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Combining long-term learning and active learning with semi-supervised method for content-based image retrieval

机译:长期学习和主动学习与半监督方法相结合的基于内容的图像检索

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To improve the efficiency of relevance feedback in image retrieval, an integrated method of long-term learning and active learning is proposed. In early stage, more positive samples are obtained through long-term learning. The problem of biased training samples is effectively solved through a semi-supervised method that uses not only labeled training samples but also unlabeled ones; therefore an accurate initial SVM classifier is obtained. In later stage, through active learning algorithm that selects the most useful samples in database to solicit the user for labeling, samples required for labeling by users decreased largely and convergence rate increased greatly. Experimental results on 5000 Corel images library have shown that the proposed method can greatly improve both the efficiency and the performance, and it can accelerate the convergence to user's query concept as well.
机译:为了提高相关反馈在图像检索中的效率,提出了一种长期学习与主动学习相结合的方法。在早期阶段,通过长期学习可以获得更多阳性样本。通过半监督方法可以有效地解决训练样本有偏差的问题,该方法不仅使用标记的训练样本,还使用未标记的训练样本。因此,可以获得准确的初始SVM分类器。在后期,通过主动学习算法选择数据库中最有用的样本来吸引用户进行标记,用户标记所需的样本大大减少,收敛速度大大提高。在5000个Corel图像库上的实验结果表明,该方法可以大大提高效率和性能,并且可以加快对用户查询概念的收敛。

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