3D dynamic point clouds provide a natural discrete representation of real-world objects or scenes in motion, with a wide range of applications in immersive telepresence, autonomous driving, surveillance, \etc. Nevertheless, dynamic point clouds are often perturbed by noise due to hardware, software or other causes. While a plethora of methods have been proposed for static point cloud denoising, few efforts are made for the denoising of dynamic point clouds, which is quite challenging due to the irregular sampling patterns both spatially and temporally. In this paper, we represent dynamic point clouds naturally on spatial-temporal graphs, and exploit the temporal consistency with respect to the underlying surface (manifold). In particular, we define a manifold-to-manifold distance and its discrete counterpart on graphs to measure the variation-based intrinsic distance between surface patches in the temporal domain, provided that graph operators are discrete counterparts of functionals on Riemannian manifolds. Then, we construct the spatial-temporal graph connectivity between corresponding surface patches based on the temporal distance and between points in adjacent patches in the spatial domain. Leveraging the initial graph representation, we formulate dynamic point cloud denoising as the joint optimization of the desired point cloud and underlying graph representation, regularized by both spatial smoothness and temporal consistency. We reformulate the optimization and present an efficient algorithm. Experimental results show that the proposed method significantly outperforms independent denoising of each frame from state-of-the-art static point cloud denoising approaches, on both Gaussian noise and simulated LiDAR noise.
翻译:3D 动态点云为真实世界物体或动态场景提供了自然离散的动态点云,在静默的远程现场、自主驱动、监视、监视和\etc 中有着广泛的应用。 然而,动态点云往往由于硬件、软件或其他原因的噪音而受静点云分解的杂乱影响。虽然为静点云分解提出了大量的方法,但几乎没有为淡化动态点云作出努力,由于空间和时间的不规则采样模式,这非常具有挑战性。在本文中,我们自然在空间时空图上呈现动态点云层云层,并利用与基础表面表面表面表面表面表面(manform)有关的时间一致性(manform)来进行探索。我们定义了多点至多点的云层云层距离及其离散的对等值,我们从空间空间范围内的相近距离和相近点的相近点处绘制了云层面图的平面图,我们从空间空间空间范围内的相近距离和相近点之间的点上绘制了云层平面结构的平整。我们用平时平的平时平的平的图表表表代表了我们以显示了当前和平时空平的平的平的图像结构结构,我们绘制了平的平的平的平的平的平的平的平的平的平的图。