重访PatchMatch多视点立体城市三维重建

M. Orsingher, P. Zani, P. Medici, M. Bertozzi
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引用次数: 4

摘要

本文提出了一种基于PatchMatch Multi-View Stereo (MVS)的基于图像的城市场景三维重建的完整流水线。首先将输入图像输入到现成的视觉SLAM系统中,提取相机姿态和稀疏关键点,用于初始化PatchMatch优化。然后,在多尺度框架中迭代计算像素深度和法线,该框架采用新颖的深度-法线一致性损失项和全局细化算法来平衡PatchMatch固有的局部性。最后,通过在三维空间中反向投影多视图一致估计生成大规模点云。该方法在KITTI数据集上对经典MVS算法和单目深度网络进行了仔细评估,显示了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting PatchMatch Multi-View Stereo for Urban 3D Reconstruction
In this paper, a complete pipeline for image-based 3D reconstruction of urban scenarios is proposed, based on PatchMatch Multi-View Stereo (MVS). Input images are firstly fed into an off-the-shelf visual SLAM system to extract camera poses and sparse keypoints, which are used to initialize PatchMatch optimization. Then, pixelwise depths and normals are iteratively computed in a multi-scale framework with a novel depth-normal consistency loss term and a global refinement algorithm to balance the inherently local nature of PatchMatch. Finally, a large-scale point cloud is generated by back-projecting multi-view consistent estimates in 3D. The proposed approach is carefully evaluated against both classical MVS algorithms and monocular depth networks on the KITTI dataset, showing state of the art performances.
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