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Visual words selection based on class separation measures

机译:基于班级分离措施的视觉词选择

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Bag of Visual Words is one of the most effective image representations. One of the optimization methods for BoVW is the selection of the most informative visual words, which leads to more compact visual dictionaries and more accurate categorization. In this paper we investigate the problem of feature selection in the Bag of Visual Words framework. The main contribution is the presentation of two novel methods for visual word selection. The first one choses the features which are the best at separating one class from the rest (MFM1 one-vs-all). In the second method, the features which are the best at separating class pairs are selected (MSF6 one-vs-one). The effectiveness of the proposed methods is verified empirically on two different image datasets.
机译:Bag of Visual Words是最有效的图像表示形式之一。 BoVW的优化方法之一是选择信息最丰富的视觉单词,这将导致更紧凑的视觉词典和更准确的分类。在本文中,我们研究了“视觉单词袋”框架中的特征选择问题。主要贡献是介绍了两种新颖的视觉单词选择方法。第一个选择了最能将一个类别与其他类别区分开的功能(MFM1一对多)。在第二种方法中,选择最能分隔类别对的功能(MSF6一比一)。经验方法在两个不同的图像数据集上验证了所提出方法的有效性。

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