School of Law, Tianjin Normal University, Tianjin 300387, China.
Occup Ther Int. 2022 May 11;2022:8709591. doi: 10.1155/2022/8709591. eCollection 2022.
At present, most of the research on academic emotions focuses on the concept, current situation, and relevance. There are not many researches on the application of artificial intelligence-based neural network facial expression recognition technology in practical teaching. With reference to image-based big data, this research integrates the application of artificial intelligence facial expression recognition technology with the research on educational theory and applies information technology to the actual teaching process, in order to promote the optimization of the teaching process and improve the learning effect. . A Hadoop cluster consisting of 3 nodes is built on the Linux system, and the environment required for Opencv execution is compiled for each node, which provides support for subsequent parallel optimization, feature extraction, feature fusion, and recognition of student facial images. The image data type and input and output format based on MapReduce framework are designed, and the image data is optimized by means of serialized files. The color features, texture features, and Sift features of students' facial images and common distractors were analyzed. A parallel extraction framework of student facial image features is designed, and based on this, the student facial image feature extraction under Hadoop platform is implemented. This paper proposes a dynamic sequential facial expression recognition method that combines shallow and deep features with an attention mechanism. The relative position of facial landmarks and local area texture features based on FACS represent shallow-level features. At the same time, the structure of ALexNet is improved to extract the deep features of sequence images to express high-level semantic features. The effectiveness of the facial expression recognition system is improved by introducing three attention mechanisms: self-attention, weight-attention, and convolutional attention. . Through the analysis of the teaching effect, we found that when teachers can obtain the correct student's academic mood, they can intervene on the students' positive academic mood. The purpose of the intervention is to improve the positive academic emotions of students. After the students receive the intervention, their academic emotions are also improved and are positively correlated with their academic performance. Through the analysis of teaching effect, the research can achieve the predetermined goal. From the specific teaching effect of this study, it is concluded that in classroom teaching, teachers should devote energy to intervene in students' positive academic emotions, in order to improve students' positive academic emotions, which will improve students' academic performance and teaching.
目前,学术情绪的研究大多集中在概念、现状和相关性上。在实际教学中,基于人工智能的神经网络面部表情识别技术的应用研究还不多。本研究参考基于图像的大数据,将人工智能面部表情识别技术的应用与教育理论研究相结合,并将信息技术应用于实际教学过程中,以促进教学过程的优化,提高学习效果。在 Linux 系统上构建了由 3 个节点组成的 Hadoop 集群,为每个节点编译了执行 Opencv 所需的环境,为后续学生面部图像的并行优化、特征提取、特征融合和识别提供支持。设计了基于 MapReduce 框架的图像数据类型和输入输出格式,并通过序列化文件对图像数据进行优化。分析了学生面部图像和常见干扰物的颜色特征、纹理特征和 Sift 特征。设计了学生面部图像特征的并行提取框架,并在此基础上实现了 Hadoop 平台下的学生面部图像特征提取。本文提出了一种结合浅层和深层特征与注意力机制的动态序列面部表情识别方法。基于 FACS 的面部地标相对位置和局部区域纹理特征表示浅层特征。同时,改进了 ALexNet 的结构,提取序列图像的深层特征,表达高层语义特征。通过引入三种注意力机制:自注意力、权重注意力和卷积注意力,提高了面部表情识别系统的有效性。通过教学效果的分析,我们发现当教师能够获得正确的学生学业情绪时,他们可以对学生的积极学业情绪进行干预。干预的目的是提高学生的积极学业情绪。学生接受干预后,他们的学业情绪也得到了提高,并与学业成绩呈正相关。通过教学效果的分析,本研究可以达到预定的目标。从本研究的具体教学效果来看,在课堂教学中,教师应投入精力干预学生的积极学业情绪,以提高学生的积极学业情绪,从而提高学生的学业成绩和教学效果。