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Active learning combining uncertainty and diversity for multi-class image classification

机译:结合不确定性和多样性的主动学习,用于多类别图像分类

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In computer vision and pattern recognition applications, there are usually a vast number of unlabelled data whereas the labelled data are very limited. Active learning is a kind of method that selects the most representative or informative examples for labelling and training; thus, the best prediction accuracy can be achieved. A novel active learning algorithm is proposed here based on one-versus-one strategy support vector machine (SVM) to solve multi-class image classification. A new uncertainty measure is proposed based on some binary SVM classifiers and some of the most uncertain examples are selected from SVM output. To ensure that the selected examples are diverse from each other, Gaussian kernel is adopted to measure the similarity between any two examples. From the previous selected examples, a batch of diverse and uncertain examples are selected by the dynamic programming method for labelling. The experimental results on two datasets demonstrate the effectiveness of the proposed algorithm.
机译:在计算机视觉和模式识别应用中,通常存在大量未标记的数据,而标记的数据非常有限。主动学习是一种为标签和培训选择最具代表性或信息量最大的示例的方法。因此,可以获得最佳的预测精度。提出了一种基于一对多策略支持向量机的主动学习算法,以解决多类图像分类问题。基于一些二进制SVM分类器,提出了一种新的不确定性度量,并从SVM输出中选择了一些最不确定的示例。为确保所选示例彼此不同,采用高斯核来衡量任意两个示例之间的相似性。通过动态编程方法从先前选择的示例中选择了一批多样化且不确定的示例进行标记。在两个数据集上的实验结果证明了该算法的有效性。

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