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Mangroves Change Detection using Support Vector Machine Algorithm on Google Earth Engine (A Case Study in Part of Gulf of Bone, South Sulawesi, Indonesia)

机译:使用支持向量机算法在Google地球发动机上改变检测(以骨南苏拉威病,印度尼西亚南部湾的一部分研究)

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Remote sensing data have been proven to be efficient as data source for mangrove mapping and monitoring to support decision making and policy related to mangrove management. One of the key advantages of remote sensing is the temporal availability of the data which allow monitoring of mangrove status from different time period. In line with this advantage, the recent development of Google Earth Engine (GEE) has open wider possibility to work with large image datasets in an online platform for mangrove monitoring. This study aims to develop a method to monitor mangrove cover changes at some parts of Gulf of Bone, South Sulawesi, Indonesia from 2014 to 2018 using a combination of GEE and Support Vector Machine (SVM) algorithm applied to Landsat 8 OLI (30 m pixel size). We used region of interest (ROI) technique to distinguish mangroves, non-mangroves, open area, water bodies, and cloud objects. The result of five classes ROI was for defining all the dataset for data model. The algorithm implementation result shows that the mangrove cover from 2014 to 2015 had decreased significantly along the beach and in several side of fishponds. However, from 2016 to 2018 the mangrove cover had increased especially in the south side of the study area. This change pattern shows the dynamic of mangrove cover in the study area, mainly caused by the development of fish or shrimp ponds and some mangrove restoration efforts. The result shows the potential of SVM and GEE for spatio-temporal data analysis based on Landsat 8 OLI to monitor the mangrove cover changes over the time. Nevertheless, the spectral characteristics of mangroves which is influenced by water bodies or unconsolidated sediment background make the identification of mangroves or non-mangroves area remains challenging.
机译:已被证明遥感数据作为红树林映射和监控的数据源,以支持与红树林管理相关的决策和政策。遥感的关键优势之一是数据的时间可用性,允许从不同的时间段监控红树林状态。符合这一优势,谷歌地球发动机最近的发展(Gee)开辟了在线平台中使用大型图像数据集的更广泛的可能性,用于红树林监测。本研究旨在开发一种方法,可以使用沟和支持向量机(SVM)算法的组合,在2014年至2018年,在2014年至2018年,在2014年至2018年,在2014年至2018年,在2014年至2018年,使用沟和支持向量机(SVM)算法(SVM)算法的某些地区,监测红树林覆盖变化的方法(30米像素尺寸)。我们使用了兴趣区域(ROI)技术,以区分红树林,非洲红树,开放区域,水体和云对象。五类ROI的结果用于定义数据模型的所有数据集。该算法的实施结果表明,2014年至2015年的红树林封面沿着海滩和鱼塘的几个侧面减少了大幅下降。然而,从2016到2018年,红树林封面尤其在研究区域的南侧增加。这种变化模式显示了研究区中红树林封面的动态,主要是由鱼或虾池的发展和一些红树林恢复努力引起的。结果显示了基于Landsat 8 Oli的时空数据分析的SVM和GEE的潜力,以监测红树林覆盖的时间。然而,由水体或未溶结的沉积物影响的红树林的光谱特征使得红树林或非红树林区域的鉴定仍然具有挑战性。

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