A Mobile Deep Learning Model on Covid-19 CT-Scan Classification

Prastyo Eko Susanto, Arrie Kurniawardhan, Dhomas Hatta Fudholi, R. Rahmadi
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Abstract

COVID-19 pandemic is currently happening in the world. Previous studies have been done to diagnose COVID-19 by identifying CT-scan images through the development of the novel Joint Classification and Segmentation System models that work in real-time. In this study, the author focuses on a different motivation and innovation focused on the development of mobile deep learning. Mobile Net, a deep learning model as a method for classifying the disease COVID-19, is used as the base model. It has a good level of efficiency and reliability to be implemented on devices that have small memory and CPU specifications, such as mobile phones. The used data in this study is a CT-scan image of the lungs with a horizontal slice that has been classified as positive or negative for COVID-19. To give a broader analysis, the author compares and evaluates the model against other architectures, such as MobileNetV3 Large, MobileNetV3 Small, MobilenetV2, ResNet101, and EfficientNetB0. In terms of the developed mobile architecture model, the classification of COVID-19 using MobileNetV2 obtained the best result with 0.81 accuracy.
新型冠状病毒ct扫描分类的移动深度学习模型
当前,全球正在发生新冠肺炎大流行。之前的研究已经完成,通过开发实时工作的新型联合分类和分割系统模型,通过识别ct扫描图像来诊断COVID-19。在本研究中,作者将重点放在移动深度学习发展的不同动机和创新上。作为新冠肺炎分类方法的深度学习模型Mobile Net作为基础模型。它具有很高的效率和可靠性,可以在内存和CPU规格较小的设备(如移动电话)上实现。本研究使用的数据是肺部的ct扫描图像,其水平切片已被分类为COVID-19阳性或阴性。为了进行更广泛的分析,作者将该模型与其他架构(如MobileNetV3 Large、MobileNetV3 Small、MobilenetV2、ResNet101和EfficientNetB0)进行了比较和评估。在开发的移动架构模型中,使用MobileNetV2对COVID-19进行分类获得了最佳结果,准确率为0.81。
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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