Learning Driving Behavior by Timed Syntactic Pattern Recognition

Verwer, Sicco (Katholieke Universiteit Leuven) | Weerdt, Mathijs de (Delft University of Technology) | Witteveen, Cees (Delft University of Technology)

AAAI Conferences 

The data at our disposal consists of onboard sensor measurements that have been collected from truck round-trips. We advocate the use of an explicit time representation By applying a simple discretization method, we obtain sequences in syntactic pattern recognition because it can of timed events. The behavior that is displayed in result in more succinct models and easier learning these sequences is unknown. From this data, we want to learn problems. We apply this approach to the real-world a model that we can use to monitor the driving behavior in problem of learning models for the driving behavior new data, i.e., to use it as a classifier. Our approach is to first of truck drivers. We discretize the values of learn a timed model from the unlabeled sequences using the onboard sensors into simple events.

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