Multi Classification of Bacterial Microscopic Images Using Inception V3

I. Nurtanio, A. Bustamin, C. Yohannes, Alif Tri Handoyo
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引用次数: 0

Abstract

Microorganisms such as bacteria are the main cause of various infectious diseases such as cholera, botulism, gonorrhea, Lyme disease, sore throat, tuberculosis and so on. Therefore, identification and classification of bacteria is very important in the world of medicine to help experts diagnose diseases suffered by patients. However, manual identification and classification of bacteria takes a long time and a professional individual. With the help of artificial intelligence, we can effectively and efficiently classify bacteria and save a lot of time and human labor. In this study, a system was created to classify bacteria from microscopic image samples. This system uses deep learning with the transfer learning method. Inception V3 architecture was modified and retained using 108 image samples labeled with five types of bacteria, namely Acinetobacter baumanii, Escherichia coli, Neisseria gonorrhoeae, Propionibacterium acnes and Veionella. The data is then divided into training and validation using the k-fold cross validation method. Furthermore, the features that have been extracted by the model are trained with the configuration of minibatchsize 5, maxepoch 5, initiallearnrate 0.0001, and validation frequency 3. The model is then tested with data validation by conducting ten experiments and getting an average accuracy value of 94.42%.
利用Inception V3对细菌显微图像进行多分类
细菌等微生物是造成霍乱、肉毒杆菌中毒、淋病、莱姆病、咽喉痛、肺结核等各种传染病的主要原因。因此,细菌的鉴定和分类在医学领域非常重要,可以帮助专家诊断患者所患的疾病。然而,人工鉴定和分类细菌需要很长时间和一个专业的个人。在人工智能的帮助下,我们可以有效、高效地对细菌进行分类,节省大量的时间和人力。在这项研究中,创建了一个系统来从显微镜图像样本中对细菌进行分类。本系统采用了深度学习和迁移学习的方法。采用鲍曼不动杆菌、大肠杆菌、淋病奈瑟菌、痤疮丙酸杆菌和Veionella 5种细菌标记的108个图像样本,对Inception V3架构进行修改和保留。然后使用k-fold交叉验证方法将数据分为训练和验证。此外,使用minibatchsize 5、maxepoch 5、initiallearnrate 0.0001和验证频率3的配置对模型提取的特征进行训练。通过10次实验对模型进行数据验证,平均准确率为94.42%。
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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