College of Physical Education, Chongqing University, Chongqing 400044, China.
College of Humanities, Zhaoqing Medical College, Zhaoqing 526020, China.
Comput Intell Neurosci. 2022 Sep 17;2022:5993839. doi: 10.1155/2022/5993839. eCollection 2022.
This study's aim is to effectively establish a psychological intervention and treatment system for college students and discover and correct their psychological problems encountered in a timely manner. From the perspectives of pedagogy and psychology, the college students majoring in physical education are selected as the research objects, and an interactive college student emotion recognition and psychological intervention system is established based on convolutional neural network (CNN). The system takes face recognition as the data source, adopts feature recognition algorithms to effectively classify the different students, and designs a psychological intervention platform based on interactive technology, and it is compared with existing systems and models to further verify its effectiveness. The results show that the deep learning CNN has better ability to recognize student emotions than backpropagation neural network (BPNN) and decision tree (DT) algorithm. The recognition accuracy (ACC) can be as high as 89.32%. Support vector machine (SVM) algorithm is adopted to classify the emotions, and the recognition ACC is increased by 20%. When the system's value is 5 and value is 8, the ACC of the model can reach 92.35%. The use of this system for psychotherapy has a significant effect, and 45% of the students are very satisfied with the human-computer interaction of the system. This study aims to guess the psychology of students through emotion recognition and reduce human participation based on the human-computer interaction, which can provide a new research idea for college psychotherapy. At present, the mental health problems of college students cannot be ignored; especially every year, there will be news reports of college students' extreme behaviors due to depression and other psychological problems. An interactive college student emotion recognition and psychological intervention system based on convolutional neural network (CNN) is established. This system uses face recognition as the basic support technology and uses feature recognition algorithms to effectively classify different students. An interaction technology-based psychological intervention platform is designed and compared with existing systems and models to further verify the effectiveness of the proposed system. The results show that deep learning has better student emotion recognition ability than backpropagation neural network (BPNN) and decision tree algorithm. The recognition accuracy is up to 89.32%. Support vector machine algorithm is employed to classify emotions, and the recognition acceptability rate increases by 20%. When is 5 and is 8, the acceptability rate of the model can reach 92.35%. The effect of this system in psychotherapy is remarkable, and 45% of students are very satisfied with the human-computer interaction of this system. This work aims to speculate students' psychology through emotion recognition, reduce people's participation via human-computer interaction, and provide a new research idea for university psychotherapy.
本研究旨在为大学生建立有效的心理干预和治疗体系,及时发现和纠正他们遇到的心理问题。从教育学和心理学的角度出发,选择体育专业大学生作为研究对象,基于卷积神经网络(CNN)建立了一个互动式大学生情感识别和心理干预系统。该系统以人脸识别为数据源,采用特征识别算法对不同学生进行有效分类,并设计了基于交互技术的心理干预平台,并与现有系统和模型进行比较,进一步验证其有效性。结果表明,深度学习 CNN 比反向传播神经网络(BPNN)和决策树(DT)算法具有更好的学生情绪识别能力。识别准确率(ACC)高达 89.32%。采用支持向量机(SVM)算法对情绪进行分类,识别 ACC 提高了 20%。当系统的值为 5,的值为 8 时,模型的 ACC 可达到 92.35%。该系统用于心理治疗效果显著,有 45%的学生对系统的人机交互非常满意。本研究旨在通过情感识别猜测学生心理,减少基于人机交互的人为参与,为高校心理治疗提供新的研究思路。目前,大学生的心理健康问题不容忽视;尤其是每年都会有大学生因抑郁等心理问题而采取极端行为的新闻报道。建立了一个基于卷积神经网络(CNN)的互动式大学生情感识别和心理干预系统。该系统以人脸识别为基本支撑技术,采用特征识别算法对不同学生进行有效分类。设计了一个基于交互技术的心理干预平台,并与现有系统和模型进行比较,进一步验证了系统的有效性。结果表明,深度学习具有比反向传播神经网络(BPNN)和决策树算法更好的学生情绪识别能力。识别准确率高达 89.32%。采用支持向量机算法对情绪进行分类,识别接受率提高了 20%。当值为 5,值为 8 时,模型的接受率可达 92.35%。该系统在心理治疗中的效果显著,有 45%的学生对该系统的人机交互非常满意。本工作旨在通过情感识别猜测学生心理,通过人机交互减少人的参与,为大学心理治疗提供新的研究思路。