上下文感知嵌入自动艺术分析

Noa García, B. Renoust, Yuta Nakashima
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引用次数: 38

摘要

自动艺术分析旨在通过使用计算机视觉和机器学习技术从图像集合中分类和检索艺术表现。在这项工作中,我们建议用上下文艺术信息增强神经网络的视觉表征。虽然视觉表示能够捕获有关艺术作品的内容和风格的信息,但我们提出的上下文感知嵌入额外编码不同艺术属性之间的关系,例如作者、学校或历史时期。我们设计了两种不同的方法在自动艺术分析中使用上下文。在第一种方法中,上下文数据通过多任务学习模型获得,其中多个属性被一起训练以找到元素之间的视觉关系。在第二种方法中,通过特定于艺术的知识图获得上下文,该知识图对艺术属性之间的关系进行编码。对我们的模型在几个艺术分析问题(如作者识别、类型分类或跨模态检索)中的详尽评估表明,当使用上下文感知嵌入时,艺术分类的性能提高了7.3%,检索的性能提高了37.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-Aware Embeddings for Automatic Art Analysis
Automatic art analysis aims to classify and retrieve artistic representations from a collection of images by using computer vision and machine learning techniques. In this work, we propose to enhance visual representations from neural networks with contextual artistic information. Whereas visual representations are able to capture information about the content and the style of an artwork, our proposed context-aware embeddings additionally encode relationships between different artistic attributes, such as author, school, or historical period. We design two different approaches for using context in automatic art analysis. In the first one, contextual data is obtained through a multi-task learning model, in which several attributes are trained together to find visual relationships between elements. In the second approach, context is obtained through an art-specific knowledge graph, which encodes relationships between artistic attributes. An exhaustive evaluation of both of our models in several art analysis problems, such as author identification, type classification, or cross-modal retrieval, show that performance is improved by up to 7.3% in art classification and 37.24% in retrieval when context-aware embeddings are used.
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