Tenglong Yuan blue and white texture extraction method based on adaptive gamma correction and K-means clustering segmentation coupled algorithm

IF 1.8 4区 材料科学 Q2 MATERIALS SCIENCE, CERAMICS Journal of the Australian Ceramic Society Pub Date : 2023-12-27 DOI:10.1007/s41779-023-00981-w
Xiang Ning, Nanxing Wu, Rumeng Zhang, Tao Chen, Yi Jiang, Hong Jiang
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Abstract

Regarding the missing texture details in the texture extraction process of Tenglong Yuan blue and white, illumination is unequal. A meta blue and white texture extraction method based on adaptive gamma correction and K-means clustering segmentation coupling algorithm has been proposed. Combining the characteristics of Tenglong Yuan blue and white texture, using grayscale transformation to adjust the brightness of blue and white images, image contrast has been enhanced. Design Gaussian filter, weighted average multiscale Gaussian convolution, constructing 2D gamma convolutions for adaptive gamma correction, enhance the texture of Tenglong Yuan blue and white, the details in the blue and white texture of Tenglong Yuan are richer and more prominent. K-means clustering segmentation algorithm based on Lab space, implementing color segmentation of blue and white images, helps to segment the blue and white texture of Tenglong Yuan. Verification indicates that this method can effectively improve the contrast of blue and white texture; the accuracy rate of Tenglong Yuan blue and white texture segmentation reaches 95%. Effectively improving the accuracy of texture extraction for blue and white elements, the protection and inheritance of Yuan blue and white cultural relics are promoted.

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基于自适应伽玛校正和 K-means 聚类分割耦合算法的腾龙源蓝白纹理提取方法
针对腾龙元青花纹理提取过程中纹理细节缺失、光照不均的问题。提出了一种基于自适应伽马校正和 K-means 聚类分割耦合算法的元青花纹理提取方法。结合腾龙渊蓝白纹理的特点,利用灰度变换调整蓝白图像的亮度,图像对比度得到增强。设计高斯滤波器、加权平均多尺度高斯卷积,构造二维伽玛卷积进行自适应伽玛校正,增强腾龙渊蓝白纹理,使腾龙渊蓝白纹理细节更加丰富突出。基于 Lab 空间的 K-means 聚类分割算法,实现了蓝白图像的色彩分割,有助于分割腾龙渊的蓝白纹理。验证表明,该方法能有效提高蓝白纹理的对比度;腾龙渊蓝白纹理分割的准确率达到 95%。有效提高了青花元素纹理提取的准确性,促进了元青花文物的保护与传承。
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来源期刊
Journal of the Australian Ceramic Society
Journal of the Australian Ceramic Society Materials Science-Materials Chemistry
CiteScore
3.70
自引率
5.30%
发文量
123
期刊介绍: Publishes high quality research and technical papers in all areas of ceramic and related materials Spans the broad and growing fields of ceramic technology, material science and bioceramics Chronicles new advances in ceramic materials, manufacturing processes and applications Journal of the Australian Ceramic Society since 1965 Professional language editing service is available through our affiliates Nature Research Editing Service and American Journal Experts at the author''s cost and does not guarantee that the manuscript will be reviewed or accepted
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