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PSDSD-A Superpixel Generating Method Based on Pixel Saliency Difference and Spatial Distance for SAR Images

机译:PSDSD-A基于像素显着差和SAR图像的空间距离的超像素生成方法

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Superpixel methods are widely used in the processing of synthetic aperture radar (SAR) images. In recent years, a number of superpixel algorithms for SAR images have been proposed, and have achieved acceptable results despite the inherent speckle noise of SAR images. However, it is still difficult for existing algorithms to obtain satisfactory results in the inhomogeneous edge and texture areas. To overcome those problems, we propose a superpixel generating method based on pixel saliency difference and spatial distance for SAR images in this article. Firstly, a saliency map is calculated based on the Gaussian kernel function weighted local contrast measure, which can not only effectively suppress the speckle noise, but also enhance the fuzzy edges and regions with intensity inhomogeneity. Secondly, superpixels are generated by the local k-means clustering method based on the proposed distance measure, which can efficiently sort pixels to different clusters. In this step, the distance measure is calculated by combining the saliency difference and spatial distance with a proposed adaptive local compactness parameter. Thirdly, post-processing is utilized to clean up small segments. The evaluation experiments on the simulated SAR image demonstrate that our proposed method dramatically outperforms four state-of-the-art methods in terms of boundary recall, under-segmentation error, and achievable segmentation accuracy under almost all of the experimental parameters at a moderate segment speed. The experiments on real-world SAR images of different sceneries validate the superiority of our method. The superpixel results of the proposed method adhere well to the contour of targets, and correctly reflect the boundaries of texture details for the inhomogeneous regions.
机译:SuperPixel方法广泛用于合成孔径雷达(SAR)图像的处理。近年来,已经提出了许多用于SAR图像的超级销算法,并且尽管SAR图像的固有斑点噪声,但已经实现了可接受的结果。然而,现有算法仍然难以获得令人满意的结果,在不均匀的边缘和纹理区域中。为了克服这些问题,我们提出了一种基于本文中SAR图像的像素显着差和空间距离的超像素生成方法。首先,基于高斯内核函数加权本地对比度测量计算显着图,这不仅可以有效地抑制斑点噪声,而且还可以增强具有强度不均匀性的模糊边缘和区域。其次,基于所提出的距离测量的本地K-Means聚类方法生成超像素,其可以有效地对不同簇进行地分类像素。在该步骤中,通过将显着差和空间距离与所提出的自适应局部紧凑性参数组合来计算距离测量。第三,利用后处理来清理小段。模拟SAR图像的评估实验表明,我们所提出的方法在边界召回,下分割误差下大大优于四种最先进的方法,以及在中等段的几乎所有实验参数下实现的可实现的分割精度速度。不同风景的现实世界SAR图像的实验验证了我们方法的优越性。所提出的方法的超像素结果粘附良好地对目标的轮廓,并正确地反映了非均匀区域的纹理细节的边界。

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