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Mixture-Based Superpixel Segmentation and Classification of SAR Images

机译:基于混合的SAR图像超像素分割与分类

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摘要

We propose a mixture-based superpixel segmentation method for synthetic aperture radar (SAR) images. The method uses SAR image amplitudes and pixel coordinates as features. The feature vectors are modeled statistically by taking into account the SAR image statistics. We resort to finite mixture models to cluster the pixels into superpixels. After superpixel segmentation, we classify different land covers such as urban, land, and lake using the features extracted from each superpixel. Based on the classification results obtained on real TerraSAR-X images, it is shown that the results obtained by the proposed superpixel method are capable of achieving a more accurate classification compared with those obtained by state-of-the-art superpixel segmentation methods such as quick-shift, turbo pixels, simple linear iterative clustering, and pixel intensity and location similarity.
机译:我们为合成孔径雷达(SAR)图像提出了一种基于混合的超像素分割方法。该方法以SAR图像幅度和像素坐标为特征。通过考虑SAR图像统计数据对特征向量进行统计建模。我们采用有限混合模型将像素聚类为超像素。在对超像素进行分割之后,我们使用从每个超像素提取的特征对不同的土地覆盖物进行分类,例如城市,土地和湖泊。根据在真实TerraSAR-X图像上获得的分类结果,表明与通过最新的超像素分割方法(例如)获得的结果相比,通过提议的超像素方法获得的结果能够实现更准确的分类快速移动,turbo像素,简单的线性迭代聚类以及像素强度和位置相似性。

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