Master'sOpen Access

Facial Expression Recognition using Convolutional Neural Networks

2023
0 views
0 downloads
Advisor: Adnan (Supervisor) Acan

Abstract (EN)

The ability to recognize facial expressions is extremely useful in a variety of fields, such as interaction between humans and computers, computational neuroscience, and robotics for social purposes. It is possible to enable a broad variety of applications by having the ability to reliably categorize and interpret facial expressions from photos or videos. Some examples of these applications are cognizant systems and smart user interfaces for computers. The purpose of this thesis is to study and create a model with enhanced efficiency and accuracy in recognizing facial expressions using Convolutional Neural Networks (CNNs). Firstly, a comprehensive literature review will be done in order to analyze the cutting-edge CNN-based models and approaches that are currently being used for facial expression recognition identifying important hurdles, recent accomplishments, and possible chances for improvement in this field. This lays a sturdy groundwork for the future construction of the experimental model. The methodology for this study comprises a 10-layer CNN model incorporated with a set of FER2013 data which includes 7 classes of emotions. The dataset would be preprocessed and enhanced using data augmentation before using 5 K-fold cross validation to fit the data to the model. The trained model will be evaluated utilizing a wide variety of performance metrics, among which are accuracy, precision, recall, and F1-score. The effect of many parameters on recognition performance is explored in this thesis. These aspects include dataset size, model architecture, and hyperparameter tweaking. The outcomes of the experiments are meticulously analyzed, and evaluated in light of the most recent developments in the field as well as any relevant benchmarks. The findings contribute to a deeper knowledge of the possibilities as well as the limitations that are present in facial expression recognition using CNNs.

Author

Dr. Kosisochukwu Andrew Ibe

How to Cite

Kosisochukwu Andrew Ibe (Master Thesis). Facial Expression Recognition using Convolutional Neural Networks, 2023, Eastern Mediterranean University, Department of Computer Engineering.

License

CC BY 4.0

This work is shared under the specified license terms.