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Learning ROS for Robotics Programming Second Edition

You're reading from   Learning ROS for Robotics Programming Second Edition Take control of the Linux based Robot Operating System, and discover the tools, libraries, and conventions you need to create your own robots without the hassle.

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Product type Paperback
Published in Aug 2015
Publisher Packt
ISBN-13 9781783987580
Length 458 pages
Edition 1st Edition
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Concepts
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Table of Contents (12) Chapters Close

Preface 1. Getting Started with ROS Hydro FREE CHAPTER 2. ROS Architecture and Concepts 3. Visualization and Debug Tools 4. Using Sensors and Actuators with ROS 5. Computer Vision 6. Point Clouds 7. 3D Modeling and Simulation 8. The Navigation Stack – Robot Setups 9. The Navigation Stack – Beyond Setups 10. Manipulation with MoveIt! Index

Adaptive Monte Carlo Localization


In this chapter, we are using the amcl (Adaptive Monte Carlo Localization) 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, amcl initializes its particle filter according to the parameters provided in the setup. If you...

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