<doi_batch xmlns="http://www.crossref.org/schema/4.4.0" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" version="4.4.0"><head><doi_batch_id>06f05083-5d6c-416c-9e9b-eee5fd9e4e8f</doi_batch_id><timestamp>20220504041134112</timestamp><depositor><depositor_name>naun:naun</depositor_name><email_address>mdt@crossref.org</email_address></depositor><registrant>MDT Deposit</registrant></head><body><journal><journal_metadata language="en"><full_title>International Journal of Biology and Biomedical Engineering</full_title><issn media_type="electronic">1998-4510</issn><archive_locations><archive name="Portico"/></archive_locations><doi_data><doi>10.46300/91011</doi><resource>http://www.naun.org/cms.action?id=3041</resource></doi_data></journal_metadata><journal_issue><publication_date media_type="online"><month>1</month><day>10</day><year>2022</year></publication_date><publication_date media_type="print"><month>1</month><day>10</day><year>2022</year></publication_date><journal_volume><volume>16</volume><doi_data><doi>10.46300/91011.2022.16</doi><resource>https://npublications.com/journals/bio/2022.php</resource></doi_data></journal_volume></journal_issue><journal_article language="en"><titles><title>Face Mask Wearing Detection using Independent Component Analysis and Naïve Bayes Classifier</title></titles><contributors><person_name sequence="first" contributor_role="author"><given_name>Ayman M</given_name><surname>Mansour</surname><affiliation>Computer and Communication Department, Tafila Technical University, ‘IS, Tafila, 66110, Jordan</affiliation></person_name></contributors><jats:abstract xmlns:jats="http://www.ncbi.nlm.nih.gov/JATS1"><jats:p>In this paper, a new method was developed to detect the face mask wearing conditions using both Independent Component Analysis as a feature extractor and naïve Bayes as a classifies. The method was tested using real face images. The dataset was used for both training and testing. The MATLAB is used as programming software. The achieved accuracy in the testing 92.67%. The method was also tested using real live face pictures. 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