A modified CNN-based Covid-19 detection using CXR

<p>In this paper, a deep neural network for the purpose of detecting COVID-19 from Chest X-Ray (CXR) images is presented. Since this pandemic has emerged worldwide , there is no large dataset available for it. So for its detection, care must be taken not to use methods with high variance. Howe...

पूर्ण विवरण

में बचाया:
ग्रंथसूची विवरण
मुख्य लेखकों: Mohammad Hossein Amini1 (लेखक), Mohammad Bagher Menhaj (लेखक), Heidar Ali Talebi (लेखक)
स्वरूप: पुस्तक
प्रकाशित: Archives of Community Medicine and Public Health - Peertechz Publications, 2021-07-24.
विषय:
ऑनलाइन पहुंच:Connect to this object online.
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100 1 0 |a Mohammad Hossein Amini1  |e author 
700 1 0 |a  Mohammad Bagher Menhaj  |e author 
700 1 0 |a Heidar Ali Talebi  |e author 
245 0 0 |a A modified CNN-based Covid-19 detection using CXR 
260 |b Archives of Community Medicine and Public Health - Peertechz Publications,   |c 2021-07-24. 
520 |a <p>In this paper, a deep neural network for the purpose of detecting COVID-19 from Chest X-Ray (CXR) images is presented. Since this pandemic has emerged worldwide , there is no large dataset available for it. So for its detection, care must be taken not to use methods with high variance. However, for a deep neural network to get acceptable performance, we usually need huge amounts of datasets. Otherwise, there may be issues like overfitting. To resolve this problem, we use the beautiful idea of transfer learning. Training a deep neural network with the idea of transfer learning on 2 available datasets on the web, we achieved a COVID-19 detection accuracy of 98% on about 1000 test samples.</p><p>1(Use footnote for providing further information about author (webpage, alternative address)-not for acknowledging funding agencies.)</p> 
540 |a Copyright © Mohammad Hossein Amini1 et al. 
546 |a en 
655 7 |a Research Article  |2 local 
856 4 1 |u https://doi.org/10.17352/2455-5479.000154  |z Connect to this object online.