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A comparison of cluster distance metrics for the segmentation of sputum color image using unsupervised hopfield neural network classifier

机译:使用无监督Hopfield神经网络分类器的痰彩色图像分割聚类距离度量的比较

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Unsupervised Hopfield Neural Network classifier (UHNNC) is an operational process appropriate for the segmentation of different type of medical and natural images. Its efficiency subsidizes not only to its start from a random initialization for the assignment of each pixel to only and only one cluster but also to its convergence to an advanced optimal solution in a pre-specified number of iterations. In this paper, we present a study of the distance type effect on the segmentation result using UHNNC. We have used a database of 1000 sputum color images prepared to be used in a screening process for lung cancer diagnosis. A quantitative comparison between the results obtained using the Euclidian and the Manhattan distance or city block distance showed that the former gives better classification or segmentation to the pixels of the different cells present in the sputum color images.
机译:无监督的Hopfield神经网络分类器(UHNNC)是适用于分割不同类型的医学图像和自然图像的操作过程。它的效率不仅可以从随机初始化开始(每个像素只能分配给一个像素)开始,而且还可以以预定的迭代次数收敛到高级优化解决方案。在本文中,我们对使用UHNNC的距离类型对分割结果的影响进行了研究。我们已经使用了准备用于肺癌诊断筛查过程的1000份痰彩色图像数据库。使用欧几里得距离和曼哈顿距离或城市街区距离获得的结果之间的定量比较表明,前者对痰液彩色图像中存在的不同细胞的像素提供了更好的分类或分割。

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