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Image Classification Using Adapted Codebook

机译:使用适应码本的图像分类

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Bag of visual words model deriving from text categorization has recently appeared promising for object and image classification, this method always need to deal with large database. This paper proposed an efficient clustering algorithm to obtain universal codebook and adapted codebook, our combination of k-means and agglomerative clustering gives significant improvement in time efficiency while maintaining the same performance of image classification. We also use the adapted codebook to improve image classification performance, an image is presented by a set of histograms - one per class, each histogram describes whether the image is best modeled by the universal codebook or the corresponding adapted class codebook. The experiment result on Caltech-256 shows the combined universal codebook and adapted class codebook representation outperforms those approaches which use the universal codebook only.
机译:从文本分类中导出的袋子的袋子最近出现了对象和图像分类的希望,这种方法始终需要处理大型数据库。本文提出了一种有效的聚类算法来获得通用码本和适应码本,我们的K均值和凝聚聚类的组合在保持相同的图像分类性能的同时显着提高时间效率。我们还使用适应的码本来提高图像分类性能,通过一组直方图呈现图像 - 每个直方图描述图像是否由通用码本或相应的适应类码本最佳地建模。 CALTECH-256上的实验结果显示了组合的通用码本和适应的类码本表示优于仅使用通用码本的方法。

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