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ContextNet: representation and exploration for painting classification and retrieval in context

机译:ContextNet:语境中绘画分类和检索的表示和探索

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In automatic art analysis, models that besides the visual elements of an artwork represent the relationships between the different artistic attributes could be very informative. Those kinds of relationships, however, usually appear in a very subtle way, being extremely difficult to detect with standard convolutional neural networks. In this work, we propose to capture contextual artistic information from fine-art paintings with a specific ContextNet network. As context can be obtained from multiple sources, we explore two modalities of ContextNets: one based on multitask learning and another one based on knowledge graphs. Once the contextual information is obtained, we use it to enhance visual representations computed with a neural network. In this way, we are able to (1) capture information about the content and the style with the visual representations and (2) encode relationships between different artistic attributes with the ContextNet. We evaluate our models on both painting classification and retrieval, and by visualising the resulting embeddings on a knowledge graph, we can confirm that our models represent specific stylistic aspects present in the data.
机译:在自动艺术分析中,除了艺术品的视觉元素之外的模型代表了不同艺术属性之间的关系可能是非常有信息的。然而,这些关系通常以非常微妙的方式出现,非常难以用标准的卷积神经网络检测。在这项工作中,我们建议捕获具有特定ContextNet网络的美术绘画的上下文艺术信息。作为从多个源获得的上下文,我们探索了基于多任务学习的ContexTnets的两个模式,基于知识图形。一旦获得了上下文信息,我们将使用它来增强用神经网络计算的视觉表示。通过这种方式,我们能够(1)捕获有关内容和风格的信息,具有可视表示和(2)与上下文网络之间的不同艺术属性之间的关系。我们在绘画分类和检索方面评估我们的模型,并通过在知识图表上可视化产生的嵌入式,我们可以确认我们的模型代表数据中存在的特定风格方面。

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