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Feature Selection to Relate Words and Images

机译:特征选择以关联单词和图像

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Image annotation, i.e. mapping words into images, is currently a major research problem in image retrieval. Inparticular, images are usually segmented into a number of regions, and then low-level image features are extracted fromthe segmented regions for annotation. As the extracted image features may contain some noisy features, which could degradethe recognition performance when the number of keywords assigned to images is very large, image feature selectionneeds to be considered. In this paper, a Pixel Density filter (PDfilter) and Information Gain (IG) are used as the feature selectiontechniques. By using Corel as the dataset, 10, 50, 100, 150 and 190 keywords annotation are setup for comparisons.The experimental result shows that PDfilter and IG can increase the precision of image annotation by colour or texturefeatures. However, they do not enhance the annotation performance by the combined colour and texture features..
机译:图像注释,即将单词映射到图像中,目前是图像检索中的主要研究问题。特别地,通常将图像分割成多个区域,然后从分割的区域提取低级图像特征以进行注释。由于提取的图像特征可能包含一些嘈杂的特征,当分配给图像的关键字数量很大时,这可能会降低识别性能,因此需要考虑选择图像特征。在本文中,像素密度滤波器(PDfilter)和信息增益(IG)被用作特征选择技术。以Corel为数据集,设置了10、50、100、150和190个关键词标注进行比较。实验结果表明,PDfilter和IG可以通过颜色或纹理特征提高图像标注的精度。但是,它们不能通过组合的颜色和纹理功能来增强注释性能。

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