Understand Driving Behaviors Based on Comprehensive Grading System and Unsupervised Learning

Author:

Guo Bin1,Hansen John1

Affiliation:

1. The University of Texas at Dallas

Abstract

<div class="section abstract"><div class="htmlview paragraph">Understanding driving behavior is crucial for enhancing traffic safety. While previous studies have primarily explored driving behavior using either statistical or machine learning methods, comprehensive assessments employing both methods under various driving mode are limited. In this study, we employ both machine learning and statistical approaches to model driving behavior. First, we design a comprehensive driver grading system to assess the behavior of drivers under different driving modes. Additionally, we present an extended isolation forest-based model to classify driving behavior using data without labels, saving time and effort. Results illustrate that safe driving is more consistent and stable, while aggressive driving exhibits more intensive changes. They also demonstrate that drivers can exhibit various behaviors under different modes, serving as a benchmark for further driver modeling.</div></div>

Publisher

SAE International

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