Transfer Learning with Style Transfer between the Photorealistic and Artistic Domain

Nikolay Banar, M. Sabatelli, P. Geurts, Walter Daelemans, M. Kestemont
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引用次数: 3

Abstract

Transfer Learning is an important strategy in Computer Vision to tackle problems in the face of limited training data. However, this strategy still heavily depends on the amount of availabl data, which is a challenge for small heritage institutions. This paper investigates various ways of enrichingsmaller digital heritage collections to boost the performance of deep learningmodels, using the identification of musical instruments as a case study. We apply traditional data augmentation techniques as well as the use of an external, photorealistic collection, distorted by Style Transfer. Style Transfer techniques are capable of artistically stylizing images, reusing the style from any other given image. Hence, collections can be easily augmented with artificially generated images. We introduce the distinction between inner and outer style transfer and show that artificially augmented images in both scenarios consistently improve classification results, on top of traditional data augmentation techniques. However, and counter-intuitively, such artificially generated artistic depictions of works are surprisingly hard to classify. In addition, we discuss an example of negative transfer within the non-photorealistic domain.
写实与艺术领域风格迁移的迁移学习
迁移学习是计算机视觉中解决训练数据有限问题的一种重要策略。然而,这一策略仍然严重依赖于可用数据的数量,这对小型遗产机构来说是一个挑战。本文以乐器识别为例,研究了丰富小型数字遗产收藏以提高深度学习模型性能的各种方法。我们应用传统的数据增强技术,以及使用外部的,逼真的集合,被风格转移扭曲。风格转移技术能够在艺术上对图像进行风格化,重用任何其他给定图像的风格。因此,可以很容易地使用人工生成的图像来增强集合。我们介绍了内部和外部风格转移之间的区别,并表明在传统的数据增强技术之上,人工增强的图像在这两种情况下都能持续改善分类结果。然而,与直觉相反的是,这种人为产生的作品艺术描绘令人惊讶地难以分类。此外,我们还讨论了非真实感域内负迁移的一个例子。
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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