Zhuang Licong, Zhong Xiaorong, Xu Linjie, Tian Chunbao, Yu Wenshuai
Guangdong Laboratory of Artificial Intelligence and Digital Economy (SZ), Yutang Street, Guangming District, Shenzhen 518132, China.
The College of Civil and Transportation Engineering, Shenzhen University, 3688 Nanhai Avenue, Nanshan District, Shenzhen 518060, China.
Sensors (Basel). 2024 May 8;24(10):2980. doi: 10.3390/s24102980.
Localization and perception play an important role as the basis of autonomous Unmanned Aerial Vehicle (UAV) applications, providing the internal state of movements and the external understanding of environments. Simultaneous Localization And Mapping (SLAM), one of the critical techniques for localization and perception, is facing technical upgrading, due to the development of embedded hardware, multi-sensor technology, and artificial intelligence. This survey aims at the development of visual SLAM and the basis of UAV applications. The solutions to critical problems for visual SLAM are shown by reviewing state-of-the-art and newly presented algorithms, providing the research progression and direction in three essential aspects: real-time performance, texture-less environments, and dynamic environments. Visual-inertial fusion and learning-based enhancement are discussed for UAV localization and perception to illustrate their role in UAV applications. Subsequently, the trend of UAV localization and perception is shown. The algorithm components, camera configuration, and data processing methods are also introduced to give comprehensive preliminaries. In this paper, we provide coverage of visual SLAM and its related technologies over the past decade, with a specific focus on their applications in autonomous UAV applications. We summarize the current research, reveal potential problems, and outline future trends from academic and engineering perspectives.
定位与感知作为自主无人机(UAV)应用的基础发挥着重要作用,可提供运动的内部状态以及对环境的外部理解。同时定位与地图构建(SLAM)作为定位与感知的关键技术之一,由于嵌入式硬件、多传感器技术和人工智能的发展,正面临技术升级。本综述旨在探讨视觉SLAM的发展以及无人机应用的基础。通过回顾最新的和新提出的算法,展示了视觉SLAM关键问题的解决方案,从实时性能、无纹理环境和动态环境三个重要方面提供了研究进展和方向。讨论了视觉惯性融合和基于学习的增强技术在无人机定位与感知中的应用,以说明它们在无人机应用中的作用。随后,展示了无人机定位与感知的趋势。还介绍了算法组件、相机配置和数据处理方法,以提供全面的预备知识。在本文中,我们涵盖了过去十年视觉SLAM及其相关技术,特别关注它们在自主无人机应用中的应用。我们从学术和工程角度总结了当前的研究,揭示了潜在问题,并概述了未来趋势。