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Toward discovery of the artist's style: learning to recognize artists by their artworks

机译:探寻艺术家的风格:学习通过艺术品来识别艺术家

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Author attribution through the recognition of visual characteristics is a commonly used approach by art experts. By studying a vast number of artworks, art experts acquire the ability to recognize the unique characteristics of artists. In this article, we present an approach that uses the same principles to discover the characteristic features that determine an artist?s touch. By training a convolutional neural network (PigeoNET) on a large collection of digitized artworks to perform the task of automatic artist attribution, the network is encouraged to discover artist-specific visual features. The trained network is shown to be capable of attributing previously unseen artworks to the actual artists with an accuracy of more than 70%. In addition, the trained network provides fine-grained information about the artist-specific characteristics of spatial regions within the artworks. We demonstrate this ability by means of a single artwork that combines characteristics of two closely collaborating artists. PigeoNET generates a visualization that indicates for each location on the artwork who is the most likely artist to have contributed to the visual characteristics at that location. We conclude that PigeoNET represents a fruitful approach for the future of computer-supported examination of artworks.
机译:通过视觉特征的识别,作者归因是艺术专家常用的方法。通过研究大量艺术品,艺术专家获得了认识艺术家独特特征的能力。在本文中,我们提出一种使用相同原理来发现决定艺术家触觉的特征的方法。通过在大量数字化艺术品上训练卷积神经网络(PigeoNET)来执行自动艺术家归因的任务,鼓励该网络发现艺术家特定的视觉特征。训练有素的网络显示出能够将以前未曾见过的艺术品归因于实际艺术家的准确率超过70%。此外,训练有素的网络还提供有关艺术品中空间区域特定于艺术家的特征的细粒度信息。我们通过结合两个紧密合作的艺术家的特征的单一艺术品来展示这种能力。 PigeoNET生成可视化效果,以指示艺术品上的每个位置,谁是最有可能为该位置的视觉特征做出贡献的艺术家。我们得出的结论是,PigeoNET代表了计算机支持艺术品检查的未来富有成果的方法。

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