LAND USE LAND COVER CHANGE MAPPING FROM SENTINEL 1B < 2A IMAGERY USING RANDOM FOREST ALGORITHM IN CÔTE D’IVOIRE

Ch. Kouassi, Chen Qian, Dilawar Khan, L. Achille, Zhang Kebin, J. K. Omifolaji, Tu Ya, Xiaohui Yang
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Abstract

Monitoring crop condition, soil properties, and mapping tillage activities can be used to assess land use, forecast crops, monitor seasonal changes, and contribute to the implementation of sustainable development policy. Agricultural maps can provide independent and objective estimates of the extent of crops in a given area or growing season, which can be used to support efforts to ensure food security in vulnerable areas. Satellite data can help detect and classify different types of soil. The evolution of satellite remote sensing technologies has transformed techniques for monitoring the Earth’s surface over the last several decades. The European Space Agency (ESA) and the European Union (EU) created the Copernicus program, which resulted in the European satellites Sentinel-1B (S1B) and Sentinel-2A (S2A), which allow the collection of multi-temporal, spatial, and highly repeatable data, providing an excellent opportunity for the study of land use, land cover, and change. The goal of this study is to map the land cover of Côte d’Ivoire’s West Central Soubre area (5°47′1′′ North, 6°35′38′′ West) between 2014 and 2020. The method is based on a combination of S1B and S2A imagery data, as well as three types of predictors: the biophysical indices Normalized Difference Vegetation Index “(NDVI)”, Modified Normalized Difference Water Index “(MNDWI)”, Normalized Difference Urbanization Index “(NDBI)”, and Normalized Difference Water Index “(NDWI)”, as well as spectral bands (B1, B11, B2, B3, B4, B6, B7, B8) and polarization coefficients VV. For the period 2014–2020, six land classifications have been established: Thick_Forest, Clear_Drill, Urban, Water, Palm_Oil, Bareland, and Cacao_Land. The Random Forest (RF) algorithm with 60 numberOfTrees was the primary categorization approach used in the Google Earth Engine (GEE) platform. The results show that the RF classification performed well, with outOfBagErrorEstimates of 0.0314 and 0.0498 for 2014 and 2020, respectively. The classification accuracy values for the kappa coefficients were above 95%: 96.42% in 2014 and 95.28% in 2020, with an overall accuracy of 96.97% in 2014 and 96 % in 2020. Furthermore, the User Accuracy (UA) and Producer Accuracy (PA) values for the classes were frequently above 80%, with the exception of the Bareland class in 2020, which achieved 79.20%. The backscatter coefficients of the S1B polarization variables had higher GINI significance in 2014: VH (70.80) compared to VH (50.37) in 2020; and VV (57.11) in 2014 compared to VV (46.17) in 2020. Polarization coefficients had higher values than the other spectral and biophysical variables of the three predictor variables. During the study period, the Thick_Forest (35.90% ± 1.17), Palm_Oil (57.59% ± 1.48), and Water (5.90% ± 0.47) classes experienced a regression in area, while the Clear_Drill (16.96% ± 0.80), Urban (2.32% ± 0.29), Bareland (83.54% ± 1.79), and Cacao_Land (35.14% ± 1.16) classes experienced an increase. The approach used is regarded as excellent based on the results obtained.
利用随机森林算法从科特迪瓦哨兵 1b < 2a 图像中绘制土地利用土地覆被变化图
通过监测作物状况、土壤特性和绘制耕作活动图,可以评估土地使用情况、预测作物生长情况、监测季节变化,并促进可持续发展政策的实施。农业地图可以对特定地区或生长季节的作物范围提供独立、客观的估计,可用于支持脆弱地区确保粮食安全的工作。卫星数据可帮助探测不同类型的土壤并对其进行分类。过去几十年来,卫星遥感技术的发展改变了地球表面的监测技术。欧洲航天局(ESA)和欧盟(EU)创建了哥白尼计划,并由此产生了欧洲哨兵-1B(S1B)和哨兵-2A(S2A)卫星,这两颗卫星可收集多时、空间和高重复性数据,为研究土地利用、土地覆盖和变化提供了绝佳机会。本研究的目标是绘制 2014 年至 2020 年科特迪瓦中西部苏布雷地区(北纬 5°47′1′,西经 6°35′38′)的土地覆被图。该方法基于 S1B 和 S2A 图像数据以及三种预测因子的组合:生物物理指数归一化差异植被指数(NDVI)、修正归一化差异水指数(MNDWI)、归一化差异城市化指数(NDBI)和归一化差异水指数(NDWI),以及光谱波段(B1、B11、B2、B3、B4、B6、B7、B8)和偏振系数 VV。在 2014-2020 年期间,确定了六种陆地分类:厚森林、清钻地、城市、水域、棕榈油地、裸地和可可地。谷歌地球引擎(GEE)平台使用的主要分类方法是随机森林(RF)算法(60 numberOfTrees)。结果显示,RF 分类效果良好,2014 年和 2020 年的 outOfBagErrorEstimates 分别为 0.0314 和 0.0498。卡帕系数的分类准确率值均高于 95%:2014 年和 2020 年的卡帕系数分别为 96.42% 和 95.28%,总体准确率分别为 96.97% 和 96%。此外,各等级的用户准确度(UA)和生产者准确度(PA)值经常高于 80%,只有 2020 年的裸地等级例外,仅为 79.20%。2014 年,S1B 极化变量的后向散射系数具有更高的 GINI 意义:2014 年的 VH(70.80)高于 2020 年的 VH(50.37);2014 年的 VV(57.11)高于 2020 年的 VV(46.17)。在三个预测变量中,极化系数的数值高于其他光谱和生物物理变量。在研究期间,厚森林(35.90%±1.17)、棕榈油(57.59%±1.48)和水(5.90%±0.47)类的面积有所减少,而清钻地(16.96%±0.80)、城市(2.32%±0.29)、裸地(83.54%±1.79)和可可地(35.14%±1.16)类的面积有所增加。根据所获得的结果,所使用的方法被认为是非常好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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