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MeteorNet: Deep Learning on Dynamic 3D Point Cloud Sequences

About

Understanding dynamic 3D environment is crucial for robotic agents and many other applications. We propose a novel neural network architecture called $MeteorNet$ for learning representations for dynamic 3D point cloud sequences. Different from previous work that adopts a grid-based representation and applies 3D or 4D convolutions, our network directly processes point clouds. We propose two ways to construct spatiotemporal neighborhoods for each point in the point cloud sequence. Information from these neighborhoods is aggregated to learn features per point. We benchmark our network on a variety of 3D recognition tasks including action recognition, semantic segmentation and scene flow estimation. MeteorNet shows stronger performance than previous grid-based methods while achieving state-of-the-art performance on Synthia. MeteorNet also outperforms previous baseline methods that are able to process at most two consecutive point clouds. To the best of our knowledge, this is the first work on deep learning for dynamic raw point cloud sequences.

Xingyu Liu, Mengyuan Yan, Jeannette Bohg• 2019

Related benchmarks

TaskDatasetResultRank
Action RecognitionMSRAction3D
Accuracy88.5
123
Scene Flow EstimationKITTI
EPE (m)0.251
34
Semantic segmentationSynthia 4D (test)
mIoU81.8
26
Scene Flow EstimationFlyingThings3D
EPE (m)0.209
11
3D Part Instance SegmentationSAPIEN single point cloud frames (test)
mIoU45.7
10
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