首页> 外文期刊>Photogrammetric Engineering & Remote Sensing: Journal of the American Society of Photogrammetry >Integration of polarimetric decomposition, object-oriented image analysis, and decision tree algorithms for land-use and land-cover classification using RADARSAT-2 polarimetric SAR data.
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Integration of polarimetric decomposition, object-oriented image analysis, and decision tree algorithms for land-use and land-cover classification using RADARSAT-2 polarimetric SAR data.

机译:使用RADARSAT-2极化SAR数据对极化分解,面向对象的图像分析和决策树算法进行土地用途和土地覆盖分类的集成。

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摘要

A novel method which integrates polarimetric decomposition, object-oriented image analysis, and decision tree algorithms is presented for land-use and land-cover (LULC) classification using RADARSAT-2 polarimetric SAR (POLSAR) data. Polarimetric decomposition which is aimed at extracting polarimetric parameters related to the physical scattering mechanisms of the observed objects can be used to support the classification of POLSAR data. The main purposes of object-oriented image analysis are delineating image objects as well as extracting various textural and spatial features from image objects to improve classification accuracy. A decision tree algorithm provides an efficient way to select features and implement classification. Compared with the Wishart supervised classification which is based on the coherency matrix, the proposed method can significantly improve the overall accuracy and kappa value of LULC classification by 17.45 percent and 0.24, respectively. Further investigation was carried out on the contribution of polarimetric decomposition, object-oriented image analysis, and decision tree algorithms to the improvement achieved by the proposed method. The investigation shows that all these three methods contribute to the improvement achieved by the proposed method.
机译:提出了一种结合极化分解,面向对象图像分析和决策树算法的新颖方法,该方法利用RADARSAT-2极化SAR(POLSAR)数据进行土地利用和土地覆盖(LULC)分类。旨在提取与观测对象的物理散射机制有关的极化参数的极化分解可用于支持POLSAR数据的分类。面向对象的图像分析的主要目的是描绘图像对象以及从图像对象中提取各种纹理和空间特征以提高分类精度。决策树算法提供了一种选择特征和实现分类的有效方法。与基于一致性矩阵的Wishart监督分类相比,该方法可以将LULC分类的整体准确性和kappa值分别提高17.45%和0.24。进一步研究了极化分解,面向对象的图像分析和决策树算法对改进方法的贡献。调查表明,所有这三种方法都有助于改进该方法。

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