A Painting Artist Recognition System Based on Image Processing and Hierarchical SVM

M. M. AlyanNezhadi, Hossein Dabbaghan, Samira Moghani, M. Forghani
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引用次数: 3

Abstract

Over the past years, forgery paintings of famous artists have been sold as original. In order to spot the fake painting, the experts make the decision based on personal experience and with the help of examining some characteristics of the painting and painter. Applying the image processing methods to artwork can reduce the need of the expert and provide quick and reliable results to recognize the originality of the artwork. In this paper, the proposed method is able to identify the painter of artwork using image processing and data mining techniques. The method consists of two typical main stages, feature extraction, and classification. In the feature extraction, 11 statistical features are extracted from each image. These features have been selected in such a way that maximize the distinction of painters. In the second step, the painters are identified by hierarchical classification. In order to evaluate the performance of proposed method, it has applied to a collection of 348 paintings from eight Iranian artists. The method has been able to identify the artwork painter with the accuracy about 84.21%.
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基于图像处理和分层支持向量机的画家识别系统
在过去的几年里,著名艺术家的赝品被当作原作出售。为了辨别真伪,专家们根据个人经验,通过考察画作和画家的一些特征来判断真伪。将图像处理方法应用于艺术品可以减少对专家的需求,并提供快速可靠的结果来识别艺术品的原创性。在本文中,该方法利用图像处理和数据挖掘技术来识别艺术品的画家。该方法包括两个典型的主要阶段:特征提取和分类。在特征提取中,每张图像提取11个统计特征。这些特征的选择是为了最大限度地突出画家的特点。第二步,采用分层分类的方法识别画家。为了评估所提议的方法的效果,它对来自8位伊朗艺术家的348幅画进行了分析。该方法能够以84.21%的正确率识别艺术品画家。
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