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Active SVM-based relevance feedback using multiple classifiers ensemble and features reweighting

机译:使用多个分类器集成和功能权重的基于活动SVM的相关性反馈

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摘要

Relevance feedback (RF) is an effective approach to bridge the gap between low-level visual features and high-level semantic meanings in content-based image retrieval (CBIR). The active support vector machine (SVM) based RFs have been popular because they can outperform many other classifiers when the size of the training set is small, but they are often very complex and some unsatisfactory relevance of results occur frequently. To overcome the above limitations, an active SVM-based RF using multiple classifiers ensemble and features reweighting is proposed in this paper. Firstly, we select the most informative images by using active learning method for user to label, and quickly learn a boundary that separates the images that satisfy the user's query concept from the rest of the dataset. Secondly, the feature space is modified dynamically by appropriately weighting the descriptive features according to a set of statistical characteristics. Then, a set of moderate accurate one-class SVM classifiers are trained separately by using different new sub-features vectors. Finally, we compute the weight vector of component SVM classifiers dynamically by using the parameters for positive and negative samples, and combine the results of the component classifiers to form an output code as a hypothesized solution to the overall image retrieval problem. Extensive simulations on large databases show that the proposed algorithm is significantly more effective than the state-of-the-art approaches.
机译:相关性反馈(RF)是一种有效的方法,可以弥补基于内容的图像检索(CBIR)中低级视觉特征和高级语义之间的差距。基于主动支持向量机(SVM)的RF已广受欢迎,因为当训练集的大小较小时,它们可以胜过许多其他分类器,但它们通常非常复杂,结果的相关性经常不令人满意。为了克服上述限制,本文提出了一种基于有源SVM的RF,该RF使用多个分类器集成,并且对特征进行加权。首先,我们使用主动学习方法为用户标记信息量最大的图像,并快速学习一个边界,该边界将满足用户查询概念的图像与其余数据集分开。其次,通过根据一组统计特征适当地加权描述性特征来动态地修改特征空间。然后,通过使用不同的新子功能向量分别训练一组中等准确的一类SVM分类器。最后,我们使用正样本和负样本的参数动态计算分量SVM分类器的权重向量,并结合分量分类器的结果以形成输出代码,作为对整体图像检索问题的假设解决方案。在大型数据库上进行的广泛仿真表明,所提出的算法比最新方法有效得多。

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