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Object recognition in wikimage data based on local invariant image features

机译:基于局部不变图像特征的Wikimage数据中的对象识别

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摘要

Object recognition is an essential task in content-based image retrieval and classification. This paper deals with object recognition in WIKImage data, a collection of publicly available annotated Wikipedia images. WIKImage comprises a set of 14 binary classification problems with significant class imbalance. Our approach is based on using the local invariant image features and we have compared 3 standard and widely used feature types: SIFT, SURF and ORB. We have examined how the choice of representation affects the k-nearest neighbor data topology and have shown that some feature types might be more appropriate than others for this particular problem. In order to assess the difficulty of the data, we have evaluated 7 different k-nearest neighbor classification methods and shown that the recently proposed hubness-aware classifiers might be used to either increase the accuracy of prediction, or the macro-averaged F-score. However, our results indicate that further improvements are possible and that including the textual feature information might prove beneficial for system performance.
机译:在基于内容的图像检索和分类中,对象识别是一项必不可少的任务。本文涉及WIKImage数据中的对象识别,WIKImage数据是公开提供注释的Wikipedia图像的集合。 WIKImage包含一组14个具有严重的类不平衡的二进制分类问题。我们的方法基于使用局部不变图像特征,并且我们比较了3种标准且广泛使用的特征类型:SIFT,SURF和ORB。我们已经研究了表示的选择如何影响k最近邻数据拓扑,并且已经表明,对于此特定问题,某些特征类型可能比其他特征类型更合适。为了评估数据的难度,我们评估了7种不同的k近邻分类方法,结果表明,最近提出的中心度感知分类器可用于提高预测的准确性或宏观平均F评分。但是,我们的结果表明,进一步的改进是可能的,并且包括文本特征信息可能被证明对系统性能有利。

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