Weighted Co-SVM for Image Retrieval with MVB Strategy

Xiaoyu Zhang, Jian Cheng, Hanqing Lu, Songde Ma
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引用次数: 9

Abstract

In relevance feedback, active learning is often used to alleviate the burden of labeling by selecting only the most informative data. Traditional data selection strategies often choose the data closest to the current classification boundary to label, which are in fact not informative enough. In this paper, we propose the moving virtual boundary (MVB) strategy, which is proved to be a more effective way for data selection. The co-SVM algorithm is another powerful method used in relevance feedback. Unfortunately, its basic assumption that each view of the data be sufficient is often untenable in image retrieval. We present our weighted co-SVM as an extension of co-SVM by attaching weight to each view, and thus relax the view sufficiency assumption. The experimental results show that the weighted co-SVM algorithm outperforms co-SVM obviously, especially with the help of MVB data selection strategy.
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基于MVB策略的加权协支持向量机图像检索
在关联反馈中,主动学习通常通过选择信息量最大的数据来减轻标注的负担。传统的数据选择策略往往选择最接近当前分类边界的数据进行标注,实际上信息量不够。本文提出了移动虚拟边界(MVB)策略,该策略被证明是一种更有效的数据选择方法。协支持向量机算法是另一种用于相关反馈的强大方法。不幸的是,它的基本假设,即数据的每个视图都是足够的,在图像检索中往往是站不住脚的。我们将加权支持向量机作为辅助支持向量机的扩展,为每个视图附加权重,从而放宽视图充分性假设。实验结果表明,加权协同支持向量机算法明显优于协同支持向量机算法,特别是在MVB数据选择策略的帮助下。
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