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UnScene3D: Unsupervised 3D Instance Segmentation for Indoor Scenes

About

3D instance segmentation is fundamental to geometric understanding of the world around us. Existing methods for instance segmentation of 3D scenes rely on supervision from expensive, manual 3D annotations. We propose UnScene3D, the first fully unsupervised 3D learning approach for class-agnostic 3D instance segmentation of indoor scans. UnScene3D first generates pseudo masks by leveraging self-supervised color and geometry features to find potential object regions. We operate on a basis of geometric oversegmentation, enabling efficient representation and learning on high-resolution 3D data. The coarse proposals are then refined through self-training our model on its predictions. Our approach improves over state-of-the-art unsupervised 3D instance segmentation methods by more than 300% Average Precision score, demonstrating effective instance segmentation even in challenging, cluttered 3D scenes.

David Rozenberszki, Or Litany, Angela Dai• 2023

Related benchmarks

TaskDatasetResultRank
3D Instance SegmentationScanNet V2 (val)
Average AP5032.2
195
3D Instance SegmentationS3DIS (Area 5)
mAP@50% IoU40.3
106
3D Instance SegmentationScanNet (val)
mAP@0.2558.5
19
Class-agnostic 3D instance segmentationScanNet V2
AP15.9
8
Class-agnostic 3D instance segmentationS3DIS (test)
AP21.4
7
Class-agnostic 3D instance segmentationScanNet++ (test)
AP9.8
7
Class-agnostic 3D instance segmentationScanNet V2 (val)
AP15.9
7
Instance SegmentationScanNet (train)
AP15.9
6
Instance SegmentationScanNet v2 (1%)
AP @ IoU=0.2543.5
5
Instance SegmentationScanNet v2 (5%)
AP@2563.2
5
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