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Automatic Image Annotation and Retrieval using Cross-Media Relevance Models

机译:使用跨媒体相关性模型的自动图像注释和检索

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摘要

Libraries have traditionally used manual image annotation for indexing and then later retrieving their image collections. However, manual image annotation is an expensive and labor intensive procedure and hence there has been great interest in coming up with automatic ways to retrieve images based on content. Here, we propose an automatic approach to annotating and retrieving images based on a training set of images. We assume that regions in an image can be described using a small vocabulary of blobs. Blobs are generated from image features using clustering. Given a training set of images with annotations, we show that probabilistic models allow us to predict the probability of generating a word given the blobs in an image. This may be used to automatically annotate and retrieve images given a word as a query. We show that relevance models. allow us to derive these probabilities in a natural way. Experiments show that the annotation performance of this cross-media relevance model is almost six times as good (in terms of mean precision) than a model based on word-blob co-occurrence model and twice as good as a state of the art model derived from machine translation. Our approach shows the usefulness of using formal information retrieval models for the task of image annotation and retrieval.
机译:传统上,图书馆使用手动图像注释进行索引,然后再检索其图像集合。但是,手动图像注释是一种昂贵且费力的过程,因此,人们对提出一种基于内容的自动方法来获取图像的兴趣很大。在这里,我们提出了一种基于图像训练集的自动注释和检索图像的方法。我们假设图像中的区域可以使用少量的斑点来描述。使用聚类从图像特征生成斑点。给定带有注释的图像训练集,我们证明了概率模型使我们能够预测在给定图像中斑点的情况下生成单词的概率。这可以用于自动注释和检索给定单词作为查询的图像。我们展示了相关模型。让我们以自然的方式得出这些概率。实验表明,该跨媒体相关性模型的注释性能(基于平均精度)几乎是基于单词blob共现模型的模型的六倍,并且是最新模型的两倍。从机器翻译。我们的方法表明了使用正式的信息检索模型进行图像注释和检索的作用。

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