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A novel learning for image retrieval based on both keyword feature and instance feedback

机译:基于关键词特征和实例反馈的图像检索新方法

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To bridge the semantic gap between low-level visual features and high-level semantic concepts, this paper puts forward a novel feedback mechanism which is based on both instance and keyword features. In offline part, keyword space model is first constructed and updated using manifold ranking annotation; in online image retrieval and feedback part, the keywords which is return to user for labeling are obtained by Bayes algorithm; then by use of labeled keywords and images, the visual features are reweighted by mining the relationship between keyword and visual features; and finally the top n images are returned after learning image labels and then combining them by our ranking function. Our ranking function is flexible and can be adjusted easily. Experimental results on COREL 1000 images show our method improves image retrieval performance from all aspects.
机译:为了弥补底层视觉特征与高层语义概念之间的语义鸿沟,本文提出了一种基于实例特征和关键词特征的新型反馈机制。在离线部分,首先使用流形排名注解构建和更新关键字空间模型;在在线图像检索和反馈部分,通过贝叶斯算法获得返回给用户进行标注的关键词。然后通过使用标记的关键词和图像,通过挖掘关键词和视觉特征之间的关系来对视觉特征进行加权。最后,在学习了图像标签并通过我们的排名功能对它们进行组合之后,返回了前n张图像。我们的排名功能灵活,可以轻松调整。在COREL 1000图像上的实验结果表明,我们的方法从各个方面都提高了图像检索性能。

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