm in handling large scale data and its robustness against the variety of architectural structures.
机译:建筑物的3D重建是一个具有挑战性的研究问题,尤其是对于基于图像的方法而言,这是因为缺少带纹理的表面并且难以检测高层建筑结构。在本文中,我们提出了一种基于图像的重建算法,可利用曼哈顿世界的假设对建筑物进行有效建模。该算法的第一个关键组成部分是将几何图元(例如,立体点和线)聚集成曼哈顿世界坐标中的稀疏平面。这种群集平面的组合极大地限制了要重建建筑模型的可能性。在第二阶段,我们使用图割最小化来获得基于嵌入图像一致性,表面平滑度和Manhattanworld约束的能量函数的最佳模型。现实世界中的建筑物重建结果证明了该算法在处理大规模数据中的效率及其针对各种建筑结构的鲁棒性。

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