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Creating a Semantic Hierarchy of SUN Database Object Labels Using WordNet

机译:使用Wordnet创建Sun Database对象标签的语义层次结构

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Using a semantic hierarchy as a labeling scheme can provide object detection systems with a more robust expert knowledge of the relationships between object classes. This knowledge can be used to improve object class prediction in cases where an object detector encounters an object of a class upon which it was not trained, known as zero-shot object detection or open-set recognition. Datasets which arc useful for a particular application, domain, or task may not have their object labels organized into an appropriate semantic hierarchy. For example, the Scene UNderstanding (SUN1) Database has image scenes organized into a hierarchy, but no such organization exists with the object labels. Objects in the images of this dataset were annotated in a crowd-sourced manner which allowed annotators to define the polygons which bound the objects as well as assign the labels. The challenge taken up by the method presented in this paper was to take the original object labels of the SUN Database and create a semantic hierarchy such that each child-parent pair of object classes demonstrates an '"IS-A" relationship. By associating common labels within the dataset with the most relevant and fine-grained WordNet" synonym, this approach resulted in a multi-layered semantic hierarchy for SUN Database object labels. The product is a tree-structured graph where each node is a WordNet synonym of the original label and a node's parent is determined by its WordNet hypernym. Other ontological frameworks, such as Basic Formal Ontology' and the Operational Environment Ontology Suite,4 are also discussed.
机译:使用语义层次结构作为标签方案,可以提供对象检测系统,具有更强大的对象类之间的关系的专家知识。在对象检测器遇到未培训的类的对象的情况下,可以使用该知识来改善对象类预测,其中被称为零射对对象检测或开放式识别。对特定应用程序,域或任务有用的数据集可能不会将其对象标签组织成适当的语义层次结构。例如,场景理解(Sun1)数据库具有组织成层次结构的图像场景,但没有对象标签存在这样的组织。此数据集的图像中的对象以人群源方式注释,允许注释器定义与对象相结合的多边形以及分配标签。本文呈现的方法所采取的挑战是拍摄Sun数据库的原始对象标签,并创建语义层次结构,以便每个子父父对象类展示“IS-A”的关系。通过将数据集中的公共标签与最相关和更精细的Wordnet相关联“同义词,这种方法导致了Sun数据库对象标签的多层语义层次结构。该产品是一款树结构图,其中每个节点是Wordnet同义词原始标签和节点的父级由其Wordnet HyperNym确定。还讨论了其他本体框架,例如基本形式本体论,以及操作环境本体套件4。

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