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3 months ago

CLOUDSPAM: Contrastive Learning On Unlabeled Data for Segmentation and Pre-Training Using Aggregated Point Clouds and MoCo

{and Sylvie Daniel Philippe Giguère Olivier Stocker Reza Mahmoudi Kouhi}

Abstract

SegContrast paved the way for contrastive learning on outdoor point clouds. Its original formulation targeted individual scans in applications like autonomous driving and object detection. However, mobile mapping purposes such as digital twin cities and urban planning require large-scale dense datasets to capture the full complexity and diversity present in outdoor environments. In this paper, the SegContrast method is revisited and adapted to overcome its limitations associated with mobile mapping datasets, namely the scarcity of contrastive pairs and memory constraints. To overcome the scarcity of contrastive pairs, we propose the merging of heterogeneous datasets. However, this merging is not a straightforward procedure due to the variety of size and number of points in the point clouds of these datasets. Therefore, a data augmentation approach is designed to create a vast number of segments while optimizing the size of the point cloud samples to the allocated memory. This methodology, called CLOUDSPAM, guarantees the performance of the self-supervised model for both small- and large-scale mobile mapping point clouds. Overall, the results demonstrate the benefits of utilizing datasets with a wide range of densities and class diversity. CLOUDSPAM matched the state of the art on the KITTI-360 dataset, with a 63.6% mIoU, and came in second place on the Toronto-3D dataset. Finally, CLOUDSPAM achieved competitive results against its fully supervised counterpart with only 10% of labeled data.

Benchmarks

BenchmarkMethodologyMetrics
3d-semantic-segmentation-on-kitti-360CLOUDSPAM
Model size: 37.9M
miou Val: 63.6
3d-semantic-segmentation-on-kitti-360DA-supervised
Model size: 37.9M
miou Val: 64.1
lidar-semantic-segmentation-on-paris-lille-3dDA-supervised
mIOU: 0.638
lidar-semantic-segmentation-on-paris-lille-3dCLOUDSPAM
mIOU: 0.738
semantic-segmentation-on-toronto-3d-l002CLOUDSPAM
mIoU: 71.8
semantic-segmentation-on-toronto-3d-l002DA-supervised
mIoU: 69.3

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CLOUDSPAM: Contrastive Learning On Unlabeled Data for Segmentation and Pre-Training Using Aggregated Point Clouds and MoCo | Papers | HyperAI