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Automatic Tag Recommendation for Painting Artworks Using Diachronic Descriptions

机译:使用历时描述对绘画作品进行自动标记推荐

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In this paper, we deal with the problem of automatic tag recommendation for painting artworks. Diachronic descriptions containing deviations on the vocabulary used to describe each painting usually occur when the work is done by many experts over time. The objective of this work is to provide a framework that produces a more accurate and homogeneous set of tags for each painting in a large collection. To validate our method we build a model based on a weakly-supervised neural network for over 5,300 paintings with hand-labeled descriptions made by experts for the paintings of the Brazilian painter Candido Portinari. This work takes place with the Portinari Project which started in 1979 intending to recover and catalog the paintings of the Brazilian painter. The Portinari paintings at that time were in private collections and museums spread around the world and thus inaccessible to the public. The descriptions of each painting were made by a large number of collaborators over 40 years as the paintings were recovered and these diachronic descriptions caused deviations on the vocabulary used to describe each painting. Our proposed framework consists of (i) a neural network that receives as input the image of each painting and uses frequent itemsets as possible tags, and (ii) a clustering step in which we group related tags based on the output of the pre-trained classifiers.
机译:在本文中,我们处理绘画作品自动标记推荐的问题。历时性描述中,用于描述每幅绘画的词汇上经常有偏差,通常是由许多专家随时间完成的工作。这项工作的目的是提供一个框架,为大量收藏中的每幅画产生更准确,更均一的标签集。为了验证我们的方法,我们建立了一个基于弱监督神经网络的模型,该模型为5300多幅画作,带有专家为巴西画家Candido Portinari的画作所作的手工标记说明。这项工作与Portinari项目一起进行,该项目始于1979年,旨在对巴西画家的绘画进行分类。当时的波蒂纳里画作是私人收藏,博物馆分布在世界各地,因此公众无法进入。每幅画作的描述都是由40年来的许多合作者对画作进行恢复的,这些历时的描述引起了用来描述每幅画作的词汇上的偏差。我们提出的框架包括(i)一个神经网络,该神经网络接收每幅画的图像作为输入,并使用频繁的项目集作为可能的标签,以及(ii)聚类步骤,在该步骤中,我们根据预先训练的输出将相关标签分组分类器。

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