使用深度神经网络的绘画风格分类

V. Kovalev, A. G. Shishkin
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引用次数: 1

摘要

在本文中,我们将绘画风格划分为五类:印象主义、现实主义、表现主义、后印象主义和浪漫主义。虽然之前的大多数方法依赖于图像处理和手动从绘画图像中提取特征,但我们的模型基于ResNet架构并在ImageNet数据集上进行预训练,在原始像素级别上运行。训练是在一个大型数据集上进行的(大约43k张图像用于5类风格分类问题)。为了提高最终模型的质量,使用了大量的各种增强:随机仿射变换,裁剪,翻转,颜色抖动(即对比度,色调,饱和度),归一化,优化器的调度程序。最后对模型权值进行剪枝,使准确率提高到51.5%,减少了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Painting Style Classification Using Deep Neural Networks
In this paper we describe the problem of painting style classification into five classes: impressionism, realism, expressionism, post-impressionism and romanticism. While most previous approaches relied on image processing and manual feature extraction from painting images, our model based on the ResNet architecture and pre-trained on the ImageNet dataset operates on the raw pixel level. The training has been performed on a large dataset (about 43k images for five class style classification problem). To increase the quality of final model a large number of various augmentations were used: random Affine transform, crop, flip, color jitter (i.e. contrast, hue, saturation), normalization, a scheduler for the optimizer. Finally model weights were pruned which allowed increasing accuracy up to 51.5% and decreasing computation time as well.
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