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Autonomous Mobile Robot developed and programmed in the online course named "Self-Driving and ROS - Learn By Doing! Odometry & Control"

C++ 46.41% Python 41.51% CMake 11.85% Dockerfile 0.24%

self-driving-and-ros-learn-by-doing-odometry-control's Introduction

Self-Driving and ROS - Learn by Doing! Odometry & Control

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Table of Contents

About the Course

This repository contain the material used in the course Self Driving and ROS - Learn by Doing! Odometry & Control that is currently available on the following platforms:

If you are passionate about Self-Driving and you want to make a real robot Autonomously Navigate, then this course is for you! Apart from explaining in details all the functionalities and the logic of ROS, the Robot Operating System, it covers some key concepts of Autonomous Navigation such as

  • Sensor Fusion
  • Kalman Filter
  • Probability Theory
  • Robot Kinematics
  • Odometry
  • Robot Localization
  • Control

Furthermore, all the laboratory classes in which we are going to develop the actual Software of our mobile robot are available both in Pyhton and in C++ to let you the freedom of choosing the programming language you like the most or become proficient in both!

Other Courses

If you find this course interesting and you are passionate about robotics in general (not limited to autonomous mobile robots), then you definitely have to take a look at my outher courses!

Robotics and ROS - Learn by Doing! Manipulators


Cover Manipulators

In this course I'll guid you through the creation of a real robotic arm that you can control with your voice using the Amazon Alexa voice assistant. Some of the concepts that are covered in this course are
  • Gazebo Simulation
  • Robot Kinematics
  • ROS Basics
  • MoveIt!
  • Using Arduino with ROS
  • Interface Alexa with ROS

Looks funny? Check it out on the following platforms:

Getting Started

You can decide whether to build the real robot or just have fun with the simulated one. The course can be followed either way, most opf the lessons and most of the code will work the same in the simulation as in the real robot

Prerequisites

You don't need any prior knowledge of ROS nor of Self-Driving, I'll explain all the concepts as they came out and as they are needed to implement new functionalities to our robot. A basic knowledge of programming, either using C++ or Python is required as this is not a Programming course and so I'll nmot dwell too much on basic Programming concepts.

To prepare your PC you need:

  • Install Ubuntu 20.04 on PC or in Virtual Machine Download the ISO Ubuntu 20.04 for your PC
  • Install ROS Noetic on your Ubuntu 20.04
  • Install ROS missing libraries. Some libraries that are used in this project are not in the standard ROS package. Install them with:
sudo apt-get update && sudo apt-get install -y \
     ros-noetic-ros-controllers \
     ros-noetic-gazebo-ros-control \
     ros-noetic-joint-state-publisher-gui \
     ros-noetic-joy \
     ros-noetic-joy-teleop \
     ros-noetic-turtlesim \
     ros-noetic-robot-localization \
     ros-noetic-actionlib-tools

Usage

To Launch the Simulation of the Robot

  1. Clone the repo
git clone https://github.com/AntoBrandi/Self-Driving-and-ROS-Learn-by-Doing-Odometry-Control.git
  1. Build the ROS workspace
cd ~/Self-Driving-and-ROS-Learn-by-Doing-Odometry-Control/Section11_Sensor-Fusion/bumperbot_ws
catkin_make
catkin_make
  1. Source the ROS Workspace
source devel/setup.bash
  1. Launch the Gazebo simulation
roslaunch bumperbot_description gazebo.launch

Contributing

Contributions are what make the open source community such an amazing place to be learn, inspire, and create. Any contributions you make are greatly appreciated.

  1. Fork the Project
  2. Create your Feature Branch (git checkout -b feature/AmazingFeature)
  3. Commit your Changes (git commit -m 'Add some AmazingFeature')
  4. Push to the Branch (git push origin feature/AmazingFeature)
  5. Open a Pull Request

License

Distributed under the Apache 2.0 License. See LICENSE for more information.

Contact

Antonio Brandi - LinkedIn - [email protected]

My Projects: https://github.com/AntoBrandi

Acknowledgements

self-driving-and-ros-learn-by-doing-odometry-control's People

Contributors

antobrandi avatar

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