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Feature visualization in comic artist classification using deep neural networks

机译:使用深度神经网络的漫画艺术家分类中的特征可视化

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Abstract Deep neural networks have become a standard framework for image analytics. Besides the traditional applications, such as object classification and detection, the latest studies have started to expand the scope of the applications to include artworks. However, popular art forms, such as comics, have been ignored in this trend. This study investigates visual features for comic classification using deep neural networks. An effective input format for comic classification is first defined, and a convolutional neural network is used to classify comic images into eight different artist categories. Using a publicly available dataset, the trained model obtains a mean F1 score of 84% for the classification. A feature visualization technique is also applied to the trained classifier, to verify the internal visual characteristics that succeed in classification. The experimental result shows that the visualized features are significantly different from those of general object classification. This work represents one of the first attempts to examine the visual characteristics of comics using feature visualization, in terms of comic author classification with deep neural networks.
机译:摘要深度神经网络已成为图像分析的标准框架。除了对象分类和检测等传统应用之外,最新研究已开始将应用范围扩大到艺术品。但是,在这种趋势下,漫画等流行艺术形式已被忽略。这项研究调查了使用深度神经网络进行漫画分类的视觉功能。首先定义一种有效的漫画分类输入格式,然后使用卷积神经网络将漫画图像分类为八个不同的艺术家类别。使用公开可用的数据集,经过训练的模型对分类的平均F1得分为84%。特征可视化技术也应用于经过训练的分类器,以验证在分类中成功的内部视觉特征。实验结果表明,可视化特征与一般对象分类显着不同。这项工作代表了使用特征可视化检查漫画的视觉特征的首次尝试之一,这是根据漫画作者通过深度神经网络进行分类的方法。

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