自动识别虚拟现实教室中的学生情绪

Michael Shomoye, Richard Zhao
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引用次数: 0

摘要

在当代教育环境中,通过非语言线索(尤其是面部表情)了解和评估学生的参与度至关重要。长期以来,教育工作者通过这些线索了解学生的认知和情感状态,帮助他们调整教学方法。然而,在线学习平台和虚拟现实(VR)等先进技术的兴起对衡量学生参与度的传统模式提出了挑战,尤其是当某些面部特征变得模糊或完全不存在时。本研究探索了卷积神经网络(CNN)的潜力,特别是从 ResNet50 架构改编的定制训练模型,在实时识别和区分微妙面部表情(如中立、无聊、快乐和困惑)方面的潜力。我们的方法有两方面的新颖之处:首先,我们优化了 CNN 在数字学习平台中分析面部表情的能力。其次,我们针对 VR 环境进行了创新,专注于面部的下半部分,以解决佩戴 VR 头显带来的遮挡难题。通过全面的实验,我们将模型的性能与默认的 ResNet50 模型进行了比较,并针对全脸和 VR 遮挡脸部数据集进行了评估。最终,我们的努力旨在为教育工作者提供一种先进的工具,用于实时评估学生在技术先进的学习环境中的参与度,从而丰富教学体验。
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Automated emotion recognition of students in virtual reality classrooms

In contemporary educational settings, understanding and assessing student engagement through non-verbal cues, especially facial expressions, is pivotal. Such cues have long informed educators about students' cognitive and emotional states, assisting them in tailoring their teaching methods. However, the rise of online learning platforms and advanced technologies such as virtual reality (VR) challenge the conventional modes of gauging student engagement, especially when certain facial features become obscured or are entirely absent. This research explores the potential of Convolutional Neural Networks (CNNs), specifically a custom-trained model adapted from the ResNet50 architecture, in recognizing and distinguishing subtle facial expressions in real-time, such as neutrality, boredom, happiness, and confusion. The novelty of our approach is twofold: First, we optimize the power of CNNs to analyze facial expressions in digital learning platforms. Second, we innovate for the context of VR by focusing on the lower half of the face to tackle occlusion challenges posed by wearing VR headsets. Through comprehensive experimentation, we compare our model's performance with the default ResNet50 model and evaluate it against full-face and VR-occluded face datasets. Ultimately, our endeavor aims to provide educators with a sophisticated tool for real-time evaluation of student engagement in technologically advanced learning environments, subsequently enriching the teaching and learning experience.

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