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DUAL CROSS-MEDIA RELEVANCE MODEL FOR IMAGE ANNOTATION

机译:图像标注的双重跨媒体相关性模型

摘要

A dual cross-media relevance model (DCMRM) is used for automatic image annotation. In contrast to the traditional relevance models which calculate the joint probability of words and images over a training image database, the DCMRM model estimates the joint probability by calculating the expectation over words in a predefined lexicon. The DCMRM model may be advantageous because a predefined lexicon potentially has better behavior than a training image database. The DCMRM model also takes advantage of content-based techniques and image search techniques to define the word-to-image and word-to-word relations involved in image annotation. Both relations can be estimated by using image search techniques on the web data as well as available training data.
机译:双重跨媒体相关性模型(DCMRM)用于自动图像注释。与在训练图像数据库上计算单词和图像的联合概率的传统相关性模型相比,DCMRM模型通过计算预定义词典中对单词的期望值来估计联合概率。 DCMRM模型可能是有利的,因为预定义的词典可能比训练图像数据库具有更好的行为。 DCMRM模型还利用基于内容的技术和图像搜索技术来定义图像注释中涉及的词对图像和词对词关系。可以通过使用Web数据以及可用的训练数据上的图像搜索技术来估计这两种关系。

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