<?xml version="1.0" encoding="UTF-8"?>
<doi_batch version="4.3.0" xmlns="http://www.crossref.org/doi_resources_schema/4.3.0" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.crossref.org/doi_resources_schema/4.3.0 http://www.crossref.org/schema/deposit/doi_resources4.3.0.xsd">
<head>
<doi_batch_id>998b1b71-bc29-4deb-a466-701f40099b9a</doi_batch_id>
<depositor>
<name>beie</name>
<email_address>director@blueeyesintelligence.org</email_address>
</depositor>
</head>
<body>
<doi_citations>
<doi>10.35940/ijitee.J9394.09101121</doi>
<citation_list><citation key="ref0"><unstructured_citation>Amjad, K. M. (2020). A Technique and Architectural Design for Criminal Detection based on Lombroso Theory Using Deep Learning. LGURJCSIT, 4(3), 47-63.</unstructured_citation></citation><citation key="ref1"><unstructured_citation>Anusha, P. P. (2020). FACIAL DETECTION IMPLEMENTATION USING PRINCIPAL COMPONENT ANALYSIS (PCA). Journal of Critical Reviews, 7(10), 1863-1872.</unstructured_citation></citation><citation key="ref2"><journal_title>Sensors</journal_title><author>Dzedzickis</author><volume>20</volume><issue>3</issue><first_page>592</first_page><cYear>2020</cYear><doi>10.3390/s20030592</doi><article_title>Human emotion recognition: Review of sensors and methods</article_title><unstructured_citation>Dzedzickis, A. K. (2020). Human emotion recognition: Review of sensors and methods. Sensors, 20(3), 592.</unstructured_citation></citation><citation key="ref3"><journal_title>Sensors</journal_title><author>Dzedzickis</author><volume>20</volume><issue>3</issue><first_page>592</first_page><cYear>2020</cYear><doi>10.3390/s20030592</doi><article_title>Human emotion recognition: Review of sensors and methods</article_title><unstructured_citation>Dzedzickis, A. K. (2020). Human emotion recognition: Review of sensors and methods. . Sensors, 20(3), 592.</unstructured_citation></citation><citation key="ref4"><doi>10.1145/1178657.1178665</doi><unstructured_citation>Koshimizu, T. T. (2006, October ). Factors on the sense of privacy in video surveillance. In Proceedings of the 3rd ACM workshop on Continuous archival and retrieval of personal experiences, pp. 35-44.</unstructured_citation></citation><citation key="ref5"><doi>10.1080/17439884.2020.1686016</doi><unstructured_citation>McStay, A. (2020). Emotional AI and EdTech: serving the public good? Learning, Media and Technology, 45(3), 270-283.</unstructured_citation></citation><citation key="ref6"><journal_title>Sensors</journal_title><author>Mehta</author><volume>18</volume><issue>2</issue><first_page>416</first_page><cYear>2018</cYear><doi>10.3390/s18020416</doi><article_title>Facial emotion recognition: A survey and real-world user experiences in mixed reality</article_title><unstructured_citation>Mehta, D. S. (2018). Facial emotion recognition: A survey and real-world user experiences in mixed reality. Sensors, 18(2), 416.</unstructured_citation></citation></citation_list>
</doi_citations>
</body>
</doi_batch>
