Command Palette
Search for a command to run...
Loic Landrieu; Martin Simonovsky

Abstract
We propose a novel deep learning-based framework to tackle the challenge of semantic segmentation of large-scale point clouds of millions of points. We argue that the organization of 3D point clouds can be efficiently captured by a structure called superpoint graph (SPG), derived from a partition of the scanned scene into geometrically homogeneous elements. SPGs offer a compact yet rich representation of contextual relationships between object parts, which is then exploited by a graph convolutional network. Our framework sets a new state of the art for segmenting outdoor LiDAR scans (+11.9 and +8.8 mIoU points for both Semantic3D test sets), as well as indoor scans (+12.4 mIoU points for the S3DIS dataset).
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| 3d-semantic-segmentation-on-dales | SPG | Model size: 280K Overall Accuracy: 95.5 mIoU: 60.6 |
| 3d-semantic-segmentation-on-semantickitti | SPGraph | test mIoU: 17.4% |
| 3d-semantic-segmentation-on-sensaturban | SPGraph | mIoU: 37.29 |
| semantic-segmentation-on-s3dis | SPG | Mean IoU: 62.1 Number of params: 0.290M Params (M): 0.29 mAcc: 73 oAcc: 85.5 |
| semantic-segmentation-on-s3dis-area5 | SPG | Number of params: 280K mAcc: 66.5 mIoU: 58.04 oAcc: 86.38 |
| semantic-segmentation-on-semantic3d | SPG | mIoU: 73.2% |
| semantic-segmentation-on-semantic3d | SPG | mIoU: 76.2% oAcc: 92.9% |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.