Survey on Localization Systems and Algorithms for Unmanned Systems

Shenghai Yuan, Han Wang, Lihua Xie
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引用次数: 24

Abstract

Intelligent unmanned systems have important applications, such as pesticide-spraying in agriculture, robot-based warehouse management systems, and missile-firing drones. The underlying assumption behind all autonomy is that the agent knows its relative position or egomotion with respect to some reference or scene. There exist thousands of localization systems in the literature. These localization systems use various combinations of sensors and algorithms, such as visual/visual-inertial SLAM, to achieve robust localization. The majority of the methods use one or more sensors from LIDAR, camera, IMU, UWB, GPS, compass, tracking system, etc. This survey presents a systematic review and analysis of published algorithms and techniques chronologically, and we introduce various highly impactful works. We provide insightful investigation and taxonomy on sensory data forming principle, feature association principle, egomotion estimation formation, and fusion model for each type of system. At last, some open problems and directions for future research are also included. We aim to survey the literature comprehensively to provide a complete understanding of localization methodologies, performance, advantages and limitations, and evaluations of various methods, shedding some light for future research.
无人系统定位系统与算法研究综述
智能无人系统具有重要的应用,例如农业农药喷洒,基于机器人的仓库管理系统和导弹发射无人机。所有自主性背后的潜在假设是,代理知道它相对于某些参考或场景的相对位置或自我情绪。文献中存在着数千种定位系统。这些定位系统使用各种传感器和算法的组合,例如视觉/视觉惯性SLAM,以实现鲁棒定位。大多数方法使用来自激光雷达、相机、IMU、超宽带、GPS、指南针、跟踪系统等的一个或多个传感器。本调查按时间顺序对已发表的算法和技术进行了系统的回顾和分析,并介绍了各种极具影响力的作品。我们对每种类型的系统的感觉数据形成原理、特征关联原理、自我运动估计形成和融合模型进行了深入的研究和分类。最后,提出了一些有待解决的问题和今后的研究方向。我们的目的是通过对文献的全面梳理,对定位方法、性能、优势和局限性以及各种方法的评价有一个完整的了解,为今后的研究提供一些启示。
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