In recent years, there has been a significant increase in focus on the interpolation task of computer vision. Despite the tremendous advancement of video interpolation, point cloud interpolation remains insufficiently explored. Meanwhile, the existence of numerous nonlinear large motions in real-world scenarios makes the point cloud interpolation task more challenging. In light of these issues, we present NeuralPCI: an end-to-end 4D spatio-temporal Neural field for 3D Point Cloud Interpolation, which implicitly integrates multi-frame information to handle nonlinear large motions for both indoor and outdoor scenarios. Furthermore, we construct a new multi-frame point cloud interpolation dataset called NL-Drive for large nonlinear motions in autonomous driving scenes to better demonstrate the superiority of our method. Ultimately, NeuralPCI achieves state-of-the-art performance on both DHB (Dynamic Human Bodies) and NL-Drive datasets. Beyond the interpolation task, our method can be naturally extended to point cloud extrapolation, morphing, and auto-labeling, which indicates its substantial potential in other domains. Codes are available at https://github.com/ispc-lab/NeuralPCI.
翻译:近年来,计算机视觉插值任务越来越受到关注。虽然视频插值取得了巨大的进展,但点云插值仍未得到充分的探索。与此同时,真实场景中存在大量的非线性大运动,这使得点云插值任务更具挑战性。考虑到这些问题,我们提出了NeuralPCI:一种端到端的4D时空点云神经场,用于3D点云插值。该方法隐含地集成了多帧信息,以处理室内和室外场景下的非线性大运动。此外,我们构建了一个名为NL-Drive的新的多帧点云插值数据集,用于自动驾驶场景的大非线性运动,以更好地说明我们方法的优越性。最终,NeuralPCI在DHB(Dynamic Human Bodies)和NL-Drive数据集上实现了最新的性能。超越插值任务,我们的方法可以自然地扩展到点云外推、变形和自动标注,这表明了它在其他领域的巨大潜力。代码可从https://github.com/ispc-lab/NeuralPCI获取。