AMMI红树林自动地图和索引:有效监测红树林变化的新方法——以印尼南苏门答腊岛木西三角洲为例

Q2 Agricultural and Biological Sciences
Suyarso, P. Avianto
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引用次数: 3

摘要

利用卫星图像绘制红树林已经有几十年的历史了。它有助于减少由于红树林复杂的根系、厚厚的泥土和失去位置信号而造成的难以进入的地方的障碍。迫切需要制作一幅红树林地图,以卫星图像中可视的树冠密度指数自动准确地覆盖红树林。这项研究是通过分析台从太空对红树林特征进行的研究。本研究旨在开发一个简单的公式,用于从开放获取的卫星数据中自动跟踪、捕获和绘制红树林并确定冠层密度指数,以消除人工数字化工作,使其易于使用,并节省成本和时间。目标是为任何对红树林感兴趣的人,包括中央政府、地方当局和当地社区,监测、评估和管理红树林的状况。因此,作者提出了一个算法:(ρNIR−ρ红色)/(ρ红+ρSWIR1)∗(ρNIR−ρSWIR1) /(ρSWIR1−0.65∗ρ红色)。利用Landsat 5 TM、Landsat 7 ETM、Landsat 8 OLI和Sentinel 2在许多红树林中进行的实验结果显示了令人满意的效果。这些地图自动捕捉红树林的空间范围,并在视觉上与卫星图像相匹配。该指数与归一化差水指数(NDWI)显著相关,R2达0.99。这项研究将采用印度尼西亚南苏门答腊岛Musi三角洲红树林复合体的公式。该算法的优点是它运行良好,易于使用,更快地生成红树林地图,通知指数,并有效地监测红树林状况的不时变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AMMI Automatic Mangrove Map and Index: Novelty for Efficiently Monitoring Mangrove Changes with the Case Study in Musi Delta, South Sumatra, Indonesia
Mapping mangroves using satellite imagery has been done for decades. It helps reduce obstacles in inaccessible places caused by the mangroves’ intricate root system, thick mud, and loss of position signals. There is an urgent need to produce a mangrove map that automatically and accurately covers the mangroves with the density index of the canopy as visually represented in satellite imagery. The research was conducted through an analytical desk study of the mangrove features from space. The study aims to develop a simple formula for automatically tracing, capturing, and mapping mangroves and determining the canopy density index from open access of satellite data to eliminate manual digitization work, make it easy to use, and save cost and time. The goal is to monitor, assess, and manage the condition of mangroves for anyone interested in mangroves, including the central government, local authorities, and local communities. As a result, the authors proposed an algorithm: (ρNIR − ρRed)/(ρRed + ρSWIR1) ∗ (ρNIR − ρSWIR1)/(ρSWIR1 − 0.65 ∗ ρRed). Experimental results in many mangrove forests using Landsat 5 TM, Landsat 7 ETM, Landsat 8 OLI, and Sentinel 2 imageries show satisfactory performance. The maps capture the spatial extent of the mangroves automatically and match the satellite imagery visually. The index correlates significantly with the Normalized Difference Water Index (NDWI), with R2 reaching 0.99. The research will apply the formula of the Musi Delta mangrove complex in South Sumatra, Indonesia. The advantage of the algorithm is that it works well, is easy to use, produces mangrove maps faster, informs the index, and efficiently monitors the change in mangrove conditions from time to time.
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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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