IROS 2020 papers focusing on point cloud analysis
-
PC-NBV: A Point Cloud Based Deep Network for Efficient Next Best View Planning.
- [Code]
-
Cascaded Non-local Neural Network for Point Cloud Semantic Segmentation.
- [Code]
-
Voxel-Based Representation Learning for Place Recognition Based on 3D Point Clouds.
-
Point Cloud Completion by Learning Shape Priors.
- [Code]
-
Remove, then Revert: Static Point cloud Map Construction using Multiresolution Range Images.
- [Code]
-
Learning Continuous Object Representations from Point Cloud Data.
- [Code]
-
Kinematic Multibody Model Generation of Deformable Linear Objects from Point Clouds.
-
Real-Time Spatio-Temporal LiDAR Point Cloud Compression.
- [Code]
-
GndNet: Fast Ground Plane Estimation and Point Cloud Segmentation for Autonomous Vehicles.
- [Code]
-
End-to-End 3D Point Cloud Learning for Registration Task Using Virtual Correspondences.
-
Real-time detection of broccoli crops in 3D point clouds for autonomous robotic harvesting.
-
Factor Graph based 3D Multi-Object Tracking in Point Clouds.
-
Physical Human-Robot Interaction with Real Active Surfaces using Haptic Rendering on Point Clouds.
-
Seed: A Segmentation-Based Egocentric 3D Point Cloud Descriptor for Loop Closure Detection.
- [Code]
-
A Point Cloud Registration Pipeline using Gaussian Process Regression for Bathymetric SLAM.
-
PBP-Net: Point Projection and Back-Projection Network for 3D Point Cloud Segmentation.
-
Point Cloud Projective Analysis for Part-based Grasp Planning.
-
3D Instance Embedding Learning with a Structure-Aware Loss Function for Point Cloud Segmentation.
-
- [Code]
-
Robust RL-Based Map-less Local Planning: Using 2D Point Clouds as Observations.
-
ECG: Edge-aware Point Cloud Completion with Graph Convolution.
- [Code]
-
- [Code]