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Classification of traditional Chinese paintings using a modified embedding algorithm

机译:基于改进嵌入算法的国画分类

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Although existing research on classification of Chinese paintings is limited to consideration of the relationship between paintings and labels, we propose a convolutional neural network (CNN)-based feature description, feature-weighted, and feature-prioritized algorithm to achieve overwhelmingly better classification performances. In comparison with the existing research on Chinese painting classifications, where the distribution information of paintings is often ignored and the influence of the feature importance on the calculation of distribution information is not considered, we extract the features of Chinese paintings by CNN models and propose a joint standard and normalized mutual information to allow features being prioritized via their level of importance. Following that, an embedded machine learning is further integrated to formulate an embedded classification algorithm, namely joint mutual information-based and data-embedded classification (JMIDEC), and the support vector machine is finally applied as the classifier to optimize the classification results. Extensive experiments show that the proposed JMIDEC algorithm outperforms a number of representative methods with stronger robustness. (C) 2019 SPIE and IS&T
机译:尽管现有的国画分类研究仅限于考虑国画与标签之间的关系,但我们提出了基于卷积神经网络(CNN)的特征描述,特征加权和特征优先算法,以实现压倒性的更好分类性能。与现有的关于中国画分类的研究相比,在该研究中经常忽略画的分布信息,而没有考虑特征重要性对分布信息计算的影响,我们采用CNN模型提取中国画的特征,并提出联合标准和规范化的互信息,以允许通过其重要性级别对功能进行优先级排序。然后,进一步集成了嵌入式机器学习算法,制定了嵌入式分类算法,即基于共同信息的联合分类和数据嵌入分类(JMIDEC),最后将支持向量机作为分类器,对分类结果进行优化。大量实验表明,所提出的JMIDEC算法优于许多具有鲁棒性的代表性方法。 (C)2019 SPIE和IS&T

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