Lu, Yi ChengYi ChengLuYang, Shun RenShun RenYangPHONE LINHuang, Chih WeiChih WeiHuang2023-10-022023-10-022023-01-019798350333398https://scholars.lib.ntu.edu.tw/handle/123456789/635912In recent years, self-driving vehicles have gradually been appearing on the road, but society has also begun to worry about the possibility of accidents caused by the anomaly self-driving system. Many researchers have begun to study the anomaly detection of self-driving vehicles, and each has proposed different detection algorithms. However, since self-driving vehicles are not yet popular, how to collect data, simulate attacks, and verify and compare multiple algorithms is a major obstacle to research. In this regard, we built an Internet of Vehicles platform, VADtalk, that facilitate anomaly detection modeling and deployment for self-driving vehicles. VADtalk contains programs such as anomaly detection model training and vehicle connection. When developers complete model uploading and setting through the GUI, the platform will automatically collect self-driving data, train the model, and even verify the operation of the model using a self-driving simulator, and then provide the results to the developer. After the developer determines the model, VADtalk can connect the trained model with the self-driving vehicle to actually perform real-time anomaly detection on it.Anomaly detection | Internet of Vehicles | self-driving vehiclesVADtalk: An Internet of Vehicles Platform Facilitating Anomaly Detection Modeling and Deployment for Self-Driving Vehiclesconference paper10.1109/IWCMC58020.2023.101826712-s2.0-85167674204https://api.elsevier.com/content/abstract/scopus_id/85167674204