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Selection of relevant features and TerraSAR-X products for classification of high resolution SAR images

机译:选择相关功能和TerraSAR-X产品以对高分辨率SAR图像进行分类

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Feature extraction and classification using synthetic aperture radar (SAR) images has been a very active research field over recent last years. Although a lot of features have been proposed and many classifiers have been employed, but there are few works on comparing these features for different TerraSAR-X (TSX) product. In principle, there are many features like gray level co-occurrence matrix, Gabor filters, quadrature mirror filters, and non-linear short time Fourier transform that can be very useful for TSX image classification. However, many of these features may be completely irrelevant for classification when different TSX products (standard or special process products) are used. Therefore, an important research direction is to identify the best features and appropriate TSX product for them using the Support Vector Machine and as a measure of the classification accuracy the precision -recall. The precision-recall was computed for all these features and products and after that we identify the feature and the product that perform better than the other. The results shows that: (1) the best feature extraction method is Gabor filters (with different scales and orientations) for almost of the TSX products with an average (for all the classes) of the precision between 89.72% and 97.41% and an average of the recall between 33.59% and 44.16% (depending by the TSX products) and (2) the best product from the multi-resolution product pyramid is the standard MGD-RE product. Our dataset was TerraSAR-X High Resolution Spotlight products taken over Venice and Toulouse where the actual ground cover was known to us. The novelty of this article lies in the fact that these features are applied for SAR images and compared to each other for a multi-resolution pyramid generated for TerraSAR-X MGD products.
机译:近年来,使用合成孔径雷达(SAR)图像进行特征提取和分类一直是非常活跃的研究领域。尽管已经提出了许多功能并采用了许多分类器,但是针对不同的TerraSAR-X(TSX)产品比较这些功能的工作很少。原则上,有很多功能,例如灰度共生矩阵,Gabor滤波器,正交镜滤波器和非线性短时傅立叶变换,这些功能对于TSX图像分类非常有用。但是,当使用不同的TSX产品(标准或特殊工艺产品)时,其中许多功能对于分类可能完全不相关。因此,重要的研究方向是使用支持向量机(SVM)为它们识别最佳功能和合适的TSX产品,并以此作为分类精度的度量。计算所有这些功能部件和产品的精确召回率,然后我们确定性能和产品均优于其他功能部件和产品。结果表明:(1)最佳特征提取方法是几乎所有TSX产品的Gabor滤波器(具有不同的比例和方向),其平均精度(所有类别)在89.72%和97.41%之间,并且平均召回率介于33.59%和44.16%之间(取决于TSX产品);(2)多分辨率产品金字塔中最好的产品是标准MGD-RE产品。我们的数据集是在威尼斯和图卢兹上空发现的TerraSAR-X高分辨率聚光灯产品,在这里我们知道了实际的地面覆盖范围。本文的新颖性在于,将这些功能应用于SAR图像,并相互比较,以针对TerraSAR-X MGD产品生成的多分辨率金字塔。

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