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Semantic Bag-of-Words Models for Visual Concept Detection and Annotation

机译:用于视觉概念检测和注释的语义袋式模型

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This paper presents a novel method for building textual feature defined on semantic distance and describes multi-model approach for Visual Concept Detection and Annotation(VCDA). Nowadays, the tags associated with images have been popularly used in the VCDA task, because they contain valuable information about image content that can hardly be described by low-level visual features. Traditionally the term frequencies model is used to capture this useful text information. However, the shortcoming in the term frequencies model lies that the valuable semantic information can not be captured. To solve this problem, we propose the semantic bag-of-words(BoW) model which use WordNet-based distance to construct the codebook and assign the tags. The advantages of this approach are two-fold: (1) It can capture tags semantic information that is hardly described by the term frequencies model. (2) It solves the high dimensionality issue of the codebook vocabulary construction, reducing the size of the tags representation. Furthermore, we employ a strong Multiple Kernel Learning (MKL) classifier to fuse the visual model and the text model. The experimental results on the Image CLEF 2011 show that our approach effectively improves the recognition accuracy.
机译:本文介绍了一种在语义距离上定义的文本特征的新方法,并描述了用于视觉概念检测和注释(VCDA)的多模型方法。如今,与图像相关联的标签已经普遍用于VCDA任务,因为它们包含有关图像内容的有价值的信息,这些信息几乎不能通过低级视觉功能描述。传统上,术语频率模型用于捕获此有用文本信息。然而,术语频率模型中的缺点在于无法捕获有价值的语义信息。为了解决这个问题,我们提出了使用基于Wordnet的距离来构建码本的语义袋(弓)模型并分配标签。这种方法的优点是两倍:(1)它可以捕获几乎术语频率模型几乎不描述的标签语义信息。 (2)它解决了码本词汇结构的高度维度问题,减少了标签表示的大小。此外,我们采用强大的多个内核学习(MKL)分类器来熔断视觉模型和文本模型。图像Clef 2011上的实验结果表明,我们的方法有效提高了识别准确性。

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