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Visual SLAM using an RBG Camera equipped on a Autonomous Vehicle

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Visual SLAM

Introduction

Code for implementation of Visual SLAM using data from an RBG Camera equipped on a Autonomous Vehicle using Eight Point Algorithm for the 3D Point Clouds data.

Overview of the Repository

In this repo, you'll find :

  • Kitti: famous kitti dataset.
  • hartley1997.pdf: paper describing Eight Point Algorithm for 3D Point Clouds data.
  • motion2D2D.py: motion estimation from 2 frames in a monocular setup.
  • draw.py: modified version of opencv DrawMatches to recover randomly generated colors.

Getting Started

  1. Clone repo: git clone https://github.com/HusseinLezzaik/Visual-SLAM.git
  2. Install dependencies:
    conda create -n visual-slam python=3.7
    conda activate visual-slam
    pip install -r requirements.txt
    
  3. Run motion2D2D.py

And you're good to go!

Contact

  • Hussein Lezzaik : hussein dot lezzaik at gmail dot com

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Visual SLAM using an RBG Camera equipped on a Autonomous Vehicle

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