在学习情境中使用情感维度参与视频图形在线学习

B. Baranidharan, Harsh Bhandari, Avi Tewari, Ishan Sachadeva, Abhinav
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引用次数: 0

摘要

COVID-19大流行已成为世界各地组织将其全部员工转移到虚拟平台的主要原因。这些虚拟平台的主要缺点之一是,它缺乏一个实时指标,可以用来检测一个人在讲座和会议期间是否专注。这一点在教育机构中表现得最为明显,学生们常常不注意家里老师和教授所教的内容。通过这项研究工作,我们的目标是在AI-FER(人工智能面部情感识别)的帮助下为这个问题创造一个解决方案。为此,我们提出了自己的卷积神经网络模型,总体准确率达到59.03%。我们还使用了Google的Tensorflow库中提供的几个预训练模型,如DenseNET和VGG。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Engagement in Video Graphic Online Learning Using the Emotional Dimensions in the Learning Context
The COVID-19 pandemic has become the prime reason for organizations across the world to shift their entire workforce onto virtual platforms. One of the major drawbacks of these virtual platforms is that it lacks a real-time metric which could be used to detect whether a person is attentive during the lectures and meetings or not. This was most evident in the case of educational institutions, where students would often fail to pay attention to the content that was being taught by teachers and professors at home. With this research work, our aim is to create a solution for this problem with the help of AI-FER (Artificial Intelligence Facial Emotion Recognition). For this, we have proposed our own Convolutional Neural Network model achieving an overall accuracy of 59.03%. We have also used several pre-trained models available in Google’s Tensorflow library like DenseNET and VGG.
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