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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Superpixel-Driven Optimized Wishart Network for Fast PolSAR Image Classification Using Global k -Means Algorithm
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Superpixel-Driven Optimized Wishart Network for Fast PolSAR Image Classification Using Global k -Means Algorithm

机译:SuperPixel驱动优化Wishart网络,用于使用全局K-Means算法的快速POLSAR图像分类

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摘要

Limitation of optical remote sensing technology gave rise to synthetic aperture radar (SAR) imaging. SAR is a microwave imaging technique, which promises to have a long-range propagation characteristic allowing imaging under harsh weather conditions or in hostile lighting situation. This has opened up a domain of classification using polarimetric SAR (PolSAR) images. In this article, we propose a fast PolSAR image classification algorithm, which uses not only pixel-based feature but also spatial features around each pixel. This is achieved by introducing superpixel-driven optimized Wishart network. The first improvement suggested in this article is to take advantage of a fast global $k$ -means algorithm for obtaining optimal cluster centers within each class. It uses real-valued vector representation of PolSAR coherency matrix along with fast matrix inverse and determinant algorithms to reduce computational overhead. Our method then exploits the information of neighboring pixels by forming a superpixel so that even a noisy pixel may not be assigned a wrong class label. The proposed network uses dual-branch architecture to efficiently combine pixel and superpixel features. We concluded that our proposed method has better efficiency in terms of classification accuracy and computational overhead compared with other deep learning-based methods available in the literature.
机译:光学遥感技术的限制产生了合成孔径雷达(SAR)成像。 SAR是一种微波成像技术,其承诺具有远程传播特性,允许在恶劣天气条件下或敌对的照明情况下成像。使用Polarimetric SAR(POLSAR)图像开辟了分类领域。在本文中,我们提出了一种快速的POLSAR图像分类算法,其不仅使用基于像素的特征,而且使用每个像素周围的空间特征。这是通过引入Superpixel驱动的优化Wishart网络来实现的。本文中建议的第一个改进是利用快速全球$ k $ -means算法,用于在每个类中获取最佳群集中心。它使用POLSAR一致性矩阵的实值矢量表示以及快速矩阵逆和确定算法来减少计算开销。然后,我们的方法通过形成超像素来利用相邻像素的信息,使得即使是嘈杂的像素也不能被分配错误的类标签。所提出的网络使用双分支架构有效地组合像素和超像素特征。我们得出的结论是,与文献中的其他深度学习的方法相比,我们所提出的方法在分类准确性和计算开销方面具有更好的效率。

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