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SAR patch categorization using dual tree orientec wavelet transform and stacked autoencoder

机译:使用双树Orientec小波变换和堆叠式自动编码器的SAR补丁分类

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This paper presents a categorization of Synthetic Aperture Radar (SAR) data patches. The categories of the SAR data were designed manually by cutting several spotlight SAR products into different categories. The supervised approach to the categorization was proposed, where an oriented dual tree wavelet transform was used to decompose energy of the original image. Subbands of wavelet transforms with different orientations were used for computation of spectral features. The log commulants were estimated for each subband and 8 additional rotations were used for feature extraction. Those features were fed into stacked autoencoder (SAE). The SAE was pre-trained by greedy layer-wise training method. Capable of feature expression, SAE makes the fused features more distinguishable. Finally, the model is fine-tuned by a softmax classifier and applied to the categories selection of targets. The proposed method is comparable with the state-of-the art methods for SAR data categorization.
机译:本文介绍了合成孔径雷达(SAR)数据补丁的分类。 SAR数据的类别是通过将几种聚光灯SAR产品划分为不同类别来手动设计的。提出了一种分类的监督方法,其中使用定向的双树小波变换来分解原始图像的能量。具有不同方向的小波变换的子带被用于频谱特征的计算。估计每个子带的对数共通量,并使用8个额外的旋转进行特征提取。这些功能被输入到堆叠式自动编码器(SAE)中。通过贪婪分层训练方法对SAE进行了预训练。具有特征表达功能,SAE使融合的特征更具区别性。最后,通过softmax分类器对模型进行微调,并将其应用于目标的类别选择。所提出的方法与用于SAR数据分类的最新方法具有可比性。

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