This book provides an algorithmic perspective to autonomous robotics to students with a sophomore-level of linear algebra and probability theory. Robotics is an emerging field at the intersection of mechanical and electrical engineering with computer science. With computers becoming more powerful, making robots smart is getting more and more into the focus of attention and robotics research most challenging frontier. While there are a large number of textbooks on the mechanics and dynamics of robots that address sophomore-level undergraduates available, books that provide a broad algorithmic perspective are mostly limited to the graduate level. This book has therefore been developed not to create “yet another textbook, but better than the others”, but to allow me to teach robotics to the 3rd and 4th year undergraduates at the Department of Computer Science at the University of Colorado.
Although falling under the umbrella of “Artificial Intelligence”, standard AI techniques are not sufficient to tackle problems that involve uncertainty, such as a robot’s interaction in the real world. This book uses simple trigonometry to develop the kinematic equations of simple manipulators and mobile robots, then introduces path planning, sensing, and hence uncertainty. The robot localization problem is introduced by formally introducing error propagation, which leads to Markov localization, the Particle filter and finally the Extended Kalman Filter, and Simultaneous Localization and Mapping.
Book year: 2016
Book pages: 226
Book language: en
File size: 14.94 MB
File type: pdf
Published: 02 October 2022 - 14:00