Track 3. Robot Localization and Map Building
Localization and mapping are the essence of successful navigation in mobile platform technology. Localization is a fundamental task in order to achieve high levels of autonomy in robot navigation and robustness in vehicle positioning. Robot localization and mapping is commonly related to cartography, combining science, technique and computation to build a trajectory map that reality can be modelled in ways that communicate spatial information effectively. This book describes comprehensive introduction, theories and applications related to localization, positioning and map building in mobile robot and autonomous vehicle platforms. Each chapter is rich with different degrees of details and approaches, supported by unique and actual resources that make it possible for readers to explore and learn the up to date knowledge in robot navigation technology. Understanding the theory and principles described in this book requires a multidisciplinary background of robotics, nonlinear system, sensor network, network engineering, computer science, physics, etc.
Related Conference of Track 3. Robot Localization and Map Building
12th World Congress on Computer Science, Machine Learning and Big Data
6th International Conference on Renewable Energy and Resources
12th International Conference and Exhibition on Mechanical & Aerospace Engineering
25th International Conference on Big Data & Data Analytics
Track 3. Robot Localization and Map Building Conference Speakers
Recommended Sessions
- Track 11. Medical robots and Biotechnology
- Track 3. Robot Localization and Map Building
- Track 6. Mobile Robots: Towards New Applications
- Track 7. Mobile Robots
- Track 8. Service Robot Applications
- Track 9. Humanoid Robots: New Developments
- Track 1. Artificial Intelligence
- Track 10. Automated Bio-Technology
- Track 2. Robotic Automation and Outsourcing
- Track 4. Screw Theory for Robotics
- Track 5. Robot Manipulators: Trends and Development
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