The Simultaneous Localization and Mapping (SLAM)-An Overview

B. Alsadik, S. Karam
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引用次数: 22

Abstract

Positioning is a need for many applications related to mapping and navigation either in civilian or military domains. The significant developments in satellite-based techniques, sensors, telecommunications, computer hardware and software, image processing, etc. positively influenced to solve the positioning problem efficiently and instantaneously. Accordingly, the mentioned development empowered the applications and advancement of autonomous navigation. One of the most interesting developed positioning techniques is what is called in robotics as the Simultaneous Localization and Mapping SLAM. The SLAM problem solution has witnessed a quick improvement in the last decades either using active sensors like the RAdio Detection And Ranging (Radar) and Light Detection and Ranging (LiDAR) or passive sensors like cameras. Definitely, positioning and mapping is one of the main tasks for Geomatics engineers, and therefore it's of high importance for them to understand the SLAM topic which is not easy because of the huge documentation and algorithms available and the various SLAM solutions in terms of the mathematical models, complexity, the sensors used, and the type of applications. In this paper, a clear and simplified explanation is introduced about SLAM from a Geomatical viewpoint avoiding going into the complicated algorithmic details behind the presented techniques. In this way, a general overview of SLAM is presented showing the relationship between its different components and stages like the core part of the front-end and back-end and their relation to the SLAM paradigm. Furthermore, we explain the major mathematical techniques of filtering and pose graph optimization either using visual or LiDAR SLAM and introduce a summary of the deep learning efficient contribution to the SLAM problem. Finally, we address examples of some existing practical applications of SLAM in our reality.
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同时定位与制图(SLAM)——综述
定位是许多与民用或军事领域的测绘和导航相关的应用所需要的。卫星技术、传感器、电信、计算机软硬件、图像处理等方面的重大发展对高效、即时地解决定位问题产生了积极的影响。因此,上述发展为自主导航的应用和进步提供了动力。最有趣的定位技术之一是在机器人技术中被称为同步定位和映射SLAM。在过去的几十年里,SLAM问题的解决方案已经得到了快速的改进,要么使用主动传感器,如无线电探测和测距(雷达)和光探测和测距(激光雷达),要么使用被动传感器,如摄像头。当然,定位和测绘是测绘工程师的主要任务之一,因此对他们来说,理解SLAM主题是非常重要的,这并不容易,因为有大量的文档和算法,以及各种SLAM解决方案,包括数学模型、复杂性、使用的传感器和应用类型。本文从几何学的角度对SLAM进行了清晰、简化的解释,避免了涉及所提出技术背后复杂的算法细节。通过这种方式,可以对SLAM进行总体概述,显示其不同组件和阶段(如前端和后端核心部分)之间的关系以及它们与SLAM范式的关系。此外,我们解释了使用视觉或激光雷达SLAM进行滤波和姿态图优化的主要数学技术,并介绍了深度学习对SLAM问题的有效贡献。最后,我们给出了SLAM在现实中的一些实际应用实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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