A Facial Emotion Detection and Classification System using Convoluted Neural Networks

O. Omotosho, J. Oyeleke
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Abstract

The ability to understand facial expressions is an important part of nonverbal communication. The value in understanding facial expressions is to gather information about how the other person is feeling and guide our interaction accordingly. A person's ability to interpret emotions is very important for Effective communication. Recent researches show that emotional states and motivation directly or indirectly influences of student's learning process. This work is however a plunge into how systems can correctly detect recognize and classify human (Students) facial emotional expression through various image sensors, using Convolutional Neural Network (CNN). Dataset containing 28821 Face images were acquired. All images were used for training and testing using Convolutional Neural Network algorithm implemented in MATLAB software. 80% of the image dataset were used in training the system, while 20% were used for testing the system. The Trained CNN classifier classify image emotions using the Adam optimizer for higher accuracy.
基于卷积神经网络的面部情绪检测与分类系统
理解面部表情的能力是非语言交流的重要组成部分。理解面部表情的价值在于收集有关他人感受的信息,并据此指导我们的互动。一个人解释情绪的能力对于有效的沟通非常重要。近年来的研究表明,情绪状态和动机直接或间接地影响着学生的学习过程。然而,这项工作是对系统如何通过使用卷积神经网络(CNN)的各种图像传感器正确检测识别和分类人类(学生)面部情绪表达的一次尝试。数据集包含28821张人脸图像。使用MATLAB软件实现的卷积神经网络算法对所有图像进行训练和测试。80%的图像数据集用于训练系统,20%用于测试系统。训练后的CNN分类器使用Adam优化器对图像情绪进行分类,准确率更高。
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