Landsat 8Bands的1到7个光谱矢量加上机器学习,利用谷歌地球引擎改进土地利用/覆盖分类

IF 2.7 Q1 GEOGRAPHY Annals of GIS Pub Date : 2022-02-14 DOI:10.1080/19475683.2022.2026475
A. H. N. Mfondoum, Sofia Hakdaoui, Roseline Batcha
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引用次数: 2

摘要

摘要:本文探讨了一种基于Landsat 8可见光波段(深蓝(1)至短波红外(7))光谱矢量的方法,以改进城市地物分类。利用谷歌Earth Engine云环境下基于二波段和三波段组合的两种不同比例模型,提出了减少不确定性光谱向量(USVr)、向前连续光谱向量(OSVc)和向前不连续光谱向量(OSVd)作为土地利用土地覆盖(LULC)分类的新条目。构建两种不同大小的数组,即42个向量和15个向量对应相同数量的导数波段和新像素值。在J.48中建立了一个决策树,并应用于选择最合适的导数波段进行分析。然后,将选择的样本进行堆叠,并通过监督过程提交给五个机器学习分类器,分别是分类与回归树(CART)、随机森林(RF)梯度增强(GBR)、支持向量机(SVM)和最小距离(MD)。该方法在喀麦隆西部高原巴门达和富尔班两个城市进行了试验,因为这两个城市对热带丘陵城市的空间异质性具有较好的代表性。在巴门达,4/5个分类器在0.82 kappa系数KC的情况下,结合SVM/OSVd,总体准确率达到87%,结果令人满意。而在fouban中,对于SVM/USVr组合,分类器的oa高达85%,KC为0.78。只有MD分类器的oa始终低于80%。据我们所知,该过程提供了更多尚未探索的隐藏光谱指数的可能性,以检测和区分LULC特征,以及准确提取人类住区,这比直接在多光谱(MS)图像上执行分类器更好。
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Landsat 8Bands’ 1 to 7 spectral vectors plus machine learning to improve land use/cover classification using Google Earth Engine
ABSTRACT This paper explores a spectral vector-based methodology on Landsat 8 bands of the visible wavelengths, that is deep-blue (1) to shortwave infrared (7), to improve the urban land features classification. Using two different ratio models, based on two and three bands’ combinations in the cloud environment of Google Earth Engine, the Uncertainty reducing Spectral Vector (USVr), the Onward Continuous Spectral Vector (OSVc) and the Onward Discontinuous Spectral Vector (OSVd) are proposed as new entries for the land use land cover (LULC) classification. Two different sizes of arrays are built, i.e. 42 vectors and 15 vectors corresponding to the same number of derivative bands and new pixels′ values. A decision tree is built in J.48 and applied to select the most suitable derivative bands for the analysis. Hereafter, the selected ones are stacked and submitted to five machine learning classifiers using a supervised process, namely, Classification and Regression Trees (CART), Random Forest (RF) Gradient Boosting (GBR), Support Vector Machine (SVM) and Minimum Distance (MD). This method was tested in the two cities of Bamenda and Foumban in west-Cameroon highlands, due to their good representativeness of tropical hilly urban areas’ spatial heterogeneity. The results are satisfying for 4/5 classifiers, up to 87% Overall Accuracy, OA, for 0.82 kappa coefficient, KC, in Bamenda, while combining SVM/OSVd. Whereas, in Foumban, the classifiers perform up to 85%OA and 0.78 KC for the combination SVM/USVr. Only the MD classifier has always performed below 80%OA. The process has been found better than performing classifiers directly on the multispectral (MS) image, by providing more possibilities of hidden spectral indices not yet explored, as far as we know, to detect and discriminate between LULC features, plus an accurate extraction of human settlements.
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来源期刊
Annals of GIS
Annals of GIS Multiple-
CiteScore
8.30
自引率
2.00%
发文量
31
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