使用WorldView-2图像在西非农林复合景观中绘制树种的机器学习模型比较

Muhammad Usman, M. Ejaz, J. Nichol, M. S. Farid, Sawaid Abbas, M. H. Khan
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引用次数: 1

摘要

农田树木是当地经济的重要组成部分,因为农民用树木作为薪材、食物、饲料、药物、纤维和建筑材料。因此,树种测绘对生态、社会经济和自然资源管理具有重要意义。该研究评估了用于尼日利亚北部卡诺近定居区(KCSZ)农林业景观树种分类的高分辨率遥感WorldView-2 (WV-2)图像。利用地理物象图像分析(GEOBIA)提取的单株树冠,在物象水平上对9种优势树种(Faidherbia albida、Anogeissus leiocarpus、Azadirachta indica、Diospyros messpiliformis、Mangifera indica、Parkia biglobosa、Piliostigma reticulatum、Tamarindus indica和Vitellaria paradoxa)进行了远程鉴定。利用WV-2影像的8个原始光谱波段及其光谱统计量(最小值、最大值、平均值、标准差等)、空间、纹理和色彩空间(色相、饱和度)以及不同的光谱植被指数(VI)作为参考数据集中每个树物的树种分类预测变量。使用了9种不同的机器学习方法进行对象级树种分类。这些是额外梯度增强(XGB),高斯Naïve贝叶斯(GNB),梯度增强(GB), k近邻(KNN),光梯度增强机(LGBM),逻辑回归(LR),多层感知器(MLP),随机森林(RF)和支持向量机(SVM)。与其他机器学习方法相比,在单个树种分类准确率方面表现最好的两种模型是SVM(总体准确率= 82.1%,Cohen 's kappa = 0.79)和MLP(总体准确率= 81.7%,Cohen 's kappa = 0.79),其错误分类树的数量最少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Machine Learning Models for Mapping Tree Species Using WorldView-2 Imagery in the Agroforestry Landscape of West Africa
Farmland trees are a vital part of the local economy as trees are used by farmers for fuelwood as well as food, fodder, medicines, fibre, and building materials. As a result, mapping tree species is important for ecological, socio-economic, and natural resource management. The study evaluates very high-resolution remotely sensed WorldView-2 (WV-2) imagery for tree species classification in the agroforestry landscape of the Kano Close-Settled Zone (KCSZ), Northern Nigeria. Individual tree crowns extracted by geographic object-based image analysis (GEOBIA) were used to remotely identify nine dominant tree species (Faidherbia albida, Anogeissus leiocarpus, Azadirachta indica, Diospyros mespiliformis, Mangifera indica, Parkia biglobosa, Piliostigma reticulatum, Tamarindus indica, and Vitellaria paradoxa) at the object level. For every tree object in the reference datasets, eight original spectral bands of the WV-2 image, their spectral statistics (minimum, maximum, mean, standard deviation, etc.), spatial, textural, and color-space (hue, saturation), and different spectral vegetation indices (VI) were used as predictor variables for the classification of tree species. Nine different machine learning methods were used for object-level tree species classification. These were Extra Gradient Boost (XGB), Gaussian Naïve Bayes (GNB), Gradient Boosting (GB), K-nearest neighbours (KNN), Light Gradient Boosting Machine (LGBM), Logistic Regression (LR), Multi-layered Perceptron (MLP), Random Forest (RF), and Support Vector Machines (SVM). The two top-performing models in terms of highest accuracies for individual tree species classification were found to be SVM (overall accuracy = 82.1% and Cohen’s kappa = 0.79) and MLP (overall accuracy = 81.7% and Cohen’s kappa = 0.79) with the lowest numbers of misclassified trees compared to other machine learning methods.
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