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Journal Article

Citation

Espino-Salinas CH, Luna-García H, Celaya-Padilla JM, Morgan-Benita JA, Vera-Vasquez C, Sarmiento WJ, Galván-Tejada CE, Galván-Tejada JI, Gamboa-Rosales H, Villalba-Condori KO. Sensors (Basel) 2023; 23(2): e784.

Copyright

(Copyright © 2023, MDPI: Multidisciplinary Digital Publishing Institute)

DOI

10.3390/s23020784

PMID

36679580

Abstract

Driver identification refers to the process whose primary purpose is identifying the person behind the steering wheel using collected information about the driver him/herself. The constant monitoring of drivers through sensors generates great benefits in advanced driver assistance systems (ADAS), to learn more about the behavior of road users. Currently, there are many research works that address the subject in search of creating intelligent models that help to identify vehicle users in an efficient and objective way. However, the different methodologies proposed to create these models are based on data generated from sensors that include different vehicle brands on routes established in real environments, which, although they provide very important information for different purposes, in the case of driver identification, there may be a certain degree of bias due to the different situations in which the route environment may change. The proposed method seeks to intelligently and objectively select the most outstanding statistical features from motor activity generated in the main elements of the vehicle with genetic algorithms for driver identification, this process being newer than those established by the state-of-the-art. The results obtained from the proposal were an accuracy of 90.74% to identify two drivers and 62% for four, using a Random Forest Classifier (RFC). With this, it can be concluded that a comprehensive selection of features can greatly optimize the identification of drivers.


Language: en

Keywords

feature extraction; ADAS; driver identification; genetic algorithms; random forest

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