基于地理信息系统的深度学习在土地利用变化制图中的应用——以液化为例

Ajun Purwanto, None Paiman
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引用次数: 0

摘要

本研究旨在提取建筑物和道路,确定液化灾害前后的变化程度。研究方法为自动提取。使用的数据是2017年和2018年的谷歌地球图像。数据分析技术采用深度学习地理信息系统。结果表明:建成区提取结果为23.61 ha,未开发区提取结果为147.53 ha;液化灾害发生前道路总长度为35.50 km。液化灾害后的提取结果为新建面积1.20 ha,而因灾害造成的建筑物损失为22.41 ha。液化灾害前的道路总长度为35.50公里,仅损失了11.20公里,24.30公里。地理信息系统(GIS)中的深度学习正在蓬勃发展,并在生活的各个方面具有许多优势,包括技术,地理,健康,教育,社会生活和灾害。
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Utilization of Deep Learning for Mapping Land Use Change Base on Geographic Information System: A Case Study of Liquefaction
This study aims to extract buildings and roads and determine the extent of changes before and after the liquefaction disaster. The research method used is automatic extraction. The data used are Google Earth images for 2017 and 2018. The data analysis technique uses the Deep Learning Geography Information System. The results showed that the extraction results of the built-up area were 23.61 ha and the undeveloped area was 147.53 ha. The total length of the road before the liquefaction disaster occurred was 35.50 km. The extraction result after the liquefaction disaster was that the area built up was 1.20 ha, while the buildings lost due to the disaster were 22.41 ha. The total road length prior to the liquefaction disaster was 35.50 km, only 11.20 km of roads were lost, 24.30 km. Deep Learning in Geographic Information Systems (GIS) is proliferating and has many advantages in all aspects of life, including technology, geography, health, education, social life, and disasters.
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