灾害影响分析使用土地覆盖分类,案例研究:石油液化

R. Hidayat, A. M. Arymurthy, Dimas Sony Dewantara
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引用次数: 1

摘要

分析一个地区的条件变化可以通过卫星图像分析来完成。本研究利用卫星图像分类来确定灾害的影响和液化灾害恢复工作在佩托博地区,帕卢,苏拉威西岛中部。选择深度学习方法,即卷积神经网络(CNN)和CNN结合ResNet作为迁移学习模型,作为分类方法进行比较,以确定性能最佳的方法。卫星图像的分类主要分为两类,即自然土地覆盖和人工土地覆盖。这项研究后来成功地绘制了由于液化灾害和恢复工作而发生的土地覆盖变化的地图,这些工作已经取得了良好的成绩
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disaster Impact Analysis Uses Land Cover Classification, Case study: Petobo Liquefaction
Analysis of changes in the conditions of an area can be done through satellite image analysis. This study utilizes the classification of satellite imagery to determine the impact of disasters and liquefaction disaster recovery efforts in the Petobo region, Palu, Central Sulawesi. The deep learning approach, namely Convolutional Neural Network (CNN) and CNN combined with ResNet as the Transfer Learning model, were selected as classification methods that would be compared in determining the approach with the best performance. The classification of satellite imagery is mapped into two main classes, namely natural land cover and artificial land cover. This research subsequently succeeded in mapping land cover changes that occurred as a result of liquefaction disasters and recovery efforts that have been carried out with promising performance
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