Deep Feature Wise Attention Based Convolutional Neural Network for Covid-19 Detection Using Lung CT Scan Images

Q3 Engineering
Lavanya Yamathi, K. Rani, P. Krishna
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引用次数: 0

Abstract

with the help of effective DL(Deep Learning) based algorithms. Though several clinical procedures and imaging modalities exists to diagnose Covid-19, these methods are time-consuming processes and sometimes the predictions are incorrect. Concurrently, AI (Artificial Intelligence) based DL models have gained attention in this area due to its innate capability for efficient learning. Though conventional systems have tried to perform better prediction, they lacked in accuracy with prediction rate. Moreover, the conventional systems have not utilized attention model completely for Covid-19 detection. This research is intended to resolve these pitfalls of covid-19 detection methods with the help of deep feature wise attention based Convolutional Neural Network. For this purpose, the data has been pre-processed by image resizing, the Residual Descriptor with Conv-BAM(Convolutional Block Attention Module) has been employed to obtain refined features from spatial and channel wise attention based module. The obtained features are used in the present study to improvise the classification as covid positive or negative. The performance of the proposed system has been assessed with regard to metrics to prove better efficiency. The proposed method achieved high accuracy rate of 97.82%. This DL based model can be used as a supplementary tool in the diagnosis of Covid-19 alongside other diagnostic method
基于深度特征明智注意的卷积神经网络用于肺CT扫描图像检测新冠肺炎
在有效的深度学习算法的帮助下。虽然有几种临床程序和成像方式可以诊断Covid-19,但这些方法耗时,有时预测不正确。同时,基于AI(人工智能)的深度学习模型由于其固有的高效学习能力而在这一领域受到关注。虽然传统的预测系统已经尝试进行更好的预测,但它们的准确率和预测率都有所不足。此外,传统的系统并没有完全利用注意力模型来检测新冠病毒。本研究旨在借助基于深度特征智能注意的卷积神经网络解决covid-19检测方法的这些缺陷。为此,通过图像大小调整对数据进行预处理,利用卷积块注意模块残差描述符从基于空间和通道的注意模块中获得精细化的特征。在本研究中使用获得的特征来临时分类为covid阳性或阴性。拟议系统的性能已根据指标进行评估,以证明效率更高。该方法的准确率达到97.82%。基于深度学习的模型可以作为新冠肺炎诊断的辅助工具,与其他诊断方法一起使用
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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CiteScore
1.50
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审稿时长
4 weeks
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