Publication | Closed Access
HybridCR: Weakly-Supervised 3D Point Cloud Semantic Segmentation via Hybrid Contrastive Regularization
89
Citations
28
References
2022
Year
Huge Labeling CostEngineeringMachine LearningPoint Cloud ProcessingPoint Cloud3D Computer VisionImage AnalysisData SciencePattern RecognitionWeakly-supervised 3DMachine VisionDeep LearningEmploy Contrastive Regularization3D Object RecognitionComputer VisionScene UnderstandingScene ModelingHybrid Contrastive RegularizationSemantic Similarity
To address the huge labeling cost in large-scale point cloud semantic segmentation, we propose a novel hybrid contrastive regularization (HybridCR) framework in weakly-supervised setting, which obtains competitive performance compared to its fully-supervised counterpart. Specifically, HybridCR is the first framework to leverage both point consistency and employ contrastive regularization with pseudo labeling in an end-to-end manner. Fundamentally, HybridCR explicitly and effectively considers the semantic similarity between local neighboring points and global characteristics of 3D classes. We further design a dynamic point cloud augmentor to generate diversity and robust sample views, whose transformation parameter is jointly optimized with model training. Through extensive experiments, HybridCR achieves significant performance improvement against the SOTA methods on both indoor and outdoor datasets, e.g., S3DIS, ScanNet-V2, Semantic3D, and SemanticKITTI.
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