Xu Xi, Xu Shuguang
Fuzhou Institute of Technology, Fuzhou, China.
Faculty of Fine and Applied Arts, Khon Kaen University, Khon Kaen, Thailand.
Sci Rep. 2024 Sep 2;14(1):20325. doi: 10.1038/s41598-024-71536-7.
To improve students' ability to recognize and appreciate artworks, and further enhance their academic performance and classroom satisfaction, this study explores the application of the Convolutional Neural Network (CNN) model based on optimization in art teaching. Firstly, the importance and challenges of art teaching are analyzed. Secondly, the principle and structure of CNN and its application in the classification field are expounded, and then the CNN classification model is optimized. Finally, the effectiveness of the optimized model is verified by experiments. Experimental results show that the optimized model's accuracy is up to 95.2% in the performance evaluation. The training time of the optimized model is much lower than that of the traditional model, and this model still maintains 95.2% accuracy under the noise of 14.7%. In addition, the accuracy of the optimized model on the unseen test data is 92%. In comparing teaching experiment results, by introducing the CNN classification model, Class B students' average score of art homework has increased by 4.3 points. The score for class satisfaction is 8.1 points. This indicates that the optimized CNN model has significant advantages in art teaching and can effectively improve students' classroom satisfaction and academic performance. Therefore, this study has specific reference significance for the innovation of the art teaching model.
为提高学生识别和欣赏艺术作品的能力,并进一步提升他们的学业成绩和课堂满意度,本研究探索基于优化的卷积神经网络(CNN)模型在艺术教学中的应用。首先,分析艺术教学的重要性和挑战。其次,阐述CNN的原理和结构及其在分类领域的应用,然后对CNN分类模型进行优化。最后,通过实验验证优化模型的有效性。实验结果表明,在性能评估中,优化模型的准确率高达95.2%。优化模型的训练时间远低于传统模型,并且该模型在14.7%的噪声下仍保持95.2%的准确率。此外,优化模型在未见测试数据上的准确率为92%。在比较教学实验结果时,通过引入CNN分类模型,B班学生艺术作业的平均成绩提高了4.3分。课堂满意度得分是8.1分。这表明优化后的CNN模型在艺术教学中具有显著优势,能够有效提高学生的课堂满意度和学业成绩。因此,本研究对艺术教学模式的创新具有具体的参考意义。