An Approach for Learner Categorization Based on Emotions in Intelligent Adaptive E-Learning Environment

Madhubala Myneni, Haritha Akkineni, Chennupalli Srinivasulu
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Abstract

The pandemic across the globe has constrained the change from a conventional face to face to e-learning platforms. The most challenging task during online learning is to be aware and support the emotional side of students. In existing environments, the emotion of the listener consideration is lagging. This can be provided by capturing the emotions of the listener through facial expressions. In general, the most common facial expressions are happy, sad, anger, fear, disgust, neutral and surprise. This knowledge can be used to classify different listeners. Hence in this article, we proposed a novel approach to identify an emotion based learner category in the development of Intelligent Adaptive E-Learning Environment by using Convolution Neural Network. The major work is composed of emotion detection model and learner categorization. The emotion detection model is trained by using a standard FER2013 dataset and it is extended with live streams of learners. The results of emotion detection model are extended to categorize the learners by fusing emotions and comprehend as Active, Evaluative, Passive and Non-Listener. The proposed model is trained using 100 epochs and achieved an accuracy of 94.44% in the training phase. This knowledge helps to interpret learner’s participation in e-learning environment.
智能自适应网络学习环境下基于情绪的学习者分类方法
全球大流行限制了从传统的面对面学习向电子学习平台的转变。在线学习中最具挑战性的任务是意识到并支持学生的情感一面。在现有的环境中,倾听者的情感考虑是滞后的。这可以通过捕捉听众的面部表情来实现。一般来说,最常见的面部表情是快乐、悲伤、愤怒、恐惧、厌恶、中性和惊讶。这些知识可以用来对不同的听众进行分类。因此,在本文中,我们提出了一种利用卷积神经网络识别智能自适应电子学习环境开发中基于情感的学习者类别的新方法。主要工作包括情绪检测模型和学习者分类。情绪检测模型使用标准FER2013数据集进行训练,并使用学习者的实时流进行扩展。将情绪检测模型的结果扩展为融合情绪对学习者进行分类,并将学习者理解为主动、评价型、被动和非倾听型。该模型使用100个epoch进行训练,在训练阶段达到了94.44%的准确率。这些知识有助于解释学习者在电子学习环境中的参与。
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