Liu Bo
Shandong Institute of Petroleum and Chemical Technology, Dongying, 257000, China.
Sci Rep. 2024 Sep 10;14(1):21113. doi: 10.1038/s41598-024-72343-w.
This work aims to explore the application of an improved convolutional neural network (CNN) combined with Internet of Things (IoT) technology in art design education and teaching. The development of IoT technology has created new opportunities for art design education, while deep learning and improved CNN models can provide more accurate and effective tools for image processing and analysis. In order to enhance the effectiveness of art design teaching and students' creative expression, this work proposes an improved CNN model. In model construction, it increases the number of convolutional layers and neurons, and incorporates the batch normalization layer and dropout layer to enhance feature extraction capabilities and reduce overfitting. Besides, this work creates an experimental environment using IoT technology, capturing art image samples and environmental data using cameras, sensors, and other devices. In the model application phase, image samples undergo preprocessing and are input into the CNN for feature extraction. Sensor data are concatenated with image feature vectors and input into the fully connected layers to comprehensively understand the artwork. Finally, this work trains the model using techniques such as cross-entropy loss functions and L2 regularization and adjusts hyperparameters to optimize model performance. The results indicate that the improved CNN model can effectively acquire art sample data and student creative expression data, providing accurate and timely feedback and guidance for art design education and teaching, with promising applications. This work offers new insights and methods for the development of art design education.
这项工作旨在探索改进的卷积神经网络(CNN)与物联网(IoT)技术在艺术设计教育教学中的应用。物联网技术的发展为艺术设计教育创造了新机遇,而深度学习和改进的CNN模型可为图像处理与分析提供更准确有效的工具。为提高艺术设计教学效果和学生的创意表达,这项工作提出了一种改进的CNN模型。在模型构建中,增加了卷积层和神经元数量,并纳入批归一化层和随机失活层以增强特征提取能力并减少过拟合。此外,这项工作利用物联网技术创建了一个实验环境,使用摄像头、传感器等设备采集艺术图像样本和环境数据。在模型应用阶段,图像样本经过预处理后输入CNN进行特征提取。传感器数据与图像特征向量连接后输入全连接层以全面理解艺术品。最后,这项工作使用交叉熵损失函数和L2正则化等技术训练模型并调整超参数以优化模型性能。结果表明,改进的CNN模型能够有效获取艺术样本数据和学生创意表达数据,为艺术设计教育教学提供准确及时的反馈和指导,具有广阔的应用前景。这项工作为艺术设计教育的发展提供了新的见解和方法。