With the proliferation of edge smart devices and the Internet of Vehicles (IoV) technologies, intelligent fatigue detection has become one of the most-used methods in our daily driving. To improve the performance of the detection model, a series of techniques have been developed. However, existing work still leaves much to be desired, such as privacy disclosure and communication cost. To address these issues, we propose FedSup, a client-edge-cloud framework for privacy and efficient fatigue detection. Inspired by the federated learning technique, FedSup intelligently utilizes the collaboration between client, edge, and cloud server to realizing dynamic model optimization while protecting edge data privacy. Moreover, to reduce the unnecessary system communication overhead, we further propose a Bayesian convolutional neural network (BCNN) approximation strategy on the clients and an uncertainty weighted aggregation algorithm on the cloud to enhance the central model training efficiency. Extensive experiments demonstrate that the FedSup framework is suitable for IoV scenarios and outperforms other mainstream methods.
翻译:随着尖端智能装置和车辆互联网技术的激增,智能疲劳检测已成为我们日常驾驶中最常用的方法之一。为了改进探测模型的性能,已经开发了一系列技术。然而,现有的工作仍有许多有待改进之处,例如隐私披露和通信成本。为了解决这些问题,我们提议FedSup,这是一个用于隐私和高效疲劳检测的客户-尖端环球框架。在联合学习技术的启发下,FedSup明智地利用客户、边缘和云层服务器之间的合作来实现动态模型优化,同时保护边缘数据隐私。此外,为了减少不必要的系统通信间接费用,我们进一步提议对客户采用BCNNN(BCNN)系统同步战略,对云层进行不确定的加权汇总算法,以提高中央模型培训效率。广泛的实验表明,FedSup框架适合IoV情景,并优于其他主流方法。