A Survey on Multimodal Data Stream Mining for e-Learner’s Emotion Recognition

Arijit Nandi, F. Xhafa, L. Subirats, Santiago Fort
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引用次数: 7

Abstract

Emotions play a crucial role in learning. To improve and optimize electronic learning (e-Learning) outcomes, many researchers have investigated the role of emotions. Also, researchers have come up with many approaches to utilize one or many data modalities to achieve this goal, and they have been successful. But the recent advancements in technology and the internet of things (IoT) devices have brought a new dimension in e-Learning, with many input devices (such as webcams, fit-bands etc.) for interacting with e-Learners. This new dimension brings not only massive amounts of data with volume, variety, and velocity called multimodal data streams but also more challenges of mining those data in real-time. In this work, we have focused on state-of-the-art emotion recognition in e-Learning utilizing the multimodal data streams of learners. Also, we have thoroughly investigated the past research and surveys on emotion recognition methods in e-Learning to find the affecting emotions and their relations with the emotion measurement channels; and we have compared several data-stream classifiers for emotion recognition by utilizing multimodal physiological data streams. Finally, the future research opportunities to be addressed are also discussed.
面向网络学习者情感识别的多模态数据流挖掘研究
情绪在学习中起着至关重要的作用。为了改善和优化电子学习(e-Learning)的结果,许多研究人员研究了情绪的作用。此外,研究人员已经提出了许多方法来利用一种或多种数据模式来实现这一目标,并取得了成功。但最近技术和物联网(IoT)设备的进步为电子学习带来了一个新的维度,许多输入设备(如网络摄像头,fit-band等)用于与电子学习者互动。这个新的维度不仅带来了大量的数据,其数量、种类和速度被称为多模式数据流,而且还带来了实时挖掘这些数据的更多挑战。在这项工作中,我们专注于利用学习者的多模态数据流在电子学习中进行最先进的情感识别。此外,我们还深入研究了以往关于e-Learning中情绪识别方法的研究和调查,找出了影响情绪的因素及其与情绪测量渠道的关系;并对几种基于多模态生理数据流的情感识别数据流分类器进行了比较。最后,对未来需要解决的研究机会进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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