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An ensemble deep transfer-learning approach to identify COVID-19 cases from chest X-ray images

机译:胸部X射线图像识别Covid-19案例的集合深度传输学习方法

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Novel coronavirus began in Wuhan, China back in December 2019. It has now outspread all over the world. Around 23 million people are currently affected by the novel coronavirus. It causes around 800,000 deaths globally. There are just about 300,000 people contaminated by COVID-19 in Bangladesh too. As it is an exceptional new pandemic infection, its diagnosis is challenging for the medical community. In regular cases, it is hard for developing countries to test cases frequently. The RT - PCR test is a generally utilized analysis framework for COVID-19 case detection. However, by utilizing X-ray image-based programs, recognition can diminish the expense and testing time. So it is important to program an effective recognition system to identify positive cases. In this paper, the author proposes an ensemble deep learning model, combining two state-of-art pre-trained models as ResNet-152 and DenseNet-121 to identify COVID-19 cases. The experimental validation result is immensely well with an accuracy of 98.43% on the proposed model. The author also compares the ensemble model’s performance with ResNet-50 and DenseNet-121 separately.
机译:新型冠状病毒开始于2019年12月回到武汉。它现在已经超越了世界各地。大约2300万人目前受到新的冠状病毒的影响。它在全球范围内造成约80万人死亡。在孟加拉国也有约克里的Covid-19污染了30万人。由于它是一种特殊的新大流行感染,其诊断对医学界具有挑战性。在普通情况下,发展中国家很难经常测试案件。 RT - PCR测试是用于Covid-19案例检测的通常使用的分析框架。然而,通过利用基于X射线图像的程序,识别可以减少费用和测试时间。因此,为识别积极案例来编制有效识别系统非常重要。在本文中,作者提出了一个集成的深度学习模型,将两个最先进的预先训练模型与Reset-152和DenSenet-121相结合,以识别Covid-19案例。实验验证结果对拟议模型的准确性良好,精度为98.43%。作者还将集合模型与Reset-50和DenSenet-121分开进行了比较。

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