Deep learning has paved the way for strong recognition systems which are often both trained on and applied to natural images. In this paper, we examine the give-and-take relationship between such visual recognition systems and the rich information available in the fine arts. First, we find that visual recognition systems designed for natural images can work surprisingly well on paintings. In particular, we find that interactive segmentation tools can be used to cleanly annotate polygonal segments within paintings, a task which is time consuming to undertake by hand. We also find that FasterRCNN, a model which has been designed for object recognition in natural scenes, can be quickly repurposed for detection of materials in paintings. Second, we show that learning from paintings can be beneficial for neural networks that are intended to be used on natural images. We find that training on paintings instead of natural images can improve the quality of learned features and we further find that a large number of paintings can be a valuable source of test data for evaluating domain adaptation algorithms. Our experiments are based on a novel large-scale annotated database of material depictions in paintings which we detail in a separate manuscript.
翻译:深层的学习为强烈的识别系统铺平了道路,这些系统往往既受过自然图像的培训,又适用于自然图像。在本文中,我们审视了这些视觉识别系统和美术中丰富的信息之间的交接关系。首先,我们发现,为自然图像设计的视觉识别系统在绘画方面效果惊人。特别是,我们发现,交互式分化工具可以用来清洁地在绘画中说明多边形段,这是一项耗费时间的手工任务。我们还发现,ApperRCNN这个在自然场景中为物体识别设计的模型,可以迅速重新用于探测绘画中的材料。第二,我们表明,从绘画中学习可以有益于自然图像上使用的神经网络。我们发现,关于绘画而不是自然图像的培训可以提高所学特征的质量,我们进一步发现,大量绘画可以成为评估域适应算法的试验数据的宝贵来源。我们的实验基于一个新型的大规模附加注释的材料数据库,我们用单独的手稿详细描述了绘画。