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首页> 外文期刊>Communications in Mathematical Biology and Neuroscience >Mycobacterium tuberculosis images classification based on combining of convolutional neural network and support vector machine
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Mycobacterium tuberculosis images classification based on combining of convolutional neural network and support vector machine

机译:基于卷积神经网络的组合及支持向量机的组成分枝杆菌图像分类

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摘要

Mycobacterium Tuberculosis (TB bacteria) is a rod-shaped bacterium with a very small size. This bacterium can cause lung disease known as Tuberculosis. These TB bacteria can be seen at least by using a conventional microscope with magnification 1000 times. Images that have been seen in a microscope will be further processed by digital image processing. The data used in this study were 100 captions. Based on the color of the TB bacteria, a sputum image is detected and then cropping is done. Total data on TB bacteria and non-bacterial crops in automatic cropping were 1266 crops consisting of 633 TB bacteria and 633 non-TB bacteria. The size of the TB bacteria and open TB bacteria have different pixel sizes, so it needs to resize the image with a size of 50 x 50 pixels. There are several Convolutional Neural Networks (CNN) architectures that have been tried in solving classification problems among them LeNet, AlexNet, ZFNet, GoogleNet, VGGNet and ResNet. In other studies, the accuracy was 95.05% using the Inception V3 method. In the case of this classification of TB bacteria, researchers proposed the ResNet-101 architecture with 224x224x3 pixel input data specifications, 347layer and 1000 full connected layer (fc1000). As for the classification, researchers used the Support Vector Machine (SVM) to determine TB bacteria or not TB bacteria. The results of this study resulted in an accuracy of 97.6%, 97.9% precision, 97.4% recall and F1 score 97.6%.
机译:结核分枝杆菌(Tb细菌)是具有非常小的棒状细菌。这种细菌可引起称为结核病的肺病。可以至少通过使用1000次倍率使用常规显微镜来观察到这些Tb细菌。在显微镜中看到的图像将通过数字图像处理进一步处理。本研究中使用的数据是100个标题。基于Tb细菌的颜色,检测到痰图像,然后进行裁剪。在自动裁剪中的Tb细菌和非细菌作物的总数据是1266种作物,包括633吨细菌和633个非Tb细菌。 Tb细菌和开放Tb细菌的大小具有不同的像素尺寸,因此需要调节尺寸为50×50像素的图像大小。有几种卷积神经网络(CNN)架构,已经尝试解决其中Lenet,AlexNet,ZfNet,Googlenet,Vggnet和Reset的分类问题。在其他研究中,使用初始V3方法,准确性为95.05%。在这种TB细菌分类的情况下,研究人员提出了具有224x224x3像素输入数据规范,347界和1000个全连接层(FC1000)的Reset-101架构。至于分类,研究人员使用支持向量机(SVM)来确定TB细菌或不是TB细菌。该研究的结果导致精度为97.6%,精度97.9%,97.4%召回和F1得分97.6%。

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