3D Point Cloud Feature Extraction Tutorial for Interactive Python App Development

Описание к видео 3D Point Cloud Feature Extraction Tutorial for Interactive Python App Development

This tutorial is for Python enthusiasts and 3D Innovators! We dive into the exciting world of 3D LiDAR point cloud feature extraction using Python. If you're interested in creating interactive Python Apps to handle 3D LiDAR data, then this video is for you! We'll be covering everything from Environment Setup to feature extraction and its base components, so whether you're a beginner or an experienced Python programmer, there's something here for you. Grab your favorite beverage ☕, and let's get started!

I go through 6 phases that follow the different chapters.

Download the LiDAR dataset used: https://drive.google.com/drive/folder...

🍿 NEXT STEPS:
Code a 3D Point Cloud Segmentation Solution with Python:    • 3D Point Cloud Segmentation and Shape...  
Finish the 3D Tutorial Series: https://learngeodata.eu/3d-tutorials/
Dive in Expert articles:   / florentpoux  
Become a 3D Data Science Expert: https://learngeodata.eu

🙋 FOLLOW ME
Linkedin:   / florent-poux-point-cloud  
Github: https://github.com/florentPoux
Research: https://scholar.google.com/citations?...

WHO AM I?
If we haven’t yet before - Hey 👋 I’m Florent, a professor-turned-entrepreneur, and I’ve somehow become the world’s most-followed 3D expert. Through my videos here on this channel and my writing, I share evidence-based strategies and tools to help you be better coders and 3D innovators.

📄 CHAPTERS
[00:00:00]: Introduction: LiDAR Point Cloud Vectorization
[00:03:09]: Download the 3D LiDAR Dataset
[00:04:25]: 3D Environment Setup
[00:06:30]: 3D Data I/O and Fundamentals (PyVista)
[00:10:55]: 3D Data Structure Creation
[00:11:11]: kD-tree for 3D Point Clouds Explained
[00:18:27]: PCA (Principal Component Analysis) for 3D Explained
[00:20:40]: Point Cloud Feature Extraction with PCA
[00:27:54]: Feature Extraction: Neighborhood Definition
[00:30:21]: Relative Feature Extraction
[00:32:00]: Conclusion on 3D Point Cloud Feature Extraction

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