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What Makes the Difference in Visual Styles of Comics: From Classification to Style Transfer

机译:是什么使漫画视觉风格的差异:从分类到样式转移

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The recent success of deep neural network in computer vision provided a new framework to detect visual features of painting styles. However, most deep learning-based approaches analyzing artworks are not interested in popular arts such as comics. In this works, we investigate the artistic styles of comics with deep neural networks. First, we classify comic book pages into five different artists using Convolutional Neural Networks. And the internal features of comic styles are then captured via a feature visualization technique. Second, a style transfer algorithm is applied to several comic book pages drawn by three different artists. We verify how the visual property of a style is transferred to a page using several examples. This is one of the first attempts to analyze in detail the styles of comics with deep neural networks.
机译:最近计算机愿景中的深度神经网络的成功提供了一种新的框架来检测绘画风格的可视特征。然而,分析艺术品的大多数基于深入的学习方法对漫画等流行艺术不感兴趣。在这作品中,我们调查了与深神经网络的漫画的艺术风格。首先,我们将漫画书页分为五个不同的艺术家,使用卷积神经网络。然后通过特征可视化技术捕获漫画样式的内部特征。其次,将样式传输算法应用于三个不同艺术家绘制的几个漫画页面。我们验证样式的Visual属性如何使用多个示例传输到页面。这是第一次尝试详细分析与深神经网络的漫画方式之一。

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