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基于神经网络的艺术绘画图像分类。

Art Painting Image Classification Based on Neural Network.

机构信息

Academy of Fine Arts, Linyi University, Linyi, Shandong 276000, China.

出版信息

Comput Intell Neurosci. 2022 Jul 4;2022:3119604. doi: 10.1155/2022/3119604. eCollection 2022.

Abstract

Neural network (NN) is among the most important and vital form of artificial intelligence which are utilized for the classification of data, information, or images. Moreover, NN has been extensively utilized in various research domains throughout the world, and it is because of overwhelming properties. Painting is a form formed by China's long history and culture, and a large number of paintings reflect the living conditions of China in different periods, which is of great value to the development of China's culture. Image classification has become a key research content in the field of image in the stage of rapid development of information technology, and the content of art painting image classification has also developed rapidly. At present, most traditional image classification methods are formed on the basis of shallow structure learning algorithm, and there are many types of image features that can be extracted, but some features will be lost when extracting, and we need to master the basic painting knowledge. As a result, this extraction process is not general, which explains why traditional Chinese art picture classification is not ubiquitous. The fast development of big data technology and neural network algorithms in recent years has the potential to speed up the categorization of art painting images. As a result, this research investigates the use of neural networks to classify art painting images. The painting image classification method based on artistic style is used to determine the styles of distinct creative works, and the painting image classification algorithm based on saliency is then used to categorize the picture semantics. Finally, a dataset for testing the categorization impact of art painting pictures is developed. The results show that the neural network algorithm can significantly improve the classification effect of art painting images with higher accuracy.

摘要

神经网络 (NN) 是人工智能中最重要和最关键的形式之一,用于对数据、信息或图像进行分类。此外,NN 在世界各地的各个研究领域得到了广泛的应用,这是因为它具有压倒性的优势。绘画是中国悠久历史和文化的一种形式,大量的绘画反映了中国不同时期的生活状况,对中国文化的发展具有重要价值。图像分类已成为信息技术快速发展阶段图像领域的关键研究内容,艺术绘画图像分类的内容也在迅速发展。目前,大多数传统的图像分类方法都是基于浅层结构学习算法形成的,并且可以提取出多种类型的图像特征,但在提取时会丢失一些特征,并且我们需要掌握基本的绘画知识。因此,这种提取过程并不通用,这解释了为什么传统的中国艺术图片分类并不普遍。近年来大数据技术和神经网络算法的快速发展有可能加快艺术绘画图像的分类。因此,本研究探讨了使用神经网络对艺术绘画图像进行分类。使用基于艺术风格的绘画图像分类方法来确定不同创意作品的风格,然后使用基于显著度的绘画图像分类算法对图片语义进行分类。最后,开发了一个用于测试艺术绘画图片分类影响的数据集。结果表明,神经网络算法可以显著提高艺术绘画图像的分类效果,具有更高的准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aa8b/9273361/ec071109f000/CIN2022-3119604.001.jpg

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