A Novel GMM-Based Behavioral Modeling Approach for Smartwatch-Based Driver Authentication

Sensors (Basel). 2018 Mar 28;18(4):1007. doi: 10.3390/s18041007.

Abstract

All drivers have their own distinct driving habits, and usually hold and operate the steering wheel differently in different driving scenarios. In this study, we proposed a novel Gaussian mixture model (GMM)-based method that can improve the traditional GMM in modeling driving behavior. This new method can be applied to build a better driver authentication system based on the accelerometer and orientation sensor of a smartwatch. To demonstrate the feasibility of the proposed method, we created an experimental system that analyzes driving behavior using the built-in sensors of a smartwatch. The experimental results for driver authentication-an equal error rate (EER) of 4.62% in the simulated environment and an EER of 7.86% in the real-traffic environment-confirm the feasibility of this approach.

Keywords: Gaussian mixture models; accelerometer sensor; driver authentication; orientation sensor; smartwatch.