论文标题
无人驾驶汽车的机器学习辅助操作和通信:当代调查
Machine Learning-Aided Operations and Communications of Unmanned Aerial Vehicles: A Contemporary Survey
论文作者
论文摘要
无人机和ML技术的持续合并正在以前所未有的智能和自主权创造重要的协同和赋予无人机。这项调查旨在及时,全面地概述无人机操作和通信中使用的ML技术,并确定潜在的增长领域和研究差距。我们强调了ML可以显着贡献的无人机操作和通信的四个关键组成部分,即感知和特征提取,特征解释和再生,轨迹和任务计划以及空气动力控制和操作。我们根据其应用程序对四个组件的应用程序对最新流行的ML工具进行了分类,并进行了差距分析。这项调查还迈出了一步,指出了即将到来的ML辅助自动无人机操作和通信领域的重大挑战。据揭示,不同的ML技术主导了无人机操作和通信的四个关键模块的应用程序。虽然跨模块设计的趋势越来越多,但从感知和特征提取到空气动力控制和操作的端到端ML框架几乎没有努力。还宣布,在无人机操作和应用程序中,ML的可靠性和信任需要引起极大的关注,然后在无人机和人类之间完全自动化无人机和潜在的合作才能实现。
The ongoing amalgamation of UAV and ML techniques is creating a significant synergy and empowering UAVs with unprecedented intelligence and autonomy. This survey aims to provide a timely and comprehensive overview of ML techniques used in UAV operations and communications and identify the potential growth areas and research gaps. We emphasise the four key components of UAV operations and communications to which ML can significantly contribute, namely, perception and feature extraction, feature interpretation and regeneration, trajectory and mission planning, and aerodynamic control and operation. We classify the latest popular ML tools based on their applications to the four components and conduct gap analyses. This survey also takes a step forward by pointing out significant challenges in the upcoming realm of ML-aided automated UAV operations and communications. It is revealed that different ML techniques dominate the applications to the four key modules of UAV operations and communications. While there is an increasing trend of cross-module designs, little effort has been devoted to an end-to-end ML framework, from perception and feature extraction to aerodynamic control and operation. It is also unveiled that the reliability and trust of ML in UAV operations and applications require significant attention before full automation of UAVs and potential cooperation between UAVs and humans come to fruition.