Identification and Classification of Pathogenic Bacteria Using the K-Nearest Neighbor Method

D. Rahmawati, Mutiara Puspa Putri I, M. Ulum, K. Joni
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引用次数: 1

Abstract

Bacteria are a group of living things or organisms that do not have a core covering. In the grouping, some bacteria are pathogenic. With a microscopic size, many pathogenic bacteria are found around and spread through the food eaten or by touching objects around them, then cause diseases such as diarrhea, vomiting, and others. As a more effective effort to help the government and society prevent disease caused by pathogenic bacteria, a system for the identification and classification of pathogenic bacteria K-Nearest Neighbor was created. This system uses a biological microscope that is attached to a webcam camera above the ocular lens as a tool to see bacterial objects and assist in bacterial capture. Rough player rotates automatically (auto-focus) in image capture. In the process of classification and identifying bacteria, the K-Nearest Neighbor method is used, which is a method with the calculation of the nearest neighbor or calculation based on the level of similarity to the dataset. In this study, the bacteria vibrio chlorae, staphylococcus aereus, and streptococcus m. with the highest accuracy is the K = 9 value of 97.77% using the Chebyshev method.
病原菌的k近邻鉴定与分类
细菌是一群没有核心覆盖物的生物或有机体。在分组中,有些细菌是致病的。许多致病菌的大小很小,它们存在于周围,并通过所吃的食物或接触周围的物体传播,然后引起腹泻、呕吐等疾病。为了更有效地帮助政府和社会预防由病原菌引起的疾病,建立了病原菌鉴定和分类系统K-Nearest neighbour。该系统使用生物显微镜,将其连接到眼镜片上方的网络摄像头上,作为观察细菌物体并协助捕获细菌的工具。粗糙的球员自动旋转(自动对焦)在图像捕获。在细菌的分类和识别过程中,使用K-Nearest Neighbor method,即计算最近邻或根据与数据集的相似程度进行计算的方法。在本研究中,采用Chebyshev法对绿弧菌、绿葡萄球菌和链球菌的检测准确率最高,K = 9值为97.77%。
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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