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Ensemble-based bag of features for automated classification of normal and COVID-19 CXR images

机译:基于合奏的套件特性,用于正常和Covid-19 CXR图像的自动分类

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The medical and scientific communities are currently trying to treat infected patients and develop vaccines for preventing a future outbreak. In healthcare, machine learning is proven to be an efficient technology for helping to combat the COVID-19. Hospitals are now overwhelmed with the increased infections of COVID-19 cases and given patients' confidentiality and rights. It becomes hard to assemble quality medical image datasets in a timely manner. For COVID-19 diagnosis, several traditional computer-aided detection systems based on classification techniques were proposed. The bag-of-features (BoF) model has shown a promising potential in this domain. Thus, this work developed an ensemble-based BoF classification system for the COVID-19 detection. In this model, we proposed ensemble at the classification step of the BoF. The proposed system was evaluated and compared to different classification systems for different number of visual words to evaluate their effect on the classification efficiency. The results proved the superiority of the proposed ensemble-based BoF for the classification of normal and COVID19 chest X-ray (CXR) images compared to other classifiers.
机译:医疗和科学社区目前正在努力治疗受感染的患者,并开发疫苗,以防止未来的爆发。在医疗保健中,经过验证的机器学习是一种有效的技术,帮助打击Covid-19。医院现在被Covid-19案件的感染增加,并且给予患者的机密性和权利。及时组装质量医学图像数据集。对于Covid-19诊断,提出了基于分类技术的几种传统的计算机辅助检测系统。袋 - 特点(BOF)模型在该领域中显示了有希望的潜力。因此,这项工作开发了一种基于集合的BOF分类系统,用于Covid-19检测。在此模型中,我们在BOF的分类步骤中提出了合奏。评估所提出的系统,并与不同数量的视觉词的不同分类系统进行评估,以评估它们对分类效率的影响。结果证明了与其他分类器相比,拟议的基于集合的BOF的基于BOF的优势。

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