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Using CNN Features to Better Understand What Makes Visual Artworks Special

机译:使用CNN功能更好地了解是什么使视觉艺术品变得特别

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One of the goal of computational aesthetics is to understand what is special about visual artworks. By analyzing image statistics, contemporary methods in computer vision enable researchers to identify properties that distinguish artworks from other (non-art) types of images. Such knowledge will eventually allow inferences with regard to the possible neural mechanisms that underlie aesthetic perception in the human visual system. In the present study, we define measures that capture variances of features of a well-established Convolutional Neural Network (CNN), which was trained on millions of images to recognize objects. Using an image dataset that represents traditional Western, Islamic and Chinese art, as well as various types of non-art images, we show that we need only two variance measures to distinguish between the artworks and non-art images with a high classification accuracy of 93.0%. Results for the first variance measure imply that, in the artworks, the subregions of an image tend to be filled with pictorial elements, to which many diverse CNN features respond (richness of feature responses). Results for the second measure imply that this diversity is tied to a relatively large variability of the responses of individual CNN feature across the subregions of an image. We hypothesize that this combination of richness and variability of CNN feature responses is one of properties that makes traditional visual artworks special. We discuss the possible neural underpinnings of this perceptual quality of artworks and propose to study the same quality also in other types of aesthetic stimuli, such as music and literature.
机译:计算美学的目标之一是了解视觉艺术品的特殊之处。通过分析图像统计数据,现代计算机视觉方法使研究人员能够识别出将艺术品与其他(非艺术品)图像类型区分开的属性。这些知识最终将允许推断可能构成人类视觉系统中审美观的神经机制。在本研究中,我们定义了捕获成熟卷积神经网络(CNN)的特征变化的度量,该卷积神经网络在数百万张图像上进行了训练以识别物体。使用代表传统西方,伊斯兰和中国艺术的图像数据集以及各种类型的非艺术图像,我们表明我们仅需要两种方差度量就可以区分艺术品和非艺术图像,并具有很高的分类精度。 93.0%。第一个方差的结果表明,在艺术品中,图像的各个子区域往往充满了绘画元素,许多CNN特征都对此做出了响应(特征响应的丰富性)。第二种方法的结果表明,这种多样性与整个图像子区域中单个CNN特征的响应的较大变化有关。我们假设CNN特征响应的丰富性和可变性的结合是使传统视觉艺术品与众不同的特性之一。我们讨论了艺术品这种感知质量的可能的神经基础,并建议在其他类型的审美刺激(例如音乐和文学)中也研究相同的质量。

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