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ROS Programming: Building Powerful Robots

You're reading from   ROS Programming: Building Powerful Robots Design, build and simulate complex robots using the Robot Operating System

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Product type Course
Published in Mar 2018
Publisher Packt
ISBN-13 9781788627436
Length
Edition 1st Edition
Languages
Tools
Concepts
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Authors (5):
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Anil Mahtani Anil Mahtani
Author Profile Icon Anil Mahtani
Anil Mahtani
Aaron Martinez Aaron Martinez
Author Profile Icon Aaron Martinez
Aaron Martinez
Lentin Joseph Lentin Joseph
Author Profile Icon Lentin Joseph
Lentin Joseph
Enrique Fernandez Perdomo Enrique Fernandez Perdomo
Author Profile Icon Enrique Fernandez Perdomo
Enrique Fernandez Perdomo
Luis S√°nchez Luis S√°nchez
Author Profile Icon Luis S√°nchez
Luis S√°nchez
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Toc

Table of Contents (37) Chapters Close

Title page
Copyright and Credits
Packt Upsell
Preface
1. Getting Started with ROS FREE CHAPTER 2. ROS Architecture and Concepts 3. Visualization and Debugging Tools 4. The Navigation Stack - Robot Setups 5. The Navigation Stack - Beyond Setups 6. Manipulation with MoveIt! 7. Using Sensors and Actuators with ROS 8. Computer Vision 9. Point Clouds 10. Working with 3D Robot Modeling in ROS 11. Simulating Robots Using ROS and Gazebo 12. Working with Pluginlib, Nodelets, and Gazebo Plugins 13. Writing ROS Controllers and Visualization Plugins 14. Interfacing I/O Boards, Sensors, and Actuators to ROS 15. Programming Vision Sensors using ROS, Open-CV, and PCL 16. Building and Interfacing Differential Drive Mobile Robot Hardware in ROS 17. Exploring the Advanced Capabilities of ROS-MoveIt! 18. ROS for Industrial Robots 19. Troubleshooting and Best Practices in ROS 20. Face Detection and Tracking Using ROS, OpenCV and Dynamixel Servos 21. Building a Siri-Like Chatbot in ROS 22. Controlling Embedded Boards Using ROS 23. Teleoperate a Robot Using Hand Gestures 24. Object Detection and Recognition 25. Deep Learning Using ROS and TensorFlow 26. ROS on MATLAB and Android 27. Building an Autonomous Mobile Robot 28. Creating a Self-Driving Car Using ROS 29. Teleoperating a Robot Using a VR Headset and Leap Motion 30. Controlling Your Robots over the Web 1. Bibliography
2. Other Books You May Enjoy Index

Adaptive Monte Carlo Localization


In this chapter, we are using the Adaptive Monte Carlo Localization (AMCL) algorithm for the localization. The AMCL algorithm is a probabilistic localization system for a robot moving in 2D. This system implements the adaptive Monte Carlo Localization approach, which uses a particle filter to track the pose of a robot against a known map.

The AMCL algorithm has many configuration options that will affect the performance of localization. For more information on AMCL, please refer to the AMCL documentation at http://wiki.ros.org/amcl and also at http://www.probabilistic-robotics.org/.

The amcl node works mainly with laser scans and laser maps, but it could be extended to work with other sensor data, such as a sonar or stereo vision. So for this chapter, it takes a laser-based map and laser scans, transforms messages, and generates a probabilistic pose. On startup, the amcl node initializes its particle filter according to the parameters provided in the setup...

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