2017
DOI: 10.1155/2017/6057830
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Combining Unsupervised Anomaly Detection and Neural Networks for Driver Identification

Abstract: This paper proposes an algorithm for real-time driver identification using the combination of unsupervised anomaly detection and neural networks. The proposed algorithm uses nonphysiological signals as input, namely, driving behavior signals from inertial sensors (e.g., accelerometers) and geolocation signals from GPS sensors. First anomaly detection is performed to assess if the current driver is whom he/she claims to be. If an anomaly is detected, the algorithm proceeds to find relevant features in the input… Show more

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Cited by 29 publications
(19 citation statements)
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References 21 publications
(72 reference statements)
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“…Model tiga lapis telah digunakan untuk melatih dan mempelajari berbagai atribut neuron tersembunyi dalam jaringan. Penelitian [11] mengusulkan algoritma untuk identifikasi driver real-time menggunakan kombinasi deteksi anomali tanpa pengawasan dan jaringan saraf. Algoritma yang diusulkan menggunakan sinyal nonfisiologis sebagai input, yaitu sinyal perilaku mengemudi dari sensor inersia (mis.…”
Section: Pendahuluanunclassified
“…Model tiga lapis telah digunakan untuk melatih dan mempelajari berbagai atribut neuron tersembunyi dalam jaringan. Penelitian [11] mengusulkan algoritma untuk identifikasi driver real-time menggunakan kombinasi deteksi anomali tanpa pengawasan dan jaringan saraf. Algoritma yang diusulkan menggunakan sinyal nonfisiologis sebagai input, yaitu sinyal perilaku mengemudi dari sensor inersia (mis.…”
Section: Pendahuluanunclassified
“…Since the labelled data, which is required for supervised anomaly detection, is often not available or in other words, collecting sufficient anomolous samples is infeasible in most of the cases, many researchers have tried to detect anomalies without labelled data. However, they were forced to take advantage of supervised learning along with unsupervised for other steps of their algorithms such as pattern recognition to achieve better diagnosis [29], [30].…”
Section: Introductionmentioning
confidence: 99%
“…Typically, different from the MNL model, machine learning methods, particularly deep learning models using a data-oriented approach, are becoming increasingly prominent in numerous research fields, including transportation [2][3][4]. Deep neural networks (DNNs) are mathematical tools that are loosely inspired by the functional aspects of biological neural systems.…”
Section: Introductionmentioning
confidence: 99%