Abstract:
This project studied the feasibility of constructing an autonomous vehicle controller based on probabilistic inference and utility maximization. Several theoretical and algorithmic advances were required in order to create an inference system capable of handling vehicle monitoring in a real-time fashion. New methods were also developed for learning probabilistic models from data, and for learning control policies given reward/penalty feedback.
Publication date:
April 1, 1997
Publication type:
Research Report
Citation:
Forbes, J., & Al, E. (1997). Feasibility Study Of Fully Autonomous Vehicles Using Decision-theoretic Control (No. UCB-ITS-PRR-97-18). https://escholarship.org/uc/item/4nz42165