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Automatic Image Tagging through Information Propagation in a Query Log Based Graph Structure

机译:通过查询日志的图形结构中的信息传播自动图像标记

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Annotating or tagging multimedia objects is an important task for enhancing multimedia information retrieval processes. In the context of the Web, automatic tagging deals with many issues, such as loosely tagged images and huge collections of images with no textual data at all. Recently, graph representations have been shown useful for modeling relationships between images and their associated semantics. Using these types of graphs, it is possible to represent images and their textual labels as nodes, and the relationship between them as edges, under the assumption that visual similarity implies semantic similarity. In this work, we present an algorithm for automatic tag propagation in such a graph structure, called the visual-semantic graph. This graph has been used in prior work only for the task of image retrieval re-ranking. The goal of our work, is to show how the visual-semantic graph can be used for efficient tag propagation to unlabeled images. More specifically, our contributions are: (1) An algorithm to propagate tags automatically based on the breadth-first traversal and (2) A set of heuristics for pruning this approach for large size collections.
机译:注释或标记多媒体对象是增强多媒体信息检索进程的重要任务。在Web的上下文中,具有许多问题的自动标记处理,例如松散标记的图像和大量图像,而不是根本没有文本数据。最近,已经表明图表表示对于建模图像与其相关语义之间的关系。使用这些类型的图形,可以将图像及其文本标签表示为节点,并且在视觉相似度暗示语义相似度的假设下,它们之间的关系是边缘。在这项工作中,我们在这种图形结构中提出了一种用于自动标签传播的算法,称为可视化语义图。此图已用于实际工作仅用于图像检索重新排名的任务。我们工作的目标是展示视觉语义图如何用于有效的标签传播到未标记的图像。更具体地说,我们的贡献是:(1)基于广度第一遍历和(2)一组启发式来自动传播标签的算法,以修剪大型集合的这种方法。

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