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Brushstroke based sparse hybrid convolutional neural networks for author classification of Chinese ink-wash paintings

机译:基于技巧的稀疏混合动力卷积神经网络,用于作者分类中国墨水绘画

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A novel stroke based sparse hybrid convolutional neural networks (CNNs) method is proposed for author classification of Chinese ink-wash paintings (IWPs). As Chinese IWPs usually have many authors in several art styles, this differs from real images or western paintings and has led to a big challenge. In our work, we classify Chinese IWPs of different artists by analyzing a set of automatically extracted brushstrokes. A sparse hybrid CNNs in a deep-learning framework is then proposed to extract brushstroke features to replace the commonly used handcrafted ones such as edge, color, intensity and texture. Using 120 IWPs from six famous artists, promising results have been shown in successfully classifying authors in comparison to two other state-of-the-art approaches.
机译:提出了一种基于新型中风的稀疏混合卷积神经网络(CNNS)方法,用于作者对中国油墨绘画(IWP)分类。由于中国iWP通常在几种艺术风格中有很多作者,这与真正的图像或西方画有所不同,并导致了一个很大的挑战。在我们的工作中,我们通过分析一组自动提取的笔刷来归类中国IWPS的不同艺术家。然后提出了一种深入学习框架中的稀疏混合CNN,以提取笔刷功能,以替换常用的手工制作,例如边缘,颜色,强度和纹理。使用来自六名着名艺术家的120个IWP,已在成功归类作者与其他两种方法相比,已展示有希望的结果。

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