2023
DOI: 10.1109/access.2023.3323891
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A Deep Learning-Based IDS for Automotive Theft Detection for In-Vehicle CAN Bus

Junaid Ahmad Khan,
Dae-Woon Lim,
Young-Sik Kim

Abstract: Driver behavior features extracted from the controller area network (CAN) have potential applications in improving vehicle safety. However, the development of a classifier-based IDS for in-vehicle networks remains an open research problem. To address this challenge, we incorporate novel n-fold crossvalidation windowing techniques on two publicly available driving behavior datasets. A driver classificationbased IDS is proposed using the LSTM-FCN model that utilizes the strengths of both fully convolutional netw… Show more

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Cited by 1 publication
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References 69 publications
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