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Automated segmentation of Giemsa stained microscopic images based on entropy value

机译:Giemsa染色显微图像基于熵值的自动分割

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This paper proposes a computerized approach to extract and examine the Giemsa stained microscopic medical images. Image examination is an essential procedure in most of the disease identification procedures. In the proposed work, a soft computing approach is implemented to analyze clinical images registered with digital microscope. In this approach, recently developed soft computing procedure known as the Social Group Optimization (SGO) and the entropy function is chosen to mine the Region Of Interest (ROI) from Giemsa stained digital images. In this work, extraction of the blood cell region and the plasmodium species is chosen as the problem. Proposed experimental work is implemented using MATLAB. A relative analysis is presented between the entropy functions, like Kapur and Tsallis. The performance of the Kapur/Tsallis functions is assessed using well known image quality measures and the shape measured based on the GLCM. The experimental outcome confirms that, Kapur's approach is efficient in extracting the ROI from the digital microscopic images with lesser CPU time compared with Tsalli's entropy.
机译:本文提出了一种计算机化的方法来提取和检查吉姆萨染色的显微医学图像。在大多数疾病识别程序中,图像检查是必不可少的程序。在提出的工作中,采用了一种软计算方法来分析用数字显微镜记录的临床图像。在这种方法中,最近开发的称为社会群体优化(SGO)的软计算程序和熵函数被选择为从Giemsa染色的数字图像中挖掘感兴趣区域(ROI)。在这项工作中,选择血细胞区域和疟原虫种类的提取是问题。拟议的实验工作是使用MATLAB实现的。在熵函数之间,例如Kapur和Tsallis,进行了相关分析。使用众所周知的图像质量度量和基于GLCM度量的形状来评估Kapur / Tsallis函数的性能。实验结果证实,与Tsalli的熵相比,Kapur的方法可以有效地从数字显微图像中提取ROI,而CPU时间更少。

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