La Cucaracha: An Experiment in Embodied Neural Networks
نویسندگان
چکیده
This paper outlines, presents, and discusses the development strategy, design, results and analysis for a neural network implementation of a control system for an artificial being in an environmental simulator. Limited visual sensors and aural sensors are provided by the simulation. The main goal of this project is a well documented, long living robot.
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