Content-based annotation and classification framework: a general multi-purpose approach

Michal Batko, Jan Botorek, Petra Budíková, P. Zezula
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引用次数: 10

Abstract

Unprecedented amounts of digital data are becoming available nowadays, but frequently the data lack some semantic information necessary to effectively organize these resources. For images in particular, textual annotations that represent the semantics are highly desirable. Only a small percentage of images is created with reliable annotations, therefore a lot of effort is being invested into automatic image annotation. In this paper, we address the annotation problem from a general perspective and introduce a new annotation model that is applicable to many text assignment problems. We also provide experimental results from several implemented instances of our model.
基于内容的注释和分类框架:一种通用的多用途方法
如今,大量的数字数据变得可用,但这些数据往往缺乏有效组织这些资源所必需的一些语义信息。特别是对于图像,非常需要表示语义的文本注释。只有一小部分图像是用可靠的注释创建的,因此在自动图像注释上投入了大量的精力。在本文中,我们从一般的角度来解决标注问题,并引入了一种适用于许多文本分配问题的新的标注模型。我们还提供了我们模型的几个实现实例的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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