A review of Visual-Based Localization

Xing Xin, Jie Jiang, Y. Zou
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引用次数: 13

Abstract

The visual-based localization (VBL) obtains the corresponding pose estimation in the localization system by utilizing various useful information in the surrounding environment, such as images, point cloud models, geometric information, semantic information. In recent years, visual-based localization (VBL) has been widely concerned by scientists, mainly because the commonly used GPS localization system cannot be effectively used in various environments. When GPS localization fails in some scenes such as very messy environments and severe signal occlusion, we can consider using visual-based localization to obtain the pose of the query images. Visual-based localization (VBL) has been widely used in the field of visual tasks, such as augmented reality, unmanned vehicle navigation, robotics, closed-loop detection, SFM (Structure from Motion) models. After years of development, the methods of visual-based localization (VBL) have been enriched and developed, In order to better understand the latest developments in VBL, overall research status and possible future development trends, we need make a systematic detailed classification of VBL. Although the predecessors have summarized the methods of VBL, due to the many new breakthroughs in VBL in recent years, the original summary is not perfect enough. So this paper will make a new and more detailed review of VBL in recent years. This paper divides the visual-based localization methods into three categories: image-based localization, localization based on learning model and localization based on 3D structure. And we also detail the principle, development of methods and the advantages and disadvantages of each method and future development trends.
基于视觉的定位研究综述
基于视觉的定位(visual based localization, VBL)是利用周围环境中的各种有用信息,如图像、点云模型、几何信息、语义信息等,在定位系统中获得相应的姿态估计。近年来,基于视觉的定位(visual-based localization, VBL)受到了科学家们的广泛关注,主要原因是目前常用的GPS定位系统无法在各种环境下有效使用。当GPS定位在一些场景中失败时,例如非常混乱的环境和严重的信号遮挡,我们可以考虑使用基于视觉的定位来获得查询图像的位姿。基于视觉的定位(VBL)已广泛应用于增强现实、无人驾驶车辆导航、机器人、闭环检测、SFM (Structure from Motion)模型等视觉任务领域。经过多年的发展,基于视觉的定位方法得到了丰富和发展,为了更好地了解基于视觉的定位的最新发展、总体研究现状和未来可能的发展趋势,我们有必要对基于视觉的定位进行系统详细的分类。虽然前人对VBL的方法进行了总结,但由于近年来VBL出现了许多新的突破,原有的总结还不够完善。因此,本文将对近年来VBL的研究进行新的、更详细的综述。本文将基于视觉的定位方法分为三类:基于图像的定位、基于学习模型的定位和基于三维结构的定位。并详细介绍了各种方法的原理、发展、优缺点以及未来的发展趋势。
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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