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Identification of Remote Sensing-Based Land Cover Types Combining Nearest-Neighbor Classification and SEaTH Algorithm

机译:识别最近邻分类和Seath算法的遥感陆地覆盖类型

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The development of spaceborne remote sensing has greatly facilitated the land cover mapping at various spatial scales. Classification accuracy, however, is usually affected by the heterogeneous spectra of different land cover types for medium-low-spatial-resolution images. The study is aimed at improving the classification accuracy at a city scale by proposing a hierarchical classification method. Time-series Landsat-5 and Landsat-8 Operational Land Imager remote sensing images of 4 years were used as the classified images. A total of six first-class land cover types were determined, namely woodland, grassland, cropland, wetland, artificial surface and others. The object-based image analysis was chosen over pixel-based approaches. More specifically, the nearest-neighbor (NN) classification and SEparability and THresholds (SEaTH) algorithm were combined to produce a hierarchical classification method (NN-SEaTH). SEaTH algorithm was first used to extract the wetland after performing image segmentation in eCognition Developer. Then, the non-wetland was further classified to vegetation and non-vegetation by using a normalized difference vegetation index image. Finally, the other types were then obtained using the NN classification. To validate the proposed method, the NN classifier and NN-SEaTH method were compared. The proposed technique is shown to increase the overall accuracy (OA) and kappa coefficient (k) for the 4 years. The OA andkare, respectively, 96.46% and 0.9231, 96.63% and 0.9269, 96.88% and 0.9394, 95.22% and 0.9239 that are much larger than 88.13% and 0.7503, 88.83% and 0.7660, 88.64% and 0.7630, 87.33% and 0.7371 derived from the NN approach. The study provides a reference for medium-resolution-based land cover mapping by a hierarchical classification.
机译:太空载遥感的发展极大地促进了各种空间尺度的陆地覆盖范围。然而,分类准确性通常受到中低空间分辨率图像的不同土地覆盖类型的异质光谱的影响。该研究旨在通过提出分层分类方法来提高城市规模的分类准确性。时间序列Landsat-5和Landsat-8运行陆地成像器4年的遥感图像被用作分类图像。确定了六种一流的土地覆盖类型,即林地,草原,农田,湿地,人造表面等。选择基于对象的图像分析在基于像素的方法上。更具体地,结合了最近邻(NN)分类和可分离和阈值(Seath)算法以产生分层分类方法(NN-Seate)。首先使用Seath算法在执行Ecognition Developer中执行图像分割后提取湿地。然后,通过使用归一化差异植被指数图像,非湿地进一步分类为植被和非植物。最后,然后使用NN分类获得其他类型。为了验证所提出的方法,比较了NN分类器和NN-Seatch方法。所提出的技术显示为4年来提高整体精度(OA)和Kappa系数(K)。 OA Andkare分别为96.46%和0.9231,96.63%和0.9269,96.88%和0.9394,95.2%和0.9239,95.22%和0.9239,高于88.13%和0.7503,88.83%和0.7660,88.64%和0.7630,87.3%和0.7371衍生从NN方法。该研究提供了通过分层分类的基于中分辨率的陆地覆盖映射的参考。

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