基于空间信息提取和本体的增强图像标注

Z. Muda, P. Lewis, T. Payne, M. Weal
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引用次数: 11

摘要

目前的图像标注研究通常是用标注的区域或物体来表示图像,但很少关注这些区域或物体之间的空间位置或关系。为了提高效率,通用的图像检索系统需要具有全面注释的图像,充分描述图像的内容。目前对图像自动标注方案的研究较多,但很少有人直接解决空间标注问题。本文首先简要分析了对图书馆员的真实图片查询,展示了如何使用空间术语来制定查询。然后,研究了一种增强的自动图像标注系统的开发,该系统可以提取图像中物体的空间信息。该方法使用区域边界和区域标签来生成描述对象绝对位置和对象对之间相对位置的注释。领域本体和空间信息本体也用于提取对象与观察者的相对接近程度的更复杂的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced image annotations based on spatial information extraction and ontologies
Current research on image annotation often represents images in terms of labelled regions or objects, but pays little attention to the spatial positions or relationships between those regions or objects. To be effective, general purpose image retrieval systems require images with comprehensive annotations describing fully the content of the image. Much research is being done on automatic image annotation schemes but few authors address the issue of spatial annotations directly. This paper begins with a brief analysis of real picture queries to librarians showing how spatial terms are used to formulate queries. The paper is then concerned with the development of an enhanced automatic image annotation system, which extracts spatial information about objects in the image. The approach uses region boundaries and region labels to generate annotations describing absolute object positions and also relative positions between pairs of objects. A domain ontology and spatial information ontology are also used to extract more complex information about the relative closeness of objects to the viewer.
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