International Journal for Interdisciplinary Sciences and Engineering Applications
πΏ IJISEA πΏ
ISSN: 2582 - 6379
πPeer-Reviewed (Refereed) Journal β As per New UGC Guidelines
π’Call for Papers: We Accept Papers at any time Submit your manuscript for the upcoming issue of IJISEA | π Frequency:March,
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Volume 6 Issue 2, April 2025
Paper Title
Face Emotion Detection System Using Deep Learning
Authors
M. Anuradha1, K. Mokaksh2, T. Meghana3, V. Pujitha4, N. Harsha5
Affiliations
Department of Computer Science and Engineering, Amrita Sai Institute of Science & Technology, Paritala, Andhra Pradesh, India
Keywords
Emotion Detection, Deep Learning, CNN, Facial Recognition, Neural Networks
Abstract
Now-a-days with the continued development of artificial intelligence facial emotion recognition has become
more popular. The emotion recognition plays a major role in interaction technology. In interaction
technology the verbal components only play a one third of communication and the non-verbal components
plays a two third of communication. A facial emotion recognition (FER) method is used for detecting facial
expressions. Facial expression plays a major role in expressing what a person feels and it expresses inner
feeling and his or her mental situation or human perspective. This paper aims to identify basic human
emotions with the combination of gender classification and age estimation. The facial emotions such as
happy, sad, angry, fear, surprised, neutral emotions are considered as basic emotions. Here proposes a
real time facial emotion recognition system based on You Look Only Once (YOLO) version 2 architecture
and a squeezenet architecture. The yolo architecture is a real time object detection system. Here it used
for identify and detect faces in real time. These images are captured by using anchor boxes for accuracy.
The second architecture is squeezenet and is used for gender classification and age estimation. It provides
significant, accurate object detection and extracts high-level features that help to achieve tremendous
performance to classify the image and detecting objects. Both the architectures provide accurate result
than other methods with the large no of hidden layers and cross validation in the neural network.
How to Cite
Anuradha, M., Mokaksh, K., Meghana, T., Pujitha, V., & Harsha, N. (2025). Face Emotion Detection System Using Deep Learning. IJISEA - International Journal for Interdisciplinary Sciences and Engineering Applications, 6(2), 120β127. https://doi.org/10.5281/zenodo.15237456