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Papers/NeuralPCI: Spatio-temporal Neural Field for 3D Point Cloud...

NeuralPCI: Spatio-temporal Neural Field for 3D Point Cloud Multi-frame Non-linear Interpolation

Zehan Zheng, Danni Wu, Ruisi Lu, Fan Lu, Guang Chen, Changjun Jiang

2023-03-27CVPR 2023 13D Point Cloud InterpolationAutonomous Driving
PaperPDFCode(official)

Abstract

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.

Results

TaskDatasetMetricValueModel
3D Point Cloud InterpolationNL-DriveCD0.8NeuralPCI
3D Point Cloud InterpolationNL-DriveEMD97.03NeuralPCI
3D Point Cloud InterpolationNL-DriveCD1.06PointINet
3D Point Cloud InterpolationNL-DriveEMD101.12PointINet
3D Point Cloud InterpolationNL-DriveCD1.64PV-RAFT
3D Point Cloud InterpolationNL-DriveEMD140.42PV-RAFT
3D Point Cloud InterpolationNL-DriveCD1.75NSFP
3D Point Cloud InterpolationNL-DriveEMD132.13NSFP
3D Point Cloud InterpolationDHB DatasetCD0.54NeuralPCI
3D Point Cloud InterpolationDHB DatasetEMD3.68NeuralPCI
3D Point Cloud InterpolationDHB DatasetCD0.92PV-RAFT
3D Point Cloud InterpolationDHB DatasetEMD6.14PV-RAFT
3D Point Cloud InterpolationDHB DatasetCD0.96PointINet
3D Point Cloud InterpolationDHB DatasetEMD12.25PointINet
3D Point Cloud InterpolationDHB DatasetCD1.02IDEA-Net
3D Point Cloud InterpolationDHB DatasetEMD12.03IDEA-Net
3D Point Cloud InterpolationDHB DatasetCD1.22NSFP
3D Point Cloud InterpolationDHB DatasetEMD7.81NSFP

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