Knowledge Engineering and Data Science
Vol 5, No 1 (2022)

Human Facial Expressions Identification using Convolutional Neural Network with VGG16 Architecture

Luther Alexander Latumakulita (Sam Ratulangi University)
Sandy Laurentius Lumintang (Sam Ratulangi University)
Deiby Tineke Salakia (Sam Ratulangi University)
Steven R. Sentinuwo (Sam Ratulangi University)
Alwin Melkie Sambul (Sam Ratulangi University)
Noorul Islam (Kanpur institute of technology, Kanpur, India. Address: A-1, UPSIDC, ROOMA INDUSTRIAL AREA, KANPUR, 201008)



Article Info

Publish Date
07 Jun 2022

Abstract

The human facial expression identification system is essential in developing human interaction and technology. The development of Artificial Intelligence for monitoring human emotions can be helpful in the workplace. Commonly, there are six basic human expressions, namely anger, disgust, fear, happiness, sadness, and surprise, that the system can identify. This study aims to create a facial expression identification system based on basic human expressions using the Convolutional Neural Network (CNN) with a 16-layer VGG architecture. Two thousand one hundred thirty-seven facial expression images were selected from the FER2013, JAFFE, and MUG datasets. By implementing image augmentation and setting up the network parameters to Epoch of 100, the learning rate of 0,0001, and applying in the 5Fold Cross Validation, this system shows performance with an average accuracy of 84%. Results show that the model is suitable for identifying the basic facial expressions of humans.

Copyrights © 2022






Journal Info

Abbrev

keds

Publisher

Subject

Computer Science & IT Engineering

Description

Knowledge Engineering and Data Science (2597-4637), KEDS, brings together researchers, industry practitioners, and potential users, to promote collaborations, exchange ideas and practices, discuss new opportunities, and investigate analytics frameworks on data-driven and knowledge base systems. ...