2023
DOI: 10.3390/s23094399
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Intrusion Detection Method for Internet of Vehicles Based on Parallel Analysis of Spatio-Temporal Features

Abstract: The problems with network security that the Internet of Vehicles (IoV) faces are becoming more noticeable as it continues to evolve. Deep learning-based intrusion detection techniques can assist the IoV in preventing network threats. However, previous methods usually employ a single deep learning model to extract temporal or spatial features, or extract spatial features first and then temporal features in a serial manner. These methods usually have the problem of insufficient extraction of spatio-temporal feat… Show more

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Cited by 5 publications
(1 citation statement)
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“…The framework captured features for detecting network intrusions in vehicle networks and identifying abnormal behavior. Xing et al [22] proposed a technique involving the parallel analysis of spatiotemporal features for intrusion detection in vehicle networks. The method significantly improved the performance.…”
Section: Intrusion Detection Methods Based On Traditional Machine Lea...mentioning
confidence: 99%
“…The framework captured features for detecting network intrusions in vehicle networks and identifying abnormal behavior. Xing et al [22] proposed a technique involving the parallel analysis of spatiotemporal features for intrusion detection in vehicle networks. The method significantly improved the performance.…”
Section: Intrusion Detection Methods Based On Traditional Machine Lea...mentioning
confidence: 99%