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Image segmentation based on modified superpixel segmentation and spectral clustering

机译:基于改进的超像素分割和光谱聚类的图像分割

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Spectral clustering has been widely used for image segmentation recently. There are certain issues when using spectral clustering for image segmentation, such as a high complexity. Moreover, it commonly similarity measure is a Gaussian kernel function. However, spectral clustering is very sensitive to the scale parameters in this similarity measure, which is difficult to determine a suitable parameter. For these problems, a modified superpixel segmentation method and a new similarity measure for improving Ng-Jordan-Weiss (NJW) method are presented in this study. Then the improved NJW method is applied to image segmentation. In the authorsa?? scheme, their modified superpixel segmentation method will be utilised to divide the image into several small regions, which are called superpixels. Then, the NJW method is used to cluster these superpixels into some meaningful regions. In NJW, the similarity between two adjacent superpixels is measured by a kernel fuzzy similarity measure. The improving NJW method for image segmentation not only has lower complexity but also not sensitivity to scale parameters. Experimental results have demonstrated that their method visible improvement both in diminishing segmentation error, and also it has a higher efficiency.
机译:最近,光谱聚类已广泛用于图像分割。使用光谱聚类进行图像分割时,存在某些问题,例如复杂性高。而且,它通常的相似性度量是高斯核函数。但是,在这种相似性度量中,频谱聚类对比例参数非常敏感,很难确定合适的参数。针对这些问题,本文提出了一种改进的超像素分割方法和一种改进Ng-Jordan-Weiss(NJW)方法的新的相似性度量。然后将改进的NJW方法应用于图像分割。在作者里?方案中,将使用其改进的超像素分割方法将图像划分为几个小区域,这些区域称为超像素。然后,使用NJW方法将这些超像素聚类到一些有意义的区域。在NJW中,两个相邻超像素之间的相似性是通过核模糊相似性度量来度量的。改进的NJW图像分割方法不仅具有较低的复杂度,而且对比例参数也不敏感。实验结果表明,他们的方法在减小分割误差方面明显改善,而且效率更高。

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