2 research outputs found

    Symmetric Statistical Translation Models for Automatic Image Annotation

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    Automatic image annotation provides means for users to search image collections on the semantic level using natural language queries. In the past, statistical machine translation models have been successfully applied to automatic image annotation. A problem with this approach is that, due to the skewed distribution of term frequency for annotation words, common words have been overly favored, which leaves little room for uncommon words to be used in auto-annotations. In contrast, studies on information retrieval have revealed that uncommon words are at least as important as common words since they are also often used in users ’ queries. Unlike the previous studies where a single type of statistical translation model is considered for automatic image annotation, in this paper, we studied two types of statistica

    Symmetric Statistical Translation Models for Automatic Image Annotation

    No full text
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