Litcius/Paper detail

Domain Adaptive LiDAR Point Cloud Segmentation With 3D Spatial Consistency

Aoran Xiao, Dayan Guan, Xiaoqin Zhang, Shijian Lu

2023IEEE Transactions on Multimedia22 citationsDOI

Abstract

Domain adaptive LiDAR point cloud segmentation aims to learn an effective target segmentation model from labelled source data and unlabelled target data, which has attracted increasing attention in recent years due to the difficulty in point-cloud annotation. It remains a very open research challenge as point clouds of different domains often have clear distribution discrepancies with variations in LiDAR sensor configurations, environmental conditions, occlusions, etc. We design a simple yet effective spatial consistency training framework that can learn superior domain-invariant feature representations from unlabelled target point clouds. The framework exploits three types of spatial consistency, namely, geometric-transform consistency, sparsity consistency, and mixing consistency which capture the semantic invariance of point clouds with respect to viewpoint changes, sparsity changes, and local context changes, respectively. With a concise mean teacher learning strategy, our experiments show that the proposed spatial consistency training outperforms the state-of-the-art significantly and consistently across multiple public benchmarks.

Topics & Concepts

Computer sciencePoint cloudLidarSegmentationConsistency (knowledge bases)Domain (mathematical analysis)Computer visionArtificial intelligenceSpatial analysisImage segmentationCloud computingRemote sensingGeologyMathematicsMathematical analysisOperating system3D Shape Modeling and AnalysisRemote Sensing and LiDAR Applications3D Surveying and Cultural Heritage