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Large-Scale Semantic 3D Reconstruction: An Adaptive Multi-resolution Model for Multi-class Volumetric Labeling

机译:大规模语义3D重构:用于多类体积标注的自适应多分辨率模型

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We propose an adaptive multi-resolution formulation of semantic 3D reconstruction. Given a set of images of a scene, semantic 3D reconstruction aims to densely reconstruct both the 3D shape of the scene and a segmentation into semantic object classes. Jointly reasoning about shape and class allows one to take into account class-specific shape priors (e.g., building walls should be smooth and vertical, and vice versa smooth, vertical surfaces are likely to be building walls), leading to improved reconstruction results. So far, semantic 3D reconstruction methods have been limited to small scenes and low resolution, because of their large memory footprint and computational cost. To scale them up to large scenes, we propose a hierarchical scheme which refines the reconstruction only in regions that are likely to contain a surface, exploiting the fact that both high spatial resolution and high numerical precision are only required in those regions. Our scheme amounts to solving a sequence of convex optimizations while progressively removing constraints, in such a way that the energy, in each iteration, is the tightest possible approximation of the underlying energy at full resolution. In our experiments the method saves up to 98% memory and 95% computation time, without any loss of accuracy.
机译:我们提出了一种语义3D重建的自适应多分辨率公式。给定一组场景图像,语义3D重建旨在密集地重建场景的3D形状和将其分割成语义对象类。对形状和类别的共同推理使人们可以考虑特定于类别的形状先验(例如,建筑物的墙壁应该是光滑且垂直的,反之亦然,光滑的垂直表面很可能是建筑物的墙壁),从而改善了重建结果。到目前为止,由于语义3D重建方法的内存占用量大且计算量大,因此仅限于小场景和低分辨率。为了将它们放大到较大的场景,我们提出了一种分级方案,该方案仅在可能包含表面的区域中优化了重建,同时利用了仅在那些区域中既需要高空间分辨率又需要高数值精度的事实。我们的方案相当于解决一系列凸优化问题,同时逐步消除约束,以这种方式,使得每次迭代中的能量都是全分辨率下基础能量的最严格的近似值。在我们的实验中,该方法最多可节省98%的内存和95%的计算时间,而不会损失任何准确性。

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