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Bag-of-Visual Words Codebook Development for the Semantic Content Based Annotation of Images

机译:基于语义内容的图像标注视觉袋词密码本开发

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The Bag-of-Visual has been recognised as an effective mean of representing images for the purpose of image classification. This paper explains that the quality and quantity of visual-words in the Bag-of-Visual Words codebook generated from an image collection should correlate to the diversity of image contents, and proposes a BOVW codebook development approach that uses the elimination of image features spatial redundancy, batch vector quantisation, and the imposition of an image feature similarity threshold function in generating a codebook that considers the content diversity of the image collection to be classified. With the aid of experimental image collections constituted from Caltech-101 Image set, this paper also demonstrates the importance of this codebook development approach in the determination of the suitable number of latent topics for the implementation of image categorisation via Probabilistic Latent Semantic Analysis for the semantic content annotation of images.
机译:视觉袋已被认为是代表图像进行图像分类的有效手段。本文解释说,从图像集合生成的视觉袋词码本中视觉词的质量和数量应与图像内容的多样性相关,并提出一种BOVW码本开发方法,该方法使用消除图像特征空间冗余,批处理矢量量化和在生成考虑要分类的图像集合的内容多样性的码本时施加图像特征相似性阈值函数。借助Caltech-101图像集构成的实验图像集,本文还演示了此密码本开发方法在确定适当数量的潜在主题以通过语义的潜在潜在语义分析实现图像分类中的重要性。图像的内容注释。

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