Land Cover Classification Based on UAV Photogrammetry and Deep Learning for Supporting Mine Reclamation: A Case Study of Mae Moh Mine in Lampang Province, Thailand

Q3 Environmental Science
Tejendra K. Yadav, P. Chidburee, N. Mahavik
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引用次数: 1

Abstract

Detailed, accurate, and frequent mapping of land cover are the prerequisite regarding areas of reclaimed mines and the development of sustainable project-level for goals. Mine reclamation is essential as the extractive organizations are bounded by-laws that have been established by stakeholders to ensure that the mined areas are properly restored. As databases at the mines area become outdated, an automated process of upgrading is needed. Currently, there are only few studies regarding mine reclamation which has less potential of land cover classification using Unmanned Aerial Vehicle (UAV) photogrammetry with Deep learning (DL). This paper aims to employ the classification of land cover for monitoring mine reclamation using DL from the UAV photogrammetric results. The land cover was classified into five classes, comprising: 1) trees, 2) shadow, 3) grassland, 4) barren land, and 5) others (as undefined). To perform the classification using DL, the UAV photogrammetric results, orthophoto and Digital Surface Model (DSM) were used. The effectiveness of both results was examined to verify the potential of land cover classification. The experimental findings showed that effective results for land cover classification over test area were obtained by DL through the combination of orthophoto and DSM with an Overall Accuracy of 0.904, Average Accuracy of 0.681, and Kappa index of 0.937. Our experiments showed that land cover classification from combination orthophoto with DSM was more precise than using orthophoto only. This research provides framework for conducting an analytical process, a UAV approach with DL based evaluation of mine reclamation with safety, also providing a time series information for future efforts to evaluate reclamation. The procedure resulting from this research constitutes approach that is intended to be adopted by government organizations and private corporations so that it will provide accurate evaluation of reclamation in timely manner with reasonable budget.
基于无人机摄影测量和深度学习的土地覆盖分类支持矿山复垦——以泰国南邦省Mae Moh矿山为例
详细、准确和频繁地绘制土地覆盖图是复垦矿区和制定可持续项目一级目标的先决条件。矿山复垦是必不可少的,因为开采组织受到利益相关者制定的章程的约束,以确保矿区得到适当的恢复。由于矿区的数据库已经过时,因此需要一个自动升级的过程。目前,针对矿区复垦的研究较少,利用无人机摄影测量深度学习技术进行土地覆盖分类的潜力较小。本文旨在利用无人机摄影测量结果的DL,将土地覆盖分类用于监测矿区复垦。土地覆盖分为5类,包括:1)树木,2)阴影,3)草地,4)荒地,5)其他(未定义)。利用无人机摄影测量结果、正射影像和数字曲面模型(DSM)进行深度分类。对这两种结果的有效性进行了检验,以验证土地覆盖分类的潜力。实验结果表明,利用正射影像和DSM相结合的DL方法对试验区土地覆被进行分类,总体精度为0.904,平均精度为0.681,Kappa指数为0.937,具有较好的分类效果。实验结果表明,正射影像图与DSM相结合的土地覆盖分类比单独使用正射影像图更精确。本研究为开展基于深度学习的矿山复垦安全评价的分析过程、无人机方法提供了框架,也为未来复垦评价工作提供了时间序列信息。这项研究产生的程序是政府组织和私营公司打算采用的方法,以便在合理的预算下及时准确地评价填海工程。
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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来源期刊
Applied Environmental Research
Applied Environmental Research Environmental Science-Environmental Science (all)
CiteScore
2.00
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0.00%
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