Proceedings:
Accessible Hands-on AI and Robotics Education
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Papers from the 2004 AAAI Spring Symposium
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Abstract:
Monte Carlo Localization (MCL) is a robust, probabilistic algorithm for estimating a robot’s pose within a known map of the environment. Now a crucial component of many state-of-the-art robotic systems, MCL’s simplicity, flexibility, and power make it a technique particularly suitable for an undergraduate AI or robotics classroom. Several popular low-cost mobile platforms, such as the Lego RCX and the Handyboard, lack the visualization bandwidth and/or the processing power required to effectively experiment with MCL. This paper describes a series of assignments that guide students toward an implementation of MCL on a relatively new, moderately priced platform, Evolution Robotics’ ER1. We also report on experiences and lessons learned over the past year of using the ER1 for teaching undergraduate robotics.
Spring
Papers from the 2004 AAAI Spring Symposium