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A-CNN: Annularly Convolutional Neural Networks on Point Clouds

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Analyzing the geometric and semantic properties of 3D point clouds through the deep networks is still challenging due to the irregularity and sparsity of samplings of their geometric structures. This paper presents a new method to define and compute convolution directly on 3D point clouds by the proposed annular convolution. This new convolution operator can better capture the local neighborhood geometry of each point by specifying the (regular and dilated) ring-shaped structures and directions in the computation. It can adapt to the geometric variability and scalability at the signal processing level. We apply it to the developed hierarchical neural networks for object classification, part segmentation, and semantic segmentation in large-scale scenes. The extensive experiments and comparisons demonstrate that our approach outperforms the state-of-the-art methods on a variety of standard benchmark datasets (e.g., ModelNet10, ModelNet40, ShapeNet-part, S3DIS, and ScanNet).

Artem Komarichev, Zichun Zhong, Jing Hua• 2019

Related benchmarks

TaskDatasetResultRank
Semantic segmentationS3DIS (Area 5)--
799
Semantic segmentationS3DIS (6-fold)
mIoU (Mean IoU)87.3
315
Part SegmentationShapeNetPart (test)
mIoU (Inst.)85.9
312
3D Object ClassificationModelNet40 (test)
Accuracy92.6
302
3D Point Cloud ClassificationModelNet40 (test)
OA92.6
297
Object ClassificationModelNet40 (test)
Accuracy92.6
180
Shape classificationModelNet40
Accuracy92.6
85
3D Object ClassificationModelNet10 (test)
Mean Class Accuracy95.5
57
Object ClassificationModelNet10 (test)
Accuracy95.5
46
Point Cloud ClassificationModelNet40 (official split)
Accuracy92.6
20
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