A Driver Detection Method by Means of Explainable Deep Learning

Fabio Martinelli, F. Mercaldo, A. Santone
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Abstract

The introduction of electronics in modern vehicles has sparked the inventiveness of thieves, who are always finding new ways to steal cars. With the aim to avoid vehicle theft, in this paper we propose a method aimed to continuously detect the driver when the driving session is in progress i.e., by providing a silent and continuous way to authenticate the (authorized) driver to the vehicle (and to continue to authenticate him/her while driving). We analyse a set of features extracted from the vehicle controller area network that are considered as input for several deep learning networks, aimed to discriminate between different drivers. A real-world path in Korea performed by four different drivers is used in the experimental analysis, by showing promising results: as a matter of fact, the proposed method obtains a precision equal to 0.906 and a recall of 0.887 with the MobileNet model in driver detection.
基于可解释深度学习的驾驶员检测方法
现代汽车中电子设备的引入激发了小偷的创造力,他们总是在寻找新的方法来偷车。为了避免车辆被盗,本文提出了一种在驾驶过程中持续检测驾驶员的方法,即通过提供一种无声且持续的方式向车辆验证(授权)驾驶员(并在驾驶时继续验证他/她)。我们分析了从车辆控制器区域网络中提取的一组特征,这些特征被认为是几个深度学习网络的输入,旨在区分不同的驾驶员。实验分析中使用了韩国的一个由四个不同驾驶员执行的真实路径,结果显示出很好的结果:事实上,所提出的方法在驾驶员检测中使用MobileNet模型获得了等于0.906的精度和0.887的召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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