论文标题
RMS-FLOWNET:大规模点云的高效且强大的多尺度场景流量估计
RMS-FlowNet: Efficient and Robust Multi-Scale Scene Flow Estimation for Large-Scale Point Clouds
论文作者
论文摘要
提出的RMS-FLOWNET是一种基于端到端学习的新型架构,用于准确有效的场景流估计,可以在高密度的点云上运行。对于层次场景流量估计,现有方法取决于昂贵的最远的点采样(FPS)或基于结构的缩放,从而降低了其处理大量点的能力。与这些方法不同,我们将全面监督的体系结构基于多尺度场景流预测的随机抽样(RS)。为此,我们提出了一种新型的流动嵌入设计,可以预测与Rs结合使用的更健壮的场景流动。我们的RMS-Flownet具有高度的精度,比最新的方法提供了更快的预测,并在连续的密集点云上同时有效地工作。我们的全面实验验证了RMS-Flownet在具有不同点云密度不同的已建立的Flaythings3D数据集上的准确性,并验证了我们的设计选择。此外,我们表明我们的模型具有竞争能力,可以在不进行微调的情况下将其推广到Kitti数据集的现实场景。
The proposed RMS-FlowNet is a novel end-to-end learning-based architecture for accurate and efficient scene flow estimation which can operate on point clouds of high density. For hierarchical scene flow estimation, the existing methods depend on either expensive Farthest-Point-Sampling (FPS) or structure-based scaling which decrease their ability to handle a large number of points. Unlike these methods, we base our fully supervised architecture on Random-Sampling (RS) for multiscale scene flow prediction. To this end, we propose a novel flow embedding design which can predict more robust scene flow in conjunction with RS. Exhibiting high accuracy, our RMS-FlowNet provides a faster prediction than state-of-the-art methods and works efficiently on consecutive dense point clouds of more than 250K points at once. Our comprehensive experiments verify the accuracy of RMS-FlowNet on the established FlyingThings3D data set with different point cloud densities and validate our design choices. Additionally, we show that our model presents a competitive ability to generalize towards the real-world scenes of KITTI data set without fine-tuning.