论文标题

风格转移和绘画可以为模型鲁棒性做些什么?

What Can Style Transfer and Paintings Do For Model Robustness?

论文作者

Lin, Hubert, van Zuijlen, Mitchell, Pont, Sylvia C., Wijntjes, Maarten W. A., Bala, Kavita

论文摘要

改善模型鲁棒性的常见策略是通过数据增强。数据增强鼓励模型学习所需的不变,例如水平翻转或颜色的小变化。最近的工作表明,任意样式转移可以用作数据增强的一种形式,可以通过从照片中创建类似绘画的图像来鼓励对纹理的不变性。但是,风格化的照片与艺术家创作的画不完全相同。艺术家描绘了绘画中有意义的提示,以便人类可以识别场景中的显着组成部分,这是一种不受风格转移的强制性强调。因此,我们研究样式转移和绘画对模型鲁棒性的影响如何有所不同。首先,我们研究了绘画作为基于模式化数据增强的样式图像的作用。我们发现,即使没有绘画作为样式图像,该样式传输的功能也很好。其次,我们表明从绘画中学习是一种感知数据增强的形式可以提高模型的鲁棒性。最后,我们调查了从风格化和绘画中学到的不变,并表明模型从这些不同形式的数据中学习了不同的不变。我们的结果提供了有关风格化如何改善模型鲁棒性的见解,并提供了证据表明艺术家创造的绘画可以成为模型鲁棒性的宝贵数据来源。

A common strategy for improving model robustness is through data augmentations. Data augmentations encourage models to learn desired invariances, such as invariance to horizontal flipping or small changes in color. Recent work has shown that arbitrary style transfer can be used as a form of data augmentation to encourage invariance to textures by creating painting-like images from photographs. However, a stylized photograph is not quite the same as an artist-created painting. Artists depict perceptually meaningful cues in paintings so that humans can recognize salient components in scenes, an emphasis which is not enforced in style transfer. Therefore, we study how style transfer and paintings differ in their impact on model robustness. First, we investigate the role of paintings as style images for stylization-based data augmentation. We find that style transfer functions well even without paintings as style images. Second, we show that learning from paintings as a form of perceptual data augmentation can improve model robustness. Finally, we investigate the invariances learned from stylization and from paintings, and show that models learn different invariances from these differing forms of data. Our results provide insights into how stylization improves model robustness, and provide evidence that artist-created paintings can be a valuable source of data for model robustness.

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