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首页> 外文期刊>Journal of Applied Remote Sensing >Object-oriented fusion of RADARSAT-2 polarimetric synthetic aperture radar and HJ-1A multispectral data for land-cover classification
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Object-oriented fusion of RADARSAT-2 polarimetric synthetic aperture radar and HJ-1A multispectral data for land-cover classification

机译:RADARSAT-2极化合成孔径雷达和HJ-1A多光谱数据的面向对象融合,用于土地覆被分类

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摘要

The contribution of the integration of optical and polarimetric synthetic aperture radar (PolSAR) data to accurate land-cover classification was investigated. For this purpose, an object-oriented classification methodology that consisted of polarimetric decomposition, hybrid feature selection, and a support vector machine (SVM) was proposed. A RADARSAT-2 Fine Quad-Pol image and an HJ-1A CCD2 multispectral image were used as data sources. First, polarimetric decomposition was implemented for the RADARSAT-2 image. Sixty-one polarimetric parameters were extracted using different polarimetric decomposition methods and then merged with the main diagonal elements (T 11, T 22, T 33) of the coherency matrix to form a multichannel image with 64 layers. Second, the HJ-1A and the multichannel images were divided into numerous image objects by implementing multiresolution segmentation. Third, 1104 features were extracted from the HJ-1A and the multichannel images for each image object. Fourth, the hybrid feature selection method that combined the ReliefF filter approach and the genetic algorithm (GA) wrapper approach (ReliefF-GA) was used. Finally, land-cover classification was performed by an SVM classifier on the basis of the selected features. Five other classification methodologies were conducted for comparison to verify the contribution of optical and PolSAR data integration and to test the superiority of the proposed object-oriented classification methodology. Comparison results show that HJ-1A data, RADARSAT-2 data, polarimetric decomposition, ReliefF-GA, and SVM have a significant contribution by improving land-cover classification accuracy. (C) 2016 Society of Photo-Optical Instrumentation Engineers (SPIE).
机译:研究了光学和偏振合成孔径雷达(PolSAR)数据的集成对准确的土地覆盖分类的贡献。为此,提出了一种由极化分解,混合特征选择和支持向量机(SVM)组成的面向对象的分类方法。使用RADARSAT-2精细四极图像和HJ-1A CCD2多光谱图像作为数据源。首先,对RADARSAT-2图像进行极化分解。使用不同的极化分解方法提取了61个极化参数,然后将其与相干矩阵的主要对角元素(T 11,T 22,T 33)合并,以形成具有64层的多通道图像。其次,通过实现多分辨率分割,将HJ-1A和多通道图像分为多个图像对象。第三,从HJ-1A和每个图像对象的多通道图像中提取1104个特征。第四,使用了结合了ReliefF过滤器方法和遗传算法(GA)包装器方法(ReliefF-GA)的混合特征选择方法。最后,由SVM分类器根据所选特征进行土地覆盖分类。进行了五种其他分类方法进行比较,以验证光学和PolSAR数据集成的作用,并检验所提出的面向对象分类方法的优越性。比较结果表明,HJ-1A数据,RADARSAT-2数据,极化分解,ReliefF-GA和SVM对提高土地覆被分类的准确性有重要贡献。 (C)2016年光电仪器工程师协会(SPIE)。

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