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首页> 外文期刊>International journal of human-computer interaction >Data Fusion for Real-time Multimodal Emotion Recognition through Webcams and Microphones in E-Learning
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Data Fusion for Real-time Multimodal Emotion Recognition through Webcams and Microphones in E-Learning

机译:电子学习中通过网络摄像头和麦克风进行实时多模式情感识别的数据融合

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摘要

This article describes the validation study of our software that uses combined webcam and microphone data for real-time, continuous, unobtrusive emotion recognition as part of our FILTWAM framework. FILTWAM aims at deploying a real-time multimodal emotion recognition method for providing more adequate feedback to the learners through an online communication skills training. Herein, timely feedback is needed that reflects on the intended emotions they show and which is also useful to increase learners' awareness of their own behavior. At least, a reliable and valid software interpretation of performed face and voice emotions is needed to warrant such adequate feedback. This validation study therefore calibrates our software. The study uses a multimodal fusion method. Twelve test persons performed computer-based tasks in which they were asked to mimic specific facial and vocal emotions. All test persons' behavior was recorded on video and two raters independently scored the showed emotions, which were contrasted with the software recognition outcomes. A hybrid method for multimodal fusion of our multimodal software shows accuracy between 96.1% and 98.6% for the best-chosen WEKA classifiers over predicted emotions. The software fulfils its requirements of real-time data interpretation and reliable results.
机译:本文介绍了我们的软件的验证性研究,该软件使用组合的网络摄像头和麦克风数据进行实时,连续,不干扰的情感识别,这是我们FILTWAM框架的一部分。 FILTWAM旨在部署一种实时多模式情感识别方法,以通过在线交流技能培训为学习者提供更充分的反馈。在此,需要及时的反馈,以反映他们表现出的预期情绪,这对于提高学习者对自己行为的认识也很有用。至少,需要对所执行的面部和语音情绪进行可靠且有效的软件解释,以确保获得足够的反馈。因此,该验证研究会校准我们的软件。该研究使用了一种多峰融合方法。十二名测试人员执行了基于计算机的任务,其中要求他们模仿特定的面部和声音情感。所有测试人员的行为都记录在视频中,并且两个评估者独立地对显示的情绪进行了评分,这与软件识别结果形成了对比。我们的多模态软件的多模态融合的混合方法显示,对于预测的情绪而言,最佳WEKA分类器的准确性在96.1%到98.6%之间。该软件可以满足其实时数据解释和可靠结果的要求。

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    Open Univ Netherlands, Fac Psychol & Educ Sci, Res Ctr Learning Teaching & Technol, Welten Inst, Valkenburgerweg 177, NL-6419 AT Heerlen, Netherlands;

    Open Univ Netherlands, Fac Psychol & Educ Sci, Res Ctr Learning Teaching & Technol, Welten Inst, Valkenburgerweg 177, NL-6419 AT Heerlen, Netherlands;

    Open Univ Netherlands, Fac Psychol & Educ Sci, Res Ctr Learning Teaching & Technol, Welten Inst, Valkenburgerweg 177, NL-6419 AT Heerlen, Netherlands;

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