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Selective clustering for representative paintings selection

机译:用于代表画选择的选择性聚类

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摘要

Selective classification (or rejection based classification) has been proved useful in many applications. In this paper we describe a selective clustering framework with reject option to carry out large-scale digital arts analysis. With the help of deep learning techniques, we extract content-style features from a pre-trained convolutional network for the paintings. By proposing a rejection mechanism under Bayesian framework, we focus on selecting style-oriented representative paintings of an artist, which is an interesting and challenging cultural heritage application. Two kinds of samples are rejected during the rejection based robust continuous clustering process. Representative paintings are selected during the selective clustering phase. Visual qualitative analysis on small painting set and large scale quantitative experiments on a subset of Wikiart show that the proposed rejection based selective clustering approach outperforms the standard clustering methods.
机译:选择性分类(或基于拒绝分类)已被证明在许多应用中有用。在本文中,我们描述了一个带有拒绝选项的选择性聚类框架,以进行大规模的数字艺术分析。借助深度学习技术,我们从预先训练好的卷积网络中提取绘画的内容样式特征。通过在贝叶斯框架下提出拒绝机制,我们专注于选择面向风格的艺术家代表性绘画,这是一种有趣且具有挑战性的文化遗产应用。在基于拒绝的鲁棒连续聚类过程中,会拒绝两种样本。在选择性聚类阶段选择代表性画作。对小型绘画集的视觉定性分析和对Wikiart子集的大规模定量实验表明,基于拒绝的选择性聚类方法优于标准聚类方法。

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