Abstract

This paper presents an in-depth study and analysis of Chinese painting image classification by a multitask joint sparse representation algorithm for texture feature extraction of Chinese painting images and proposes a method to extract texture features directly for the original images. It simplifies the process of image grayscale conversion and preserves the information contained in the original Chinese painting images to the greatest extent. The algorithm uses the ideas of multicolor domain analysis and multiscale analysis, combined with the traditional grayscale coeval matrix to extract texture features. Experiments show that the multiscale grayscale cooccurrence matrix algorithm outperforms the traditional grayscale cooccurrence matrix algorithm and the color grayscale cooccurrence matrix algorithm. The discriminative ability of multiple features for target recognition is integrated by multitask learning, thus improving the robustness and generalization ability of the algorithm; meanwhile, the recognition accuracy is improved by using a two-level multitask learning mode to exclude the interference of a large number of irrelevant dictionary atoms. The experimental results show that the algorithm has higher recognition accuracy and better robustness than the existing sparse representation SAR target recognition algorithm. Configuration recognition experiments are conducted on different configurations of target data, and the experimental results show that the algorithm achieves better configuration recognition accuracy than existing algorithms.

Highlights

  • Introduction e concept ofChinese painting began to be widely used at the beginning of this century [1], and the concept was introduced as an affirmation of the ancient art of painting in China and as a way to preserve the national painting

  • Texture feature is one of the most frequently used features of the image, and it is a feature that can best reflect the distribution pattern of the image. e color feature mainly represents the color information contained in the image and is more inclined to describe the overall characteristics of the image, which is a feature that cannot be ignored. e color and texture features can well represent the information contained in the image, and they are the most frequently used features in the current classification and recognition of Chinese painting images [3]

  • Every painter already has a primary color before painting, and this primary color is related to the content of the painting; for example, landscape painting will be dominated by lime green, while flower and bird painting will be dominated by green and red, and figure painting will be mostly pink and white, jade. erefore, the color characteristic of Chinese paintings is an indispensable feature in the classification and identification of Chinese paintings

Read more

Summary

Research Article

Received 26 January 2021; Revised 10 March 2021; Accepted 15 March 2021; Published 25 March 2021. Is paper presents an in-depth study and analysis of Chinese painting image classification by a multitask joint sparse representation algorithm for texture feature extraction of Chinese painting images and proposes a method to extract texture features directly for the original images. It simplifies the process of image grayscale conversion and preserves the information contained in the original Chinese painting images to the greatest extent. E color and texture features can well represent the information contained in the image, and they are the most frequently used features in the current classification and recognition of Chinese painting images. To obtain the overall style and local brushstroke characteristics of Chinese painting, a Chinese painting image classification algorithm that combines global and local features is proposed

Related Works
Tracking result at the current frame
The final feature vector after fusion
End training output result
Train Validation
Huang Zhang Daqian
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call