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Classification of Style in Fine-Art Paintings Using Transfer Learning and Weighted Image Patches

机译:使用转移学习和加权图像贴片的美术绘画风格的分类

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With the ongoing expansion of digitized artworks, the automated analysis and categorization of fine art paintings have become a rapidly growing research field. However, due to the implicit subjectivity and nuances separating different artistic movements, numerical art analysis implies significant challenges. This paper describes a new efficient method that improves the classification accuracy of fine-art paintings compared to the existing baseline methods. The proposed approach is based on transfer learning and classification of sub-regions or patches of the painting. A weighted sum of the individual-patch classification outcomes gives the final stylistic label of the analyzed painting. The patch weights are optimized to maximize the overall style recognition accuracy. Experimental validation based on two standard art classification datasets and six different pre-trained convolutional neural network (CNN) models (AlexNet, VGG-16, VGG-19, GoogLeNet, ResNet-50 and Inceptionv3) shows that the proposed approach outperforms the baseline techniques and offers low computational and data costs.
机译:随着数字化艺术品的持续扩展,美术绘画的自动分析和分类已成为一种快速增长的研究领域。然而,由于隐式主体性和分离不同艺术运动的细微差别,数值艺术分析意味着重大挑战。本文介绍了一种新的高效方法,与现有的基线方法相比,可以提高美术绘画的分类准确性。所提出的方法是基于绘画子区域或涂料斑块的转移学习和分类。个体补丁分类结果的加权总和给出了分析的绘画的最终风格标签。修补程序重量被优化,以最大化整体识别精度。基于两个标准艺术分类数据集的实验验证和六种不同预先训练的卷积神经网络(CNN)模型(AlexNet,VGG-16,VGG-19,Googlenet,Reset-50和Inceptionv3)表明,所提出的方法优于基线技术并提供低计算和数据成本。

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