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An unsupervised approach for automotive driver identification

Published:04 October 2018Publication History

ABSTRACT

The adoption of on-vehicle monitoring devices allows different entities to gather valuable data about driving styles, which can be further used to infer a variety of information for different purposes, such as fraud detection and driver profiling. In this paper, we focus on the identification of the number of people usually driving the same vehicle, proposing a data analytic work-flow specifically designed to address this problem. Our approach is based on unsupervised learning algorithms working on non-invasive data gathered from a specialized embedded device. In addition, we present a preliminary evaluation of our approach, showing promising driver identification capabilities and a limited computational effort.

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  1. An unsupervised approach for automotive driver identification

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      • Published in

        cover image ACM Other conferences
        INTESA '18: Proceedings of the Workshop on INTelligent Embedded Systems Architectures and Applications
        October 2018
        62 pages
        ISBN:9781450365987
        DOI:10.1145/3285017

        Copyright © 2018 ACM

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        Publication History

        • Published: 4 October 2018

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