NSM4D: Neural Scene Model Based Online 4D Point Cloud Sequence Understanding
Yuhao Dong, Zhuoyang Zhang, Yunze Liu, Li Yi

TL;DR
NSM4D introduces a neural scene model that enhances online 4D point cloud sequence understanding by effectively modeling long-term history, improving perception accuracy, noise robustness, and scalability in real-time scenarios.
Contribution
The paper proposes NSM4D, a plug-and-play neural scene model that significantly improves online perception for 4D point cloud sequences by factorizing geometry and motion information.
Findings
9.6% accuracy improvement in HOI4D action segmentation
3.4% mIoU improvement in SemanticKITTI segmentation
Robustness to sensor noise and scalability to longer sequences
Abstract
Understanding 4D point cloud sequences online is of significant practical value in various scenarios such as VR/AR, robotics, and autonomous driving. The key goal is to continuously analyze the geometry and dynamics of a 3D scene as unstructured and redundant point cloud sequences arrive. And the main challenge is to effectively model the long-term history while keeping computational costs manageable. To tackle these challenges, we introduce a generic online 4D perception paradigm called NSM4D. NSM4D serves as a plug-and-play strategy that can be adapted to existing 4D backbones, significantly enhancing their online perception capabilities for both indoor and outdoor scenarios. To efficiently capture the redundant 4D history, we propose a neural scene model that factorizes geometry and motion information by constructing geometry tokens separately storing geometry and motion features.…
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Taxonomy
TopicsHuman Pose and Action Recognition · 3D Shape Modeling and Analysis · Advanced Vision and Imaging
MethodsALIGN
