基于激光雷达点云和天花板图像的室内设施定位和位置跟踪

Ioannis Dardavesis, E. Verbree, A. Rafiee
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引用次数: 0

摘要

摘要在过去的几年里,定位和导航技术有了很大的发展,方便了用户在各种环境下的导航。与室外环境中GNSS包含通用解决方案不同,在室内环境中使用了各种定位技术,每种技术都有其缺点。因此,本研究通过使用包含在一个简单的移动设备中的组件来调查天花板对室内定位的可靠性。天花板的选择在于它们的优势,包括结合各种特征组件,以及它们和传感器之间没有障碍物。室内定位是基于激光雷达点云和来自移动设备RGB传感器的图像实现的。此外,本研究还涉及到不同用户的位置跟踪,以发现室内设施中不同的运动模式。所提出的方法揭示了基于点云的彩色ICP算法在时间效率和质量方面的鲁棒性,而SURF特征检测器和SIFT描述符的组合提供了图像数据的最佳室内定位结果。拟议的管道在紧急情况下显示了令人鼓舞的结果,基于用户的静态数据采集,同时它也适用于动态应用,如果传感器安装在室内测绘操作的自动化设备上。捕捉到的天花板点云也可以作为CAD和BIM模型的参考,以帮助室内设施中现有公用设施及其组件的建模。
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Indoor localisation and location tracking in indoor facilities based on LiDAR point clouds and images of the ceilings
Abstract. Localisation and navigation technologies have vastly evolved during the last years, facilitating users’ guidance in various environments. Unlike outdoor environments where GNSS comprises a universal solution, in indoor environments various localisation techniques have been used, each one with its drawbacks. Thus, this research investigates the reliability of the ceilings towards indoor localisation, by using components that are included in a simple mobile device. The choice of ceilings lies in their advantages, which include the incorporation of various characteristic components, as well as the absence of obstacles between them and the sensor. Indoor localisation is achieved based on LiDAR point clouds and images from RGB sensors of mobile devices. Additionally, this research involves location tracking of different users, to discover different movement patterns in an indoor facility. The proposed methodology revealed the robustness of the Coloured ICP algorithm for in-door localisation based on point clouds, both in terms of time efficiency and quality, while the combination of the SURF feature detector and SIFT descriptor provides the optimal indoor localisation results with image data. The proposed pipeline revealed encouraging results for use in emergencies, based on static data acquisition of a user, while it is also suitable for dynamic applications, in case a sensor is mounted on an automated device for indoor mapping operations. The captured point clouds of the ceilings can also be used as a reference to CAD and BIM models, to help the modelling of the existing utilities and their components in an indoor facility.
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