An Improved Image Entropy Algorithm Suitable for Digital Painting Style

Gan Chen, Bin Wen
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Abstract

Traditional painting style classification method based on image entropy cannot be directly applied to the classification of digital painting style. After analyzing the similarities and differences between the two types of works in the existing literature, this paper sets additional saturation weighting to improve the previous color entropy calculation method and eliminates the contour entropy calculation to describe the digital painting image style better. The experimental results show that this method can classify the styles of digital paintings more accurately.
一种适用于数字绘画风格的改进图像熵算法
传统的基于图像熵的画风分类方法不能直接应用于数字画风分类。在分析了现有文献中两类作品的异同之后,本文设置了额外的饱和度加权,改进了之前的颜色熵计算方法,并消除了轮廓熵计算,更好地描述了数字绘画的图像风格。实验结果表明,该方法可以更准确地对数字绘画的风格进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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