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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Long-term relevance feedback and feature selection for adaptive content based image suggestion
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Long-term relevance feedback and feature selection for adaptive content based image suggestion

机译:基于自适应内容的图像建议的长期相关性反馈和特征选择

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摘要

Content-based image suggestion (CBIS) addresses the satisfaction of users long-term needs for "relevant" and "novel" images. In this paper, we present VCC-FMM, a flexible mixture model that clusters both images and users into separate groups. Then, we propose long-term relevance feedback to maintain accurate modeling of growing image collections and changing user long-term needs over time. Experiments on a real data set show merits of our approach in terms of image suggestion accuracy and efficiency.
机译:基于内容的图像建议(CBIS)解决了用户对“相关”和“新颖”图像的长期需求。在本文中,我们介绍了VCC-FMM,这是一种灵活的混合模型,可以将图像和用户聚类到单独的组中。然后,我们提出长期的相关性反馈,以保持不断增长的图像集的准确建模以及随着时间的推移改变用户的长期需求。在真实数据集上进行的实验显示了我们的方法在图像建议准确性和效率方面的优点。

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