Discerning Art Works through Active Machine Learning

Zihao Yu
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Abstract

Scene classification is a popular and important question in computer vision and has been developed in different areas. Applying computer vision to artworks has become a popular topic in recent years. However, the traditional random sampling to identify the artworks through machine learning requires a large data set and, therefore, a higher cost to get a solid result. This paper compares random sampling and active learning (uncertainty sampling) performance using a data set (8446 paintings) of the 50 most influential painters in Europe from the 13th to the 20th century. and then propose that the active learning strategy can build a stronger model that requires smaller data sets. The active learning model can be further improved through training in larger data sets and applied in the artwork recognition for artificial intelligence..
通过主动机器学习识别艺术作品
场景分类是计算机视觉领域的一个热点和重要问题,已经在不同领域得到了发展。近年来,将计算机视觉应用于艺术品已成为一个热门话题。然而,通过机器学习来识别艺术品的传统随机抽样需要大量数据集,因此获得可靠结果的成本更高。本文利用13世纪至20世纪欧洲50位最有影响力的画家的8446幅画作的数据集,比较了随机抽样和主动学习(不确定性抽样)的表现。然后提出主动学习策略可以建立一个更强大的模型,需要更小的数据集。主动学习模型可以通过更大数据集的训练进一步完善,并应用于人工智能的艺术品识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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