A Concept-Based Review on Generative Adversarial Network for Generating Super Resolution Medical Image Using SWOT Analysis

Saba Ibrahim David, S. Bashir, Mohammed D. Abdulmalik
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Abstract

Several alarming health challenges are urging medical experts and practitioners to research and develop new approaches to diagnose, detect and control the early spread of deadly diseases. One of the most challenging is Coronavirus Infection (Covid-19). Models have been proposed to detect and diagnose early infection of the virus to attain proper precautions against the Covid-19 virus. However, some researchers adopt parameter optimization to attain better accuracy on the Chest X-ray images of covid-19 and other related diseases. Hence, this research work adopts a hybridized cascaded feature extraction technique (Local Binary Pattern LBP and Histogram of Oriented Gradients HOG) and Convolutional Neural Network CNN for the deep learning classification model. The merging of LBP and HOG feature extraction significantly improved the performance level of the deep-learning CNN classifier. As a result, 95% accuracy, 92% precision, and 93% recall are attained by the proposed model.
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基于概念的生成对抗网络超分辨率医学图像的SWOT分析综述
一些令人震惊的卫生挑战促使医学专家和从业人员研究和开发诊断、检测和控制致命疾病早期传播的新方法。其中最具挑战性的是冠状病毒感染(Covid-19)。已经提出了检测和诊断病毒早期感染的模型,以获得针对Covid-19病毒的适当预防措施。然而,一些研究人员通过参数优化来提高covid-19及其他相关疾病胸部x线图像的准确性。因此,本研究采用混合级联特征提取技术(局部二值模式LBP和定向梯度直方图HOG)和卷积神经网络CNN进行深度学习分类模型。LBP和HOG特征提取的融合显著提高了深度学习CNN分类器的性能水平。结果表明,该模型的准确率为95%,精密度为92%,召回率为93%。
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