School of Social Science, Zhejiang University of Technology, Hangzhou, China.
Department of Political Party and State Governance, East China University of Political Science and Law, Shanghai, China.
Front Public Health. 2022 Nov 3;10:958870. doi: 10.3389/fpubh.2022.958870. eCollection 2022.
Emotion in the learning process can directly influence the learner's attention, memory, and cognitive activities. Several literatures indicate that hand-drawn painting could reflect the learner's emotional status. But, such an evaluation of emotional status, manually conducted by the psychologist, is usually subjective and inefficient for clinical practice. To address the issues of subjectivity and inefficiency in the painting based emotional analysis, we conducted an exploration of a painting based emotional analysis in learning environment by using convolutional neural network model. A painting image of 100 × 100 pixels was used as input for the model. The instant emotional statue of the learner was collected by filling out a questionnaire and was reviewed by a psychologist and then used as the label for training the convolutional neural network model. With the completion of convolutional, full-connected, and classification operations, the features of the painting image were learned from the underlying pixel matrix to the high-level semantic feature mapping. Then the emotional classification of the painting image could be made to reflect the learner's emotional status. Finally, the classification result by the model was compared with the result manually conducted by a psychologist to validate the model accuracy. We conducted an experiment in a university at Hangzhou, and 2,103 learners joined in the experiment. The learner was required to first fill out a questionnaire reporting emotional status in the learning process, and then to complete a theme-specified painting. Two thousand valid paintings were received and divided into training dataset (1,600) and test dataset (400). The experimental result indicated that the model achieved the accuracy of 72.1%, which confirmed the effectiveness of the model for emotional analysis.
情绪在学习过程中可以直接影响学习者的注意力、记忆力和认知活动。有几项文献表明,手绘绘画可以反映学习者的情绪状态。但是,心理学家对手绘作品进行的这种情绪评估通常是主观的,并且不适合临床实践。为了解决基于绘画的情绪分析中的主观性和低效性问题,我们探索了一种基于卷积神经网络模型的学习环境中的绘画情绪分析。我们将 100×100 像素的绘画图像作为模型的输入。学习者的即时情绪状态通过填写问卷来收集,并由心理学家进行审核,然后作为训练卷积神经网络模型的标签。通过卷积、全连接和分类操作,从底层像素矩阵到高层语义特征映射,学习绘画图像的特征。然后可以对绘画图像进行情感分类,以反映学习者的情绪状态。最后,将模型的分类结果与心理学家手动进行的结果进行比较,以验证模型的准确性。我们在杭州的一所大学进行了实验,有 2103 名学习者参加了实验。学习者首先需要填写一份报告学习过程中情绪状态的问卷,然后完成指定主题的绘画。我们收到了 2000 份有效画作,并将其分为训练数据集(1600 份)和测试数据集(400 份)。实验结果表明,该模型的准确率达到 72.1%,这证实了该模型在情绪分析方面的有效性。