Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Point Convolutional Neural Networks by Extension Operators

About

This paper presents Point Convolutional Neural Networks (PCNN): a novel framework for applying convolutional neural networks to point clouds. The framework consists of two operators: extension and restriction, mapping point cloud functions to volumetric functions and vise-versa. A point cloud convolution is defined by pull-back of the Euclidean volumetric convolution via an extension-restriction mechanism. The point cloud convolution is computationally efficient, invariant to the order of points in the point cloud, robust to different samplings and varying densities, and translation invariant, that is the same convolution kernel is used at all points. PCNN generalizes image CNNs and allows readily adapting their architectures to the point cloud setting. Evaluation of PCNN on three central point cloud learning benchmarks convincingly outperform competing point cloud learning methods, and the vast majority of methods working with more informative shape representations such as surfaces and/or normals.

Matan Atzmon, Haggai Maron, Yaron Lipman• 2018

Related benchmarks

TaskDatasetResultRank
Semantic segmentationS3DIS (Area 5)
mIOU58.27
799
Part SegmentationShapeNetPart (test)
mIoU (Inst.)85.1
312
3D Object ClassificationModelNet40 (test)
Accuracy92.3
302
3D Point Cloud ClassificationModelNet40 (test)
OA92.3
297
Shape classificationModelNet40 (test)
OA92.3
255
3D Shape ClassificationModelNet40 (test)
Accuracy92.3
227
Part SegmentationShapeNetPart
mIoU (Instance)85.1
198
Object ClassificationModelNet40 (test)
Accuracy92.3
180
3D Object Part SegmentationShapeNet Part (test)
mIoU85.1
114
3D Semantic SegmentationScanNet (test)
mIoU49.8
105
Showing 10 of 30 rows

Other info

Follow for update