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Point Cloud Pre-training

Point cloud data represents 3D shapes as a set of discrete points in 3D space. This kind of data is primarily sourced from 3D scanners, LiDAR systems, and other similar technologies. Point cloud processing has a wide range of applications, such as robotics, autonomous vehicles, and augmented/virtual reality.

Pre-training on point cloud data is similar in spirit to pre-training on images or text. By pre-training a model on a large, diverse dataset, it learns essential features of the data type, which can then be fine-tuned on a smaller, task-specific dataset. This two-step process (pre-training and fine-tuning) often results in better performance, especially when the task-specific dataset is limited in size.

Papers

Showing 1120 of 26 papers

TitleStatusHype
AD-PT: Autonomous Driving Pre-Training with Large-scale Point Cloud DatasetCode0
GeoMAE: Masked Geometric Target Prediction for Self-supervised Point Cloud Pre-TrainingCode1
Joint-MAE: 2D-3D Joint Masked Autoencoders for 3D Point Cloud Pre-training0
PointClustering: Unsupervised Point Cloud Pre-Training Using Transformation Invariance in ClusteringCode1
Ponder: Point Cloud Pre-training via Neural Rendering0
3D Point Cloud Pre-training with Knowledge Distillation from 2D Images0
BEV-MAE: Bird's Eye View Masked Autoencoders for Point Cloud Pre-training in Autonomous Driving ScenariosCode1
Boosting Point-BERT by Multi-choice TokensCode0
ProposalContrast: Unsupervised Pre-training for LiDAR-based 3D Object DetectionCode1
Point-M2AE: Multi-scale Masked Autoencoders for Hierarchical Point Cloud Pre-trainingCode2
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