计算机科学 ›› 2022, Vol. 49 ›› Issue (11A): 211000049-6.doi: 10.11896/jsjkx.211000049
魏艳涛1,2, 罗洁琳1,2, 胡美佳1,2, 李文昊1, 姚璜1
WEI Yan-tao1,2, LUO Jie-lin1,2, HU Mei-jia1,2, LI Wen-hao1, YAO Huang1
摘要: 随着疫情防控的常态化开展,在线学习已成为日常教学活动的主要形式之一。然而,随着在线学习活动的大规模开展,“情感缺失”问题日益凸显,已成为阻碍在线学习成效的主要原因之一。针对上述问题,探讨利用视频数据的非侵入式在线学习情感状态识别方法。首先采集了22名学生在线学习的面部视频和心率数据,构建了双模态在线学习情感数据库。其次,采用帧注意网络从学习视频中提取表情特征,识别在线学习情感状态,识别精度达到了87.8%。最后,探讨了视频心率识别方法在在线学习情感分析中的应用,研究结果表明,困惑状态下的心率水平具有显著性。本文从学习视频数据挖掘出发,重点探讨了基于表情和视频心率的学习情感识别,为提高在线学习情感状态感知提供了新思路。
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