Monitoring of indoor environments by change detection in point clouds

R. Marani, M. Nitti, E. Stella, T. D’orazio
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引用次数: 5

Abstract

This paper describes a complete method for monitoring indoor environments. Three-dimensional (3D) point clouds are first acquired from the environment under investigation by means of a laser range scanner in order to obtain several 3D models to be compared. Input datasets are thus registered each other exploiting a reliable variant of the iterative closest point algorithm (ICP) assisted by the use of deletion masks. These terms work in cooperation with the resampling of the model surfaces to reduce significantly the errors in the estimation of the registration parameters. Once datasets are registered, deformation maps are displayed to help the user to detect changes within the environment. Deletion masks are again used to filter measurement artifacts from the comparison, thus highlighting only the actual alterations of the environment. Several experiments are performed for the analysis of an indoor environment, proving the capability of the proposed method to reliably estimate the presence of alterations.
基于点云变化检测的室内环境监测
本文介绍了一种完整的室内环境监测方法。首先利用激光距离扫描仪从所研究的环境中获取三维点云,以便获得几个三维模型进行比较。因此,通过使用删除掩码辅助,利用迭代最近点算法(ICP)的可靠变体,输入数据集相互注册。这些项与模型表面的重采样协同工作,以显著减少配准参数估计中的误差。一旦注册了数据集,就会显示变形图,以帮助用户检测环境中的变化。删除掩码再次用于从比较中过滤测量工件,从而只突出显示环境的实际变化。对室内环境进行了分析实验,证明了所提出的方法能够可靠地估计变化的存在。
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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