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Design a simple Covid-19 detection using corodet: A deep learning-based classification
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5
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2023
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Abstract
Views Icon Views Article contents Figures & tables Video Audio Supplementary Data Peer Review Share Icon Share Twitter Facebook Reddit LinkedIn Tools Icon Tools Reprints and Permissions Cite Icon Cite Search Site Citation Muhammad Syaiful Aliim, Ari Fadli, Yogi Ramadhani, Yogiek Indra Kurniawan, Widhiatmoko Herry Purnomo; Design a simple Covid-19 detection using corodet: A deep learning-based classification. AIP Conf. Proc. 21 February 2023; 2482 (1): 030003. https://doi.org/10.1063/5.0110764 Download citation file: Ris (Zotero) Reference Manager EasyBib Bookends Mendeley Papers EndNote RefWorks BibTex toolbar search Search Dropdown Menu toolbar search search input Search input auto suggest filter your search All ContentAIP Publishing PortfolioAIP Conference Proceedings Search Advanced Search |Citation Search
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