Extracting associations and meanings of objects depicted in artworks through bi-modal deep networks

Gregory Kell, Ryan-Rhys Griffiths, Anthony Bourached, D. Stork
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引用次数: 3

Abstract

We present a novel bi-modal system based on deep networks to address the problem of learning associations and simple meanings of objects depicted in"authored"images, such as fine art paintings and drawings. Our overall system processes both the images and associated texts in order to learn associations between images of individual objects, their identities and the abstract meanings they signify. Unlike past deep nets that describe depicted objects and infer predicates, our system identifies meaning-bearing objects ("signifiers") and their associations ("signifieds") as well as basic overall meanings for target artworks. Our system had precision of 48% and recall of 78% with an F1 metric of 0.6 on a curated set of Dutch vanitas paintings, a genre celebrated for its concentration on conveying a meaning of great import at the time of their execution. We developed and tested our system on fine art paintings but our general methods can be applied to other authored images.
通过双模态深度网络提取艺术作品中所描绘对象的关联和意义
我们提出了一种基于深度网络的新型双模态系统,以解决“创作”图像(如美术绘画和素描)中描述的对象的学习关联和简单含义问题。我们的整个系统处理图像和相关文本,以便学习单个物体图像之间的联系,它们的身份和它们所代表的抽象意义。与过去描述描绘对象和推断谓词的深度网络不同,我们的系统识别承载意义的对象(“能指”)及其关联(“能指”),以及目标艺术品的基本整体意义。我们的系统的准确率为48%,召回率为78%,F1指标为0.6,这是一组精心策划的荷兰虚空画,这是一种以专注于在执行时传达重要意义而闻名的流派。我们在美术绘画上开发并测试了我们的系统,但我们的一般方法可以应用于其他创作图像。
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