Flood Damage Assessment Geospatial Application Using Geoinformatics and Deep Learning Classification

被引:0
作者
Puttinaovarat S. [1 ]
Saeliw A. [1 ]
Pruitikanee S. [1 ]
Kongcharoen J. [1 ]
Chai-Arayalert S. [1 ]
Khaimook K. [2 ]
机构
[1] Prince of Songkla University, Surat Thani
[2] Ramkhamhaeng University, Bangkok
关键词
Deep learning classification; Flood damage assessment; Geoinformatics;
D O I
10.3991/ijim.v16i21.34281
中图分类号
学科分类号
摘要
The data of impacts and damage caused by floods is necessary for manipulation to assist and relieve those impacts in each area. The main issue for data acquisition was acquisition methods that affect the durations, accuracy, and completeness of data obtained. Most data are currently obtained by field survey for data on impacts in each area. However, this method contains limitations, i.e., taking a long time, high cost, and no real-time data visualization. Thus, this research presented the study to develop an application for inspecting areas under impact and damage caused by floods using deep learning classification for flood classification and land use type classification in the affected areas using digital images, remote sensing data, and crowdsource data notified by users through the accuracy assessment application of classification. It was found that deep learning classification for flood classification had 97.50% accuracy, with Kappa = 0.95. Land use type classification had 93.72% accuracy, with Kappa = 0.91. Flood damage assessment process in this research was different from other previous research that used geospatial data for flood damage inspection. In previous research, there was no platform to provide users with information about the impact and damage caused by floods in each area. Also, the data cannot be visualized in real-time. In contrast, this research brought damage data notified by users for processing with flood data in each area by satellite image processing and land use types of classification. The proposed application can calculate damage in each area and visualize real-time results in maps and graphs on the dashboard via the application. Besides, the presented method can be used to verify and visualize data of areas under impact and damage caused by floods in different areas. © 2022, International Journal of Interactive Mobile Technologies. All Rights Reserved.
引用
收藏
页码:71 / 97
页数:26
相关论文
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