Utilizing Sentinel-2 Data for Mapping Burned Areas in Banjarbaru Wetlands, South Kalimantan Province

Q2 Agricultural and Biological Sciences International Journal of Forestry Research Pub Date : 2022-10-07 DOI:10.1155/2022/7936392
D. Arisanty, Muhammad Feindhi Ramadhan, P. Angriani, M. Muhaimin, Aswin Nur Saputra, Karunia Puji Hastuti, D. Rosadi
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引用次数: 6

Abstract

Sentinel-2 imagery can identify forest and land fires in underground parts, surface fires, and crown fires. The dNBR and RBR spectral indices on Sentinel-2 images proved accurate in identifying. This study analyzed the index value for burned area mapping in wetland areas using Sentinel-2 imagery data in 2019 and hotspot data from the MODIS data. The indices used to identify the burned area and the severity of the fire was the differenced normalized burn ratio (dNBR) and relativized burn ratio (RBR). Visual validation tests were performed by comparing RGB composite images to check the appearance before and after combustion with dNBR and RBR results. The dNBR value accuracy was 91.5%, and for a kappa, the accuracy was 89.58%. The RBR accuracy was 92.9%, and the kappa accuracy was 0.91. The results confirmed that in the Banjarbaru area, RBR was more accurate in identifying burned areas than dNBR; both indices can be used for burned area mapping in wetland areas.
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利用Sentinel-2数据绘制南加里曼丹省Banjarbaru湿地的烧毁区域
Sentinel-2图像可以识别地下部分的森林和陆地火灾、地表火灾和树冠火灾。结果表明,Sentinel-2遥感影像上的dNBR和RBR光谱指数识别精度较高。利用2019年Sentinel-2遥感影像数据和MODIS热点数据,对湿地地区火烧面积制图指标值进行分析。采用差分归一化燃烧比(dNBR)和相对燃烧比(RBR)作为火灾面积和火灾严重程度的识别指标。通过RGB合成图像与dNBR和RBR结果对比,进行燃烧前后外观的视觉验证试验。dNBR值的准确率为91.5%,kappa值的准确率为89.58%。RBR准确率为92.9%,kappa准确率为0.91。结果表明,在Banjarbaru地区,RBR比dNBR识别烧伤区域更准确;这两种指标均可用于湿地地区的火烧面积制图。
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来源期刊
International Journal of Forestry Research
International Journal of Forestry Research Agricultural and Biological Sciences-Forestry
CiteScore
2.70
自引率
0.00%
发文量
32
审稿时长
18 weeks
期刊介绍: International Journal of Forestry Research is a peer-reviewed, Open Access journal that publishes original research and review articles focusing on the management and conservation of trees or forests. The journal will consider articles looking at areas such as tree biodiversity, sustainability, and habitat protection, as well as social and economic aspects of forestry. Other topics covered include landscape protection, productive capacity, and forest health.
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