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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Training inter-related classifiers for automatic image classification and annotation
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Training inter-related classifiers for automatic image classification and annotation

机译:训练相互关联的分类器以进行自动图像分类和注释

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摘要

A structural learning algorithm is developed in this paper to achieve more effective training of large numbers of inter-related classifiers for supporting large-scale image classification and annotation. A visual concept network is constructed for characterizing the inter-concept visual correlations intuitively and determining the inter-related learning tasks automatically in the visual feature space rather than in the label space. By partitioning large numbers of object classes and image concepts into a set of groups according to their inter-concept visual correlations, the object classes and image concepts in the same group will share similar visual properties and their classifiers are strongly inter-related while the object classes and image concepts in different groups will contain various visual properties and their classifiers can be trained independently. By leveraging the inter-concept visual correlations for inter-related classifier training, our structural learning algorithm can train the inter-related classifiers jointly rather than independently, which can enhance their discrimination power significantly. Our experiments have also provided very positive results on large-scale image classification and annotation.
机译:本文开发了一种结构学习算法,以实现对大量相互关联的分类器的更有效训练,以支持大规模图像分类和注释。构建视觉概念网络,以直观地表征概念间的视觉关联,并在视觉特征空间而非标签空间中自动确定相互关联的学习任务。通过根据它们之间的概念间视觉相关性将大量的对象类和图像概念划分为一组组,同一组中的对象类和图像概念将共享相似的视觉属性,而它们的分类器之间却具有很强的相互关联性不同组中的类别和图像概念将包含各种视觉属性,并且它们的分类器可以独立训练。通过利用概念间的视觉相关性进行相互关联的分类器训练,我们的结构学习算法可以联合而不是独立地对相互关联的分类器进行训练,从而可以显着提高其判别能力。我们的实验在大规模图像分类和注释方面也提供了非常积极的结果。

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