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Research on an Urban Building Area Extraction Method with High-Resolution PolSAR Imaging Based on Adaptive Neighborhood Selection Neighborhoods for Preserving Embedding

机译:基于自适应邻域选择邻域的高分辨率波萨马映像的城市建筑区提取方法研究

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摘要

Feature extraction of an urban area is one of the most important directions of polarimetric synthetic aperture radar (PolSAR) applications. Ahigh-resolution PolSAR image has the characteristics of high dimensions and nonlinearity. Therefore, to find intrinsic features for target recognition, a building area extraction method for PolSAR images based on the Adaptive Neighborhoods selection Neighborhood Preserving Embedding (ANSNPE) algorithm is proposed. First, 52 features are extracted by using the Gray level co-occurrence matrix (GLCM) and five polarization decomposition methods. The feature set is divided into 20 dimensions, 36 dimensions, and 52 dimensions. Next, the ANSNPE algorithm is applied to the training samples, and the projection matrix is obtained for the test image to extract the new features. Lastly, the Support Vector machine (SVM) classifier and post processing are used to extract the building area, and the accuracy is evaluated. Comparative experiments are conducted using Radarsat-2, and the results show that the ANSNPE algorithm could effectively extract the building area and that it had a better generalization ability; the projection matrix is obtained using the training data and could be directly applied to the new sample, and the building area extraction accuracy is above 80%. The combination of polarization and texture features provide a wealth of information that is more conducive to the extraction of building areas.
机译:市区的特征提取是Polariemetric合成孔径雷达(POLSAR)应用中最重要的方向之一。 A高分辨率POLSAR图像具有高尺寸和非线性的特点。因此,为了找到目标识别的内在特征,提出了一种基于自适应邻域选择邻域(ANSNPE)算法的POLSAR图像的构建区域提取方法。首先,通过使用灰度共发生矩阵(GLCM)和五个偏振分解方法来提取52个特征。该功能集分为20个尺寸,36尺寸和52尺寸。接下来,将ANSNPE算法应用于训练样本,并且获得投影矩阵用于测试图像以提取新功能。最后,使用支持向量机(SVM)分类器和后处理来提取建筑物区域,评估精度。使用雷达拉特-2进行比较实验,结果表明,ANSNPE算法可以有效地提取建筑面积,并且它具有更好的泛化能力;使用训练数据获得投影矩阵,可以直接应用于新样本,建筑面积提取精度高于80%。极化和纹理特征的组合提供了丰富的信息,更有利于建筑区域的提取。

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