论文标题
图像中以本体驱动的事件类型分类
Ontology-driven Event Type Classification in Images
论文作者
论文摘要
事件分类可以添加有价值的信息,以供语义搜索和新闻中事实验证的越来越重要的主题。到目前为止,只有很少的方法解决了新闻价值事件类型的图像分类,例如自然灾害,体育事件或选举。以前的工作仅区分有限数量的事件类型,并且依赖于相当小的培训数据集。在本文中,我们提出了一种新颖的本体驱动的方法,用于分类图像中的事件类型。我们利用大量的现实新闻事件来追求两个目标:首先,我们基于Wikidata创建一个本体,包括大多数事件类型。其次,我们介绍了一个新颖的大规模数据集,该数据集是通过Web Crawling获取的。提出了几种基线,包括一种本体驱动的学习方法,该方法旨在利用知识图的结构化信息,以使用深层神经网络学习相关的事件关系。对现有基准数据集的实验结果表明了所提出的本体驱动方法的优越性。
Event classification can add valuable information for semantic search and the increasingly important topic of fact validation in news. So far, only few approaches address image classification for newsworthy event types such as natural disasters, sports events, or elections. Previous work distinguishes only between a limited number of event types and relies on rather small datasets for training. In this paper, we present a novel ontology-driven approach for the classification of event types in images. We leverage a large number of real-world news events to pursue two objectives: First, we create an ontology based on Wikidata comprising the majority of event types. Second, we introduce a novel large-scale dataset that was acquired through Web crawling. Several baselines are proposed including an ontology-driven learning approach that aims to exploit structured information of a knowledge graph to learn relevant event relations using deep neural networks. Experimental results on existing as well as novel benchmark datasets demonstrate the superiority of the proposed ontology-driven approach.