Computer Vision and NLP based Multimodal Ensemble Attentiveness Detection API for E-Learning

Manesha Dimanthi Wijeratne, Ranepura Hewage Gayan Asanka Lakmal, Weerasinghe Kulathunga Shashikala Geethadhari, Manula Akbo Athalage, A. Gamage, D. Kasthurirathna
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引用次数: 1

Abstract

Attention is the fundamental element of effective learning, memory, and interaction. Learning however, with the evolvement of technologies in the modern digital age, has surpassed traditional learning systems to more convenient online or e-learning systems. Nevertheless, unlike in the traditional learning systems, attention detection of a student in an e-learning environment remains one of the barely explored areas in Human Computer Interaction. This study proposes a multimodal ensemble solution to detect the level of attentiveness of a student in an e-learning environment, with the use of computer vision, natural language processing, and deep learning to overcome the barriers in identifying user attention in e-learning. The proposed multimodal captures, processes, and predicts user attentiveness levels of individual students, which are subsequently aggregated through an ensemble model to derive an overall outcome of better accuracy than individual model outcomes. The final outcome of the ensemble model produces a range of percentages, within which the attentiveness level of the student lies during a single online lesson. This range is consequently delivered to the users through an Application Programming Interface.
基于计算机视觉和NLP的多模态集成注意力检测API
注意是有效学习、记忆和互动的基本要素。然而,随着现代数字时代技术的发展,学习已经超越了传统的学习系统,转向更方便的在线或电子学习系统。然而,与传统的学习系统不同,电子学习环境中学生的注意力检测仍然是人机交互中很少探索的领域之一。本研究提出了一个多模态集成解决方案来检测学生在电子学习环境中的注意力水平,使用计算机视觉、自然语言处理和深度学习来克服识别电子学习中用户注意力的障碍。提出的多模态捕获、处理和预测单个学生的用户注意力水平,随后通过集成模型进行汇总,以得出比单个模型结果更准确的总体结果。集成模型的最终结果产生了一个百分比范围,在这个范围内,学生在一次在线课程中的注意力水平。因此,该范围通过应用程序编程接口交付给用户。
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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