土地覆盖分类的图像分类算法评估

A. Poudel, S. Bhatti, E. Bevilacqua
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引用次数: 0

摘要

摘要土地覆盖的识别、划定和绘图是资源管理和规划不可或缺的一部分,因为它为专题绘图和变化检测分析建立了基线。高分辨率卫星图像的可用性和机器学习算法的发展显著提高了土地覆盖分类的预测和准确性。在本研究中,对纽约州Tully村900平方公里的土地覆盖进行了7波段Landsat 9图像和8波段PlanetScope图像的土地覆盖分类。Landsat图像的分辨率为30米,而PlanetScope图像的分辨率为3米。在ArcGIS Pro中开发分类模式,分为五个分类级别:针叶林、阔叶林、农业、发达和水。基于像素的监督分类使用支持向量机(SVM)、随机树(RT)、k -近邻(K-NN)和最大似然分类器(MLC)进行。参考数据集由使用高分辨率图像的图像解释器获取,用于地图精度评估。所有Landsat影像分类方法的准确率都在78%以上,其中SVM的准确率最高,达到82%。对于PlanetScope图像,SVM表现最好,准确率为85%,而MLC的准确率最低,为77%。
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ASSESSMENT OF IMAGE CLASSIFICATION ALGORITHMS FOR LAND COVER CLASSIFICATIONS IN TULLY, NY
Abstract. The identification, delineation, and mapping of landcover is integral for resource management and planning as it establishes a baseline for thematic mapping and change detection analysis. The availability of high-resolution satellite imagery and the development of machine learning algorithms have significantly improved the prediction and accuracy of landcover classification. In this study, landcover classification is performed on seven-band Landsat 9 imagery and eight-band PlanetScope imagery for the village of Tully, NY, with an area of 900 square kilometers. The resolution of Landsat imagery is 30 meters, whereas the resolution of PlanetScope imagery is 3 meters. Classification schema is developed in ArcGIS Pro with five classification levels: conifer forest, hardwood forest, agriculture, developed, and water. Pixel-based supervised classification is performed using Support Vector Machine (SVM), Random Tress (RT), K-Nearest Neighbor (K-NN), and Maximum Likelihood Classifier (MLC). The reference dataset is acquired by an image interpreter using high-resolution imagery for map accuracy assessment. All the classification methods for Landsat imagery have more than 78% accuracy, but SVM performed best with 82% accuracy. For PlanetScope imagery, SVM performed best with 85% accuracy, whereas MLC had the lowest accuracy of 77%.
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CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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