基于词共现分析的图像自动标注

Ali Abdulraheem, Lailatul Qadri Zakaria
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引用次数: 0

摘要

随着社交网络和数码相机的扩展,存储容量不断扩大,通过这些应用程序共享的照片多达数百张。大多数社交网络应用程序都允许用户使用标签方法来描述他们的照片。然而,由于标记是一个可选的过程,这些照片中的大多数都没有标记或标记不足。因此,很难搜索和检索这些照片。因此,为了克服这一问题,我们的研究旨在开发一种自动标签传播工具,通过基于词共现分析的标签推荐,将初始标签与其他相关标签进行丰富。这包括Dice, Cosine和Mutual Information。该分析使该工具能够根据Word相似度识别并建议使用相关标记。我们的评估表明,与互信息相比,Dice和Cosine提供了更好的推荐标签候选。因此,我们将两种分析的结果合并为一个候选列表,以支持自动标记传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic Image Tagging Based on Word Co-Occurrence Analysis
with the expansion of the Social Web and the digital cameras, storage capacities are widening with hundreds of photos shared through these applications. Most of the Social Web applications allow users to describe their photos by using tagging approach. However, since the tagging is an optional process, most of these photos were left untagged or with insufficient tags. Hence, it is difficult to search and retrieve these photos. Therefore, in order to overcome this issue, our research aims to develop an automatic tag propagation tool, which will enrich an initial tag with other related tags by using the tag recommendation based on the word co-occurrence analyses. This includes Dice, Cosine and Mutual Information. This analysis enables the tool to identify and suggest utilization of related tags based on Word similarity. Our evaluation shows that Dice and Cosine provide better tags candidate to recommendation as compared to Mutual Information. Therefore, we have combined the results from both analyses to be a candidate list to support the automatic tag propagation.
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