Earth mover's distance-based CBIR using adaptive regularised Kernel fuzzy C-means method of liver cirrhosis histopathological segmentation

Nirmala S. Guptha, K. Patil
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引用次数: 2

Abstract

Liver cirrhosis is the most common disease, which caused many serious problems in adults and also old people. Much advancement has been arrived in the treatment and diagnosis of cirrhosis, still identifying the exact affected region is a challenging one. Content-based image retrieval in the identification of liver cirrhosis is a popular task performed usually, in which many techniques are introduced by the researchers so far. This paper is a part among all, which focus on providing the efficient detection of cirrhosis on the basis of separation and location of nuclei method. The liver cells are classified, and the overlapping of nuclei and non-nuclei cells is separated to evaluate the distance among them so as to locate the disease. The classification of cells is implemented with the help of adaptive regularised Kernel fuzzy C-means technique, and the distance between consecutive nuclei and non-nuclei is estimated by using earth movers distance. The experimental results and their analysis describe that the proposed method performs well than the other methods.
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应用自适应正则化核模糊c均值法对肝硬化组织病理分割的基于距离的推土机CBIR
肝硬化是最常见的疾病,它在成年人和老年人中引起了许多严重的问题。肝硬化的治疗和诊断已经取得了很大进展,但确定确切的受累区域仍然是一项具有挑战性的工作。基于内容的图像检索在肝硬化的识别中是一项常用的任务,迄今为止,研究人员引入了许多技术。本文是其中的一部分,主要致力于在细胞核分离定位法的基础上提供肝硬化的有效检测。对肝细胞进行分类,分离细胞核和非细胞核的重叠,以评估它们之间的距离,从而定位疾病。利用自适应正则核模糊C均值技术实现了细胞的分类,并利用地球运动距离估计了连续核与非核之间的距离。实验结果和分析表明,该方法比其他方法具有更好的性能。
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