Emotion sensitive analysis of learners’ cognitive state using deep learning

S. Aruna, Swarna Kuchibhotla
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Abstract

The assessment of the state of mind of a student has traditionally been a troublesome task. The advances in deep learning have given analysts new opportunities to try and do therefore. Most state of mind methods focus principally on attention, failing to account for the significance of human emotions. Emotions are significant in laptop vision and a good deal of analysis is conducted exploitation human feelings. Our objective is to propose an emotion-sensitive analysis of individuals’ mental state, specifically focusing on students’ attention levels. This analysis will be carried out in a non-intrusive manner by detecting both head posture and emotions. To achieve this, we employ a multi-task learning approach that utilizes convolutional neural networks (CNNs). These networks are capable of simultaneously identifying facial expressions, locating facial landmarks, and estimating head position, all in real-time. Face alignment is additional assessed by estimating the pinnacle position and face alignment. The estimation of the pinnacle cause and alignment of the face is additional employed by the trainer to live the learner’s span. Experimental results show that the technique will accurately verify students’ emotions with a ninety-four accuracy rate.
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利用深度学习对学习者的认知状态进行情感敏感分析
评估学生的心理状态历来是一项棘手的任务。深度学习的进步为分析师提供了新的尝试机会。大多数心理状态方法主要集中在注意力上,而没有考虑到人类情感的重要性。情感在笔记本电脑视觉中很重要,大量的分析是利用人类的情感进行的。我们的目标是提出一种对个人心理状态的情绪敏感分析,特别关注学生的注意力水平。这种分析将通过检测头部姿势和情绪,以一种非侵入性的方式进行。为了实现这一点,我们采用了一种利用卷积神经网络(cnn)的多任务学习方法。这些网络能够同时识别面部表情,定位面部地标,并估计头部位置,所有这些都是实时的。通过估计尖峰位置和面对齐来额外评估面对齐。此外,教练员还利用对顶点原因和面部对齐的估计来延长学习者的学习跨度。实验结果表明,该技术可以准确地验证学生的情绪,准确率为94%。
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