Vehicle-to-Everything (V2X) communication has been proposed as a potential solution to improve the robustness and safety of autonomous vehicles by improving coordination and removing the barrier of non-line-of-sight sensing. Cooperative Vehicle Safety (CVS) applications are tightly dependent on the reliability of the underneath data system, which can suffer from loss of information due to the inherent issues of their different components, such as sensors failures or the poor performance of V2X technologies under dense communication channel load. Particularly, information loss affects the target classification module and, subsequently, the safety application performance. To enable reliable and robust CVS systems that mitigate the effect of information loss, we proposed a Context-Aware Target Classification (CA-TC) module coupled with a hybrid learning-based predictive modeling technique for CVS systems. The CA-TC consists of two modules: A Context-Aware Map (CAM), and a Hybrid Gaussian Process (HGP) prediction system. Consequently, the vehicle safety applications use the information from the CA-TC, making them more robust and reliable. The CAM leverages vehicles path history, road geometry, tracking, and prediction; and the HGP is utilized to provide accurate vehicles' trajectory predictions to compensate for data loss (due to communication congestion) or sensor measurements' inaccuracies. Based on offline real-world data, we learn a finite bank of driver models that represent the joint dynamics of the vehicle and the drivers' behavior. We combine offline training and online model updates with on-the-fly forecasting to account for new possible driver behaviors. Finally, our framework is validated using simulation and realistic driving scenarios to confirm its potential in enhancing the robustness and reliability of CVS systems.
翻译:车辆安全合作应用系统与CVS系统基于学习的混合预测模型技术一道,密切依赖以下数据系统的可靠性,该系统可能因其不同组成部分的内在问题而失去信息,例如传感器失灵或V2X技术在通信频道负荷密集情况下的性能不佳。特别是,信息损失影响目标分类模块,随后影响安全应用性能。为了使可靠和健全的CVS系统能够减轻信息丢失的影响,我们提议了一个CVS系统使用CA-TC(CA-TC)模块,加上基于学习的CVS系统综合预测模型技术。CA-TC(CVS)系统由两个模块组成:环境-软件地图(CAM)和混合高压程序(HGP)预测系统。因此,车辆安全应用模型使用CA-TC的信息,使其更加可靠和可靠。CVS(CA-TC)账户将车辆系统的历史、道路测算、跟踪和准确的驱动力目标分类(C-C)系统路径路运数据更新,并使用HGS(HGA)数据库数据库数据库中的最新数据更新。