Book Image

Hands-On ROS for Robotics Programming

By : Bernardo Ronquillo Japón
Book Image

Hands-On ROS for Robotics Programming

By: Bernardo Ronquillo Japón

Overview of this book

Connecting a physical robot to a robot simulation using the Robot Operating System (ROS) infrastructure is one of the most common challenges faced by ROS engineers. With this book, you'll learn how to simulate a robot in a virtual environment and achieve desired behavior in equivalent real-world scenarios. This book starts with an introduction to GoPiGo3 and the sensors and actuators with which it is equipped. You'll then work with GoPiGo3's digital twin by creating a 3D model from scratch and running a simulation in ROS using Gazebo. Next, the book will show you how to use GoPiGo3 to build and run an autonomous mobile robot that is aware of its surroundings. Finally, you'll find out how a robot can learn tasks that have not been programmed in the code but are acquired by observing its environment. You'll even cover topics such as deep learning and reinforcement learning. By the end of this robot programming book, you'll be well-versed with the basics of building specific-purpose applications in robotics and developing highly intelligent autonomous robots from scratch.
Table of Contents (19 chapters)
1
Section 1: Physical Robot Assembly and Testing
5
Section 2: Robot Simulation with Gazebo
8
Section 3: Autonomous Navigation Using SLAM
13
Section 4: Adaptive Robot Behavior Using Machine Learning

Deep learning applied to robotics – computer vision

The practical part of this chapter consists of operationally implementing the ML node described earlier. What we represented there as a black box is developed now as a ROS package that you may integrate with the functionalities you discovered in previous chapters:

  • The remote control in Chapter 7, Robot Control and Simulation, for both the virtual robot in Gazebo and the physical GoPiGo3
  • Robot navigation for a virtual robot in Chapter 8, Virtual SLAM and Navigation Using Gazebo, and the physical GoPiGo3 in Chapter 9, SLAM for Robot Navigation

So, we divide this section into two parts:

  • The first section, Object recognition in Gazebo, provides you with the tools to integrate the ML node for image recognition in Gazebo so that, after finishing the practice, you may let your creativity fly to combine object recognition with...