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A robust fuzzy c-means algorithm based on diffusion equation for sar image segmentation

机译:基于扩散方程的sar图像分割鲁棒模糊c均值算法

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Fuzzy c-means (FCM) algorithm and many modified ones have been widely used in image segmentation. But these methods are not adaptable to SAR images owing to the intrinsic speckle noise. In order to improve the noise-resistibility and the detail-preserving in SAR image segmentation, we propose a robust FCM algorithm based on diffusion equation (FCM DE). Firstly, the SAR image is diffused based on the partial differential equation to generate an auxiliary image, which is robust to speckles. Secondly, to make the algorithm more robust to outlier, the maximum probability of the local gray-level histogram is used to design an adaptive factor to adjust the effect of the diffusion term automatically. Moreover, this method can be extend to other PDE-based noise removal approaches and applied to other kinds of images, such as MR images and optical remote sensing images. Experiments on the simulated and real SAR images demonstrate the efficiency of FCM DE compared with other five fuzzy clustering algorithms in SAR images segmentation.
机译:模糊c均值(FCM)算法和许多改进的算法已广泛应用于图像分割中。但是由于固有的斑点噪声,这些方法不适用于SAR图像。为了提高SAR图像分割的抗噪性和细节保留率,提出了一种基于扩散方程(FCM DE)的鲁棒FCM算法。首先,基于偏微分方程对SAR图像进行扩散,以生成对斑点具有鲁棒性的辅助图像。其次,为了使算法对异常值更健壮,使用局部灰度直方图的最大概率来设计自适应因子,以自动调整扩散项的效果。此外,该方法可以扩展到其他基于PDE的噪声去除方法,并可以应用于其他类型的图像,例如MR图像和光学遥感图像。仿真和真实SAR图像的实验表明,与其他五种模糊聚类算法相比,FCM DE在SAR图像分割中具有较高的效率。

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