Autonomous Vehicle Parking using Finite State Automata Learned by J-CC Artificial Neural Nets
نویسندگان
چکیده
This paper presents the SEVA system (Autonomous Vehicle Parking Simulator). This tool implements a robust control system for autonomous vehicle parking based on a FSA (Finite-State Automata) and also based on FSA obtained from trained J-CC ANNs (Jordan CascadeCorrelation Artificial Neural Networks).
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