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An Efficient SAR Image Segmentation Framework Using Transformed Nonlocal Mean and Multi-Objective Clustering in Kernel Space

机译:核空间中基于变换非局部均值和多目标聚类的高效SAR图像分割框架

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摘要

Synthetic aperture radar (SAR) image segmentation usually involves two crucial issues: suitable speckle noise removing technique and effective image segmentation methodology. Here, an efficient SAR image segmentation method considering both of the two aspects is presented. As for the first issue, the famous nonlocal mean (NLM) filter is introduced in this study to suppress the multiplicative speckle noise in SAR image. Furthermore, to achieve a higher denoising accuracy, the local neighboring pixels in the searching window are projected into a lower dimensional subspace by principal component analysis (PCA). Thus, the nonlocal mean filter is implemented in the subspace. Afterwards, a multi-objective clustering algorithm is proposed using the principals of artificial immune system (AIS) and kernel-induced distance measures. The multi-objective clustering has been shown to discover the data distribution with different characteristics and the kernel methods can improve its robustness to noise and outliers. Experiments demonstrate that the proposed method is able to partition the SAR image robustly and accurately than the conventional approaches.
机译:合成孔径雷达(SAR)图像分割通常涉及两个关键问题:合适的散斑噪声消除技术和有效的图像分割方法。在此,提出了一种同时考虑这两个方面的有效SAR图像分割方法。对于第一个问题,本研究引入了著名的非局部均值(NLM)滤波器,以抑制SAR图像中的乘法斑点噪声。此外,为了实现更高的去噪精度,通过主成分分析(PCA)将搜索窗口中的局部相邻像素投影到较低维子空间中。因此,在子空间中实现了非局部均值滤波器。然后,利用人工免疫系统(AIS)的原理和核诱导的距离测度,提出了一种多目标聚类算法。研究表明,多目标聚类可以发现具有不同特征的数据分布,而核方法可以提高其对噪声和离群值的鲁棒性。实验表明,与传统方法相比,该方法能够对SAR图像进行鲁棒和准确的分割。

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