Pattern Recognition Research on Big Data Algorithm-Driven Visual Expression System for Fine Arts and Philosophy Integration in Artistic Creation

Abstract

The development of artificial intelligence enables computers to not only simulate human artistic creations, but also synthesize fine art works with deeper meanings based on natural images. This study digitally parses the fusion of fine art and philosophy visual expressions, and develops a visual expression system based on the fusion of fine art and philosophy by utilizing a variety of key big data algorithms for visual expressions such as adversarial networks. Research on pattern recognition of this system in art creation is carried out through model training, recommendation performance evaluation, pattern recognition strategy application and regression analysis. The model in this paper works best when the number of nearest neighbors k=15, and the recommendation model in this paper can provide a personalized list of artwork recommendations for different people. The recognition of the system in this paper in the five dimensions of “spiritual level”, “value level”, “philosophical level”, “aesthetic level” and “technical level” is distributed between 4.24~4.55. The results of regression analysis indicated that the system in this paper can improve the artistic creation as well as pattern recognition.

Keywords: Adversarial networks; Recommendation modeling; Regression analysis; Visual expression systems; Artistic creation