确定地理标记Flickr图像中标记相关性的机器学习方法

Mark Hughes, N. O’Connor, G. Jones
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引用次数: 3

摘要

我们提出了一种新的基于机器学习的方法来确定社区贡献的图像注释的语义相关性,用于图像检索。目前的大规模社区图像检索系统通常依赖于人为标注的标签,这些标签是主观分配的,可能无法为图像提供有用或语义上有意义的标签。无法区分的同质标签是常见的现象,这可能导致对该数据的搜索效果较差。我们描述了一种通过消除通用或不相关的图像标签来改进基于文本的图像检索系统的方法。为了对标签相关性进行分类,我们提出了一个新的特征集,该特征集基于从Flickr收集的地理标记图像集合中每个标签的可用统计信息。使用此特征集训练机器学习模型来分类每个标签与其相关图像的相关性。这个过程的目标是允许对这些图像进行丰富和准确的字幕,目的是提高基于文本的图像检索系统的准确性。使用人工注释的Flickr标记基准集合进行彻底的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A machine learning approach to determining tag relevance in geotagged Flickr imagery
We present a novel machine learning based approach to determining the semantic relevance of community contributed image annotations for the purposes of image retrieval. Current large scale community image retrieval systems typically rely on human annotated tags which are subjectively assigned and may not provide useful or semantically meaningful labels to the images. Homogeneous tags which fail to distinguish between are a common occurrence, which can lead to poor search effectiveness on this data. We described a method to improve text based image retrieval systems by eliminating generic or non relevant image tags. To classify tag relevance, we propose a novel feature set based on statistical information available for each tag within a collection of geotagged images harvested from Flickr. Using this feature set machine learning models are trained to classify the relevance of each tag to its associated image. The goal of this process is to allow for rich and accurate captioning of these images, with the objective of improving the accuracy of text based image retrieval systems. A thorough evaluation is carried out using a human annotated benchmark collection of Flickr tags.
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