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Semi-supervised Relational Topic Model for Weakly Annotated Image Recognition in Social Media

机译:社交媒体中弱注释图像识别的半监督关系主题模型

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In this paper, we address the problem of recognizing images with weakly annotated text tags. Most previous work either cannot be applied to the scenarios where the tags are loosely related to the images, or simply take a pre-fusion at the feature level or a post-fusion at the decision level to combine the visual and textual content. Instead, we first encode the text tags as the relations among the images, and then propose a semi-supervised relational topic model (ss-RTM) to explicitly model the image content and their relations. In such way, we can efficiently leverage the loosely related tags, and build an intermediate level representation for a collection of weakly annotated images. The intermediate level representation can be regarded as a mid-level fusion of the visual and textual content, which is able to explicitly model their intrinsic relationships. Moreover, image category labels are also modeled in the ss-RTM, and recognition can be conducted without training an additional discriminative classifier. Our extensive experiments on social multimedia datasets (images+tags) demonstrated the advantages of the proposed model.
机译:在本文中,我们解决了识别带有弱注释文本标签的图像的问题。大多数以前的工作要么不能应用于标签与图像松散相关的场景,要么不能直接在功能级别进行预融合,而在决策级别仅进行融合后就可以将视觉和文本内容结合起来。相反,我们首先将文本标签编码为图像之间的关系,然后提出一个半监督的关系主题模型(ss-RTM)以显式地对图像内容及其关系进行建模。通过这种方式,我们可以有效地利用松散相关的标签,并为弱注释图像的集合构建中间层表示。中级表示形式可以看作是视觉和文本内容的中级融合,它能够显式地建模它们的内在关系。此外,图像类别标签也在ss-RTM中建模,无需进行额外的区分性分类器即可进行识别。我们对社交多媒体数据集(图像+标签)进行的广泛实验证明了该模型的优势。

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