cs.AI updates on arXiv.org 10月14日
自适应DBSCAN算法提升自动驾驶GPS欺骗检测
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本文提出一种自适应检测方法,利用动态调整的DBSCAN算法,实时调整检测阈值,有效识别GPS欺骗攻击,为自动驾驶安全提供保障。

arXiv:2510.10766v1 Announce Type: cross Abstract: As autonomous vehicles become an essential component of modern transportation, they are increasingly vulnerable to threats such as GPS spoofing attacks. This study presents an adaptive detection approach utilizing a dynamically tuned Density Based Spatial Clustering of Applications with Noise (DBSCAN) algorithm, designed to adjust the detection threshold ({\epsilon}) in real-time. The threshold is updated based on the recursive mean and standard deviation of displacement errors between GPS and in-vehicle sensors data, but only at instances classified as non-anomalous. Furthermore, an initial threshold, determined from 120,000 clean data samples, ensures the capability to identify even subtle and gradual GPS spoofing attempts from the beginning. To assess the performance of the proposed method, five different subsets from the real-world Honda Research Institute Driving Dataset (HDD) are selected to simulate both large and small magnitude GPS spoofing attacks. The modified algorithm effectively identifies turn-by-turn, stop, overshoot, and multiple small biased spoofing attacks, achieving detection accuracies of 98.621%, 99.960.1%, 99.880.1%, and 98.380.1%, respectively. This work provides a substantial advancement in enhancing the security and safety of AVs against GPS spoofing threats.

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自动驾驶 GPS欺骗 DBSCAN算法 安全检测 GPS安全
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