Historical Context-based Style Classification of Painting Images via Label Distribution Learning

Jufeng Yang, Liyi Chen, Le Zhang, Xiaoxiao Sun, Dongyu She, Shao-Ping Lu, Ming-Ming Cheng
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引用次数: 17

Abstract

Analyzing and categorizing the style of visual art images, especially paintings, is gaining popularity owing to its importance in understanding and appreciating the art. The evolution of painting style is both continuous, in a sense that new styles may inherit, develop or even mutate from their predecessors and multi-modal because of various issues such as the visual appearance, the birthplace, the origin time and the art movement. Motivated by this peculiarity, we introduce a novel knowledge distilling strategy to assist visual feature learning in the convolutional neural network for painting style classification. More specifically, a multi-factor distribution is employed as soft-labels to distill complementary information with visual input, which extracts from different historical context via label distribution learning. The proposed method is well-encapsulated in a multi-task learning framework which allows end-to-end training. We demonstrate the superiority of the proposed method over the state-of-the-art approaches on Painting91, OilPainting, and Pandora datasets.
基于历史语境的标签分布学习绘画图像风格分类
分析和分类视觉艺术图像,特别是绘画的风格,由于其对理解和欣赏艺术的重要性而越来越受欢迎。绘画风格的演变是连续的,从某种意义上说,新的风格可能在其前身的基础上继承、发展甚至突变,并且由于视觉外观、出生地、起源时间和艺术运动等各种问题而具有多模态性。基于这一特性,我们引入了一种新的知识提取策略来辅助卷积神经网络的视觉特征学习,用于绘画风格分类。更具体地说,采用多因素分布作为软标签,通过标签分布学习从不同的历史背景中提取视觉输入的互补信息。该方法被很好地封装在一个多任务学习框架中,允许端到端训练。我们在Painting91、OilPainting和Pandora数据集上证明了所提出的方法优于最先进的方法。
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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