AI seminar: Localization with dynamic motion models
Speaker: Adam Milstein
Localization is the problem of determining a s location in an environment. Monte Carlo Localization (MCL) is a method of solving this problem by using a partially observable Markov decision process to find the s state based on its sensor readings, given a static map of the environment. MCL requires a model of each sensor in order to work properly. One of the most important sensors involved is the estimation of the s motion, based on its encoders that report what motion the robot has performed.