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Relevance Feedback for Keyword and Visual Feature-Based Image Retrieval

机译:基于关键字和视觉特征的图像检索的相关反馈

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In this paper, a relevance feedback scheme for both keyword and visual feature-based image retrieval is proposed. For each keyword, a statistical model is trained offline based on visual features of a small set of manually labeled images and used to propagate the keyword to other unlabeled ones. Besides the offline model, another model is constructed online using the user provided positive and negative images as training set. Support vector machines (SVMs) in the binary setting are adopted as both offline and online models. To effectively combine the two models, a multi-model query refinement algorithm is introduced. Furthermore, an entropy-based active learning strategy is proposed to improve the efficiency of relevance feedback process. Experimental results on a database of 10,000 general-purpose images demonstrate the effectiveness of the proposed relevance feedback scheme.
机译:本文提出了一种基于关键词和视觉特征的图像检索的相关反馈方案。对于每个关键字,统计模型都是根据一小组手动标记的图像的视觉特征进行离线训练的,并用于将关键字传播到其他未标记的图像。除了离线模型,还使用用户提供的正负图像作为训练集在线构建了另一个模型。离线模式和在线模式均采用二进制设置的支持向量机(SVM)。为了有效地结合这两个模型,引入了一种多模型查询细化算法。此外,提出了一种基于熵的主动学习策略,以提高相关性反馈过程的效率。在10,000个通用图像数据库上的实验结果证明了所提出的相关性反馈方案的有效性。

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