Quantitative and qualitative estimation of driving style help promote safe and eco-driving. A numerical mapping or a categorical labeling of driving skill level, helps identify from most aggressive to extremely mild drivers for fleet management. With a large scale of aggressive driving events collected via connected trucks, an unsupervised framework is built upon statistics described by those events, and has the ability to grade a driving trip by any driver through objective comparison criteria and to train a better clustering model to classify drivers by their style. The effectiveness of the approach is assessed with an experimental campaign carried out on synthetic and real-world data. Results show that the quantitative part is able to produce interpretable and Normal-like scorecard and the qualitative part help build a better driving style classification model with better driver behavior representation.
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View Code? Open in Web Editor NEWa probability mixture framework for quantitative and qualitative evaluation on driving style