深度漫画:漫画的显著性估计

Kévin Bannier, Eakta Jain, O. Meur
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引用次数: 9

摘要

训练深度学习显著性模型的一个关键要求是大型训练眼动追踪数据集。尽管眼动追踪技术的可及性大大提高,但对于非常具体的内容类型,如漫画图像,大规模收集眼动追踪数据是很麻烦的,因为漫画图像与照片等自然图像不同,因为文字和图像内容是一体的。在本文中,我们证明了在注视部署与漫画相似的视觉类别上训练的深度网络优于现有模型和用注视部署与漫画截然不同的视觉类别训练的模型。此外,我们发现在接近漫画的视觉类别上使用计算生成的数据比使用具有不同凝视部署的视觉类别的真实眼动追踪数据更好。这些发现对深度网络向不同领域的迁移具有启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deepcomics: saliency estimation for comics
A key requirement for training deep learning saliency models is large training eye tracking datasets. Despite the fact that the accessibility of eye tracking technology has greatly increased, collecting eye tracking data on a large scale for very specific content types is cumbersome, such as comic images, which are different from natural images such as photographs because text and pictorial content is integrated. In this paper, we show that a deep network trained on visual categories where the gaze deployment is similar to comics outperforms existing models and models trained with visual categories for which the gaze deployment is dramatically different from comics. Further, we find that it is better to use a computationally generated dataset on visual category close to comics one than real eye tracking data of a visual category that has different gaze deployment. These findings hold implications for the transference of deep networks to different domains.
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