Segmentation-of-3D-Point-Cloud
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Fast Segmentation of 3D Point Clouds A Paradigm on LiDAR Data for Autonomous Vehicle Applications
Segmentation of 3D Point Cloud
Introduction
Code for implementation of the paper titled : Fast Segmentation of 3D Point Clouds: A Paradigm on LiDAR Data for Autonomous Vehicle Applications.
Overview of the Repository
In this repo, you'll find :
-
pointclouds
: point clouds dataset. -
paper.pdf
: the paper of Fast Segmentation of 3D Point Clouds. -
gpf.py
: ground plane fitting (GPF) algorithm from 3D lidar scan shot in the street. -
pypcd
: folder for mapping between PointField types and numpy types, extracting PointCloud object from a dataframe, etc.
Getting Started
- Clone repo:
git clone https://github.com/HusseinLezzaik/Segmentation-of-3D-Point-Cloud.git
- Install dependencies:
conda create -n segmentation-point-clouds python=3.7 conda activate segmentation-point-clouds pip install -r requirements.txt
Contact
- Hussein Lezzaik : hussein dot lezzaik at gmail dot com