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A comparative study of different feature mapping methods for image annotation

机译:图像注释不同特征映射方法的比较研究

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Automatic image annotation and tagging is necessary for indexing and searching of images using querying a text. It is widely used in search engines like Google, Yahoo, Baidu, etc. Fast Image Tagging (FastTag) algorithm is proposed to accelerate image annotation process, while keeping the precision of automatic image annotation results. Feature mapping is used to map image features vectors onto higher dimensional feature space. Feature mapping methods plays an important role in automatic image annotation. In this paper, we have compared 6 kernels, among which four kernels are used in homogeneous feature mapping and two kernels are used in discriminative tree based feature mapping, to investigate which feature mapping performs better for automatic image annotation. The performance of these methods has been analyzed by conducting intensive experiments on three different datasets as used by FastTag algorithm in their experiments. We have found that the homogeneous feature mapping with χ kernel is more suitable when used in FastTag algorithm in terms of precision, recall, FI score and N+ measures, and with a relatively acceptable performance.
机译:使用查询文本索引和搜索图像所需的自动图像注释和标记。它广泛用于谷歌,雅虎,百度等搜索引擎中。提出了快速图像标记(FastTag)算法以加速图像注释过程,同时保持自动图像注释结果的精度。特征映射用于将图像特征向量映射到更高的维度特征空间。特征映射方法在自动图像注释中播放重要作用。在本文中,我们已经比较了6个内核,其中在均匀特征映射中使用了四个内核,并且在基于鉴别的树木的特征映射中使用了两个内核,以研究哪个特征映射对自动图像注释更好地执行更好的特征映射。通过在实验中的FastTag算法使用的三种不同数据集上进行密集实验,分析了这些方法的性能。我们发现,在精确,召回,FI评分和N +测量方面使用时,用χ内核的同次特征映射更适合,并且具有相对可接受的性能。

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