利用纹理分析对伊朗绘画进行分类

S. Keshvari, A. Chalechale
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引用次数: 2

摘要

近年来,数字绘画收藏品向公众开放,这在博物馆的数字画廊中正在增长。随着大量数字馆藏的出现,开发用于存档和检索的多媒体系统是必要的。识别每个艺术家的风格是关键问题之一,然而,大多数艺术家不确定他们的风格。传统上,人们通过跟随艺术家的画作,并对画作的细节进行调查来经验地认识艺术家的风格。本文首次提出了一种利用图像处理技术识别伊朗画家风格的不同方法。我们使用纹理分析进行分类。提取的特征包括局部二值模式(LBP)、局部相位量化(LPQ)和局部构型模式(LCP)。为了评估拟议的方法,使用了一个包含五位著名伊朗画家的绘画数据库,即Hossein Behzad、KamalolMolk、Morteza Katouzian、Sohrab Sepehri和Mahmoud Farshchian。实验结果验证了该方法的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Iranian paintings using texture analysis
in recent years, digital painting collections are available to the public and this is growing in museums digital galleries. With the availability of large collections of digital, it is essential to develop multimedia systems for archiving and retrieving them. Recognition the style of each artist is one of the key issues, however, most artists do not identify their styles. Traditionally, people empirically recognize an artist's style through following the artist's paintings and investigating to the paintings' details. This paper is proposed one different approach in order to identify Iranian painters' style by image processing techniques for the first time. We use texture analysis for doing classification. The extracted features are the local binary pattern (LBP), Local phase quantization (LPQ) and local configuration pattern (LCP). To assess the proposed method, one database of paintings that contains five famous Iranian painters namely Hossein Behzad, KamalolMolk, Morteza Katouzian, Sohrab Sepehri and Mahmoud Farshchian is utilized. The experimental results verify reasonably good performance.
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