Klasifikasi Down Syndrome Menggunakan Tekstur LBP dengan Tiga Variasi Distance Classifiers

A. Nugroho, Yustisi Wulandari, B. Cahyono
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Abstract

Down syndrome is the most easily identified and most common genetic disorder. Down syndrome variation of trisomy 21 has characteristics that are common to people with Down syndrome. But, children with this Down syndrome variation have slight differences in the mouth and appearance because they tend to have similar oral features with their parents and siblings so that distinguishing them is quite complex. Therefore, it is important to know in more details the special characteristics of children with Down syndrome. This study aims to create an innovative image processing-based system so that it is more practical to classify people with down syndrome and normal people. The method that can be used is the Local Binary Pattern (LBP) method. This study used 2400 mouth frames of children with Down syndrome and normal children for data training. Then, it also uses 3600 mouth frames for children with Down syndrome and normal children for testing data. The results obtained are the threshold value which gives a good classification of 0.1-0.2 for the three variations of the distance calculation method. The Euclidean and Chebychev methods have an accuracy quality of 100% while the City block method at the threshold of 0.1-0.2 has an accuracy of 91.6. So, it can be said that the most accurate method in this research is the Chebychev, Euclidean, then City Block method.
唐氏综合症是最容易识别和最常见的遗传疾病。唐氏综合症21三体变异具有唐氏综合症患者共同的特征。但是,患有这种唐氏综合症变异的儿童在口腔和外表上有轻微的差异,因为他们往往与父母和兄弟姐妹有相似的口腔特征,所以区分他们是非常复杂的。因此,更详细地了解唐氏综合症儿童的特殊特征是很重要的。本研究旨在创建一种创新的基于图像处理的系统,从而使唐氏综合症患者和正常人的分类更加实用。可以使用的方法是局部二进制模式(LBP)方法。本研究使用2400个唐氏综合症儿童和正常儿童的口架进行数据训练。然后,它还使用3600个唐氏综合症儿童和正常儿童的嘴框作为测试数据。所得结果为阈值,对距离计算方法的三种变化给出了0.1-0.2的良好分类。Euclidean和Chebychev方法的准确率为100%,而City block方法在0.1-0.2阈值下的准确率为91.6。因此,可以说在本研究中最准确的方法是Chebychev法,欧几里得法,然后是City Block法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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