Automatic Airborne Laser Scanning Data Quality Control Procedure for Environmental Studies

Q3 Agricultural and Biological Sciences Folia Forestalia Polonica, Series A Pub Date : 2020-12-01 DOI:10.2478/ffp-2020-0030
Bartłomiej Kraszewski, Z. Piasecka, Rafal Sadkowski, K. Stereńczak
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引用次数: 0

Abstract

Abstract Airborne laser scanning (ALS) technology delivers large amount of data collected from airborne level. These data are used for many different applications in forestry, civil engineering, environmental studies and others. To acquire the best possible results from the data, accuracy analysis is a necessary part of data processing chain. Therefore, considering the increasing interest worldwide in the use of laser scanning data, improving the quality control (QC) tools is a crucial pursuit. This study underlines the possible error sources, summarises the existing QC knowledge for ALS data and proposes an optimised QC procedure. The procedure was implemented in selected applications and evaluated for three different environments, namely, forests, rural areas and croplands. The proposed solution is almost fully automatic outside from the module that supports the operator in the classification examination. The workflow is scalable and can be expanded with new modules that enhance the functionality. The presented procedures can save up to 30 min of manual checks for every 1 km2 area.
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自动机载激光扫描数据质量控制程序环境研究
机载激光扫描(机载激光扫描)技术提供了从机载水平采集的大量数据。这些数据用于林业、土木工程、环境研究和其他领域的许多不同应用。为了从数据中获得尽可能好的结果,精度分析是数据处理链中必不可少的一环。因此,考虑到全世界对使用激光扫描数据的兴趣日益增加,改进质量控制(QC)工具是一个至关重要的追求。本研究强调了可能的误差来源,总结了ALS数据的现有QC知识,并提出了优化的QC程序。该程序在选定的应用中执行,并对三种不同的环境,即森林、农村地区和农田进行了评价。所提出的解决方案在支持操作员进行分类检查的模块之外几乎是全自动的。工作流是可伸缩的,可以使用增强功能的新模块进行扩展。所提出的程序可以为每1平方公里区域节省30分钟的人工检查。
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来源期刊
Folia Forestalia Polonica, Series A
Folia Forestalia Polonica, Series A Agricultural and Biological Sciences-Forestry
CiteScore
1.30
自引率
0.00%
发文量
18
审稿时长
8 weeks
期刊介绍: FOLIA FORESTALIA POLONICA, SERIES A – FORESTRY is a forest science magazine addressed to scientists, administrators and policy-makers in forestry, agroforestry, ecology, environment and resource management. The language of publication is English and papers from any region of the world are welcome.
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