基于卷积神经网络的版画图像分类与创作研究

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-08-03 DOI:10.1142/s0219467825500196
Kai Pan, Hongyan Chi
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引用次数: 0

摘要

版画作为现代文明艺术的重要表现形式,种类丰富,艺术层次感突出。因此,版画以其独特的艺术特征在世界范围内备受青睐。通过图像特征元素对版画类型进行分类,可以提高人们对版画创作的理解。卷积神经网络(CNN)在图像分类领域有很好的应用效果,因此将CNN用于版画分析。考虑到传统卷积神经图像分类模型的分类效果容易受到激活函数的影响,引入T-ReLU激活函数。利用可调参数增强模型的软饱和特性,避免梯度消失,构造了T-ReLU卷积模型。针对深度卷积图像分类模型中多级特征融合不足的问题,在T-ReLU卷积模型的基础上,提出了一种更好的卷积图像分类模型。利用归一化分析视觉输入,利用卷积层残差单元的11层卷积网络,利用级联思维融合卷积网络缺陷。性能测试结果表明,在不同款式的人造指纹数据测试中,GT-ReLU模型能获得最佳的图像分类精度,图像分类准确率为0.978。在多数据集测试分类性能测试中,GT-ReLU模型的分类准确率保持在94.4%以上,高于其他图像分类模型。对于视觉处理技术在印刷品分类领域的应用,研究内容具有很好的参考价值。
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Research on Printmaking Image Classification and Creation Based on Convolutional Neural Network
As an important form of expression in modern civilization art, printmaking has a rich variety of types and a prominent sense of artistic hierarchy. Therefore, printmaking is highly favored around the world due to its unique artistic characteristics. Classifying print types through image feature elements will improve people’s understanding of print creation. Convolutional neural networks (CNNs) have good application effects in the field of image classification, so CNN is used for printmaking analysis. Considering that the classification effect of the traditional convolutional neural image classification model is easily affected by the activation function, the T-ReLU activation function is introduced. By utilizing adjustable parameters to enhance the soft saturation characteristics of the model and avoid gradient vanishing, a T-ReLU convolutional model is constructed. A better convolutional image classification model is proposed based on the T-ReLU convolutional model, taking into account the issue of subpar multi-level feature fusion in deep convolutional image classification models. Utilize normalization to analyze visual input, an eleven-layer convolutional network with residual units in the convolutional layer, and cascading thinking to fuse convolutional network defects. The performance test results showed that in the data test of different styles of artificial prints, the GT-ReLU model can obtain the best image classification accuracy, and the image classification accuracy rate is 0.978. The GT-ReLU model maintains a classification accuracy above 94.4% in the multi-dataset test classification performance test, which is higher than that of other image classification models. For the use of visual processing technology in the field of classifying prints, the research content provides good reference value.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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