Int J Performability Eng ›› 2024, Vol. 20 ›› Issue (8): 487-497.doi: 10.23940/ijpe.24.08.p3.487497
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Nilesh Shelkea, Deepali Saleb, Sagar Shindec, *, Atul Katholed, and Rachna Somkunward
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*E-mail address: sagarshinde@ncerpune.in
Nilesh Shelke, Deepali Sale, Sagar Shinde, Atul Kathole, and Rachna Somkunwar. A Comprehensive Framework for Facial Emotion Detection using Deep Learning [J]. Int J Performability Eng, 2024, 20(8): 487-497.
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