A Compact Spatial Feature Representation for Image Classification

Pattern Recognition(2013)

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摘要
In this paper, we propose an alternative framework of spatial pyramid matching (SPM) for describing spatial features, which results in a much lower dimensionality of image representation and yields higher performance compared to SPM. By directly integrating the image division information into the appearance descriptor, the ordinary Bag-of-Words (BoW) model can exploit the multi-resolution spatial information efficiently while avoiding the exponentially increased dimensionality of SPM. We design several spatial descriptors, and show that the new framework overcomes the information redundancy in SPM. Our experimental results on two public image databases demonstrate the superiority of the proposed method.
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关键词
spm,spatial descriptors,image representation,information redundancy,image matching,compact spatial feature representation,image resolution,visual databases,public image databases,exponentially increased dimensionality,ordinary bag-of-words model,image division information integration,feature extraction,image classification,spatial feature,alternative framework,multi-resolution spatial information,spatial pyramid matching,bag-of-words,spatial pyramid matching framework,spatial features,bow model,image division information,multiresolution spatial information
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