Change detection in street environments based on mobile laser scanning: A fuzzy spatial reasoning approach

Joachim Gehrung , Marcus Hebel , Michael Arens , Uwe Stilla
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引用次数: 1

Abstract

Automated change detection based on urban mobile laser scanning data is the foundation for a whole range of applications such as building model updates, map generation for autonomous driving and natural disaster assessment. The challenge with mobile LiDAR data is that various sources of error, such as localization errors, lead to uncertainties and contradictions in the derived information. This paper presents an approach to automatic change detection using a new category of generic evidence grids that addresses the above problems. Said technique, referred to as fuzzy spatial reasoning, solves common problems of state-of-the-art evidence grids and also provides a method of inference utilizing fuzzy Boolean reasoning. Based on this, logical operations are used to determine changes and combine them with semantic information. A quantitative evaluation based on a hand-annotated version of the TUM-MLS data set shows that the proposed method is able to identify confirmed and changed elements of the environment with F1-scores of 0.93 and 0.89.

基于移动激光扫描的街道环境变化检测:一种模糊空间推理方法
基于城市移动激光扫描数据的自动变化检测是一系列应用的基础,如建筑模型更新、自动驾驶地图生成和自然灾害评估。移动激光雷达数据面临的挑战是各种误差来源,如定位误差,导致衍生信息的不确定性和矛盾。本文提出了一种自动变化检测的方法,使用一种新的通用证据网格来解决上述问题。该技术被称为模糊空间推理,解决了最先进的证据网格的常见问题,也提供了一种利用模糊布尔推理的推理方法。在此基础上,使用逻辑操作来确定更改并将其与语义信息结合起来。基于手工注释版本的TUM-MLS数据集的定量评估表明,所提出的方法能够识别已确认和变化的环境要素,f1得分分别为0.93和0.89。
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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