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User-adaptive image retrieval via fusing pointwise and pairwise labels

机译:通过点对和成对标签融合来实现用户自适应图像检索

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摘要

In many Web image retrieval applications, adapting the retrieval results according to some model of the user is a desired feature as the returned images can be made specifically relevant to a user's needs. Making retrieval user-adaptive faces several practical challenges, including the ambiguity of user query, the lack of user-adaptive training data, and lack of proper mechanisms for supporting adaptive learning. To address some of these challenges, we propose a hybrid learning strategy that fuses knowledge from both pointwise and pairwise training data into one framework for attribute-based, user-adaptive image retrieval. An online learning algorithm is developed for updating the ranking performance based on user feedback. The framework is also derived into a kernel form allowing easy application of kernel techniques.We use both synthetic and real-world datasets to evaluate the performance of the proposed algorithm. Comparison with other state-of-the-art approaches suggests that our method achieves obvious performance gains over ranking and zero-shot learning. Further, our online learning algorithm was found to be able to deliver much better performance than batch learning, given the same elapsed running time.
机译:在许多Web图像检索应用程序中,根据用户的某些模型调整检索结果是一种理想的功能,因为可以使返回的图像与用户的需求特别相关。使检索用户适应性面临几个实际挑战,包括用户查询的歧义性,缺乏用户适应性训练数据以及缺乏支持适应性学习的适当机制。为了解决这些挑战中的一些挑战,我们提出了一种混合学习策略,它将来自点对和成对训练数据的知识融合到一个基于属性的,用户自适应的图像检索框架中。开发了一种在线学习算法,用于根据用户反馈更新排名表现。该框架还被导出为内核形式,可以轻松应用内核技术。我们使用合成数据集和实际数据集来评估所提出算法的性能。与其他最新方法的比较表明,我们的方法在排名和零击学习方面取得了明显的性能提升。此外,在相同的运行时间下,发现我们的在线学习算法比批处理学习能够提供更好的性能。

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