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Knowing a Tree from the Forest: Art Image Retrieval using a Society of Profiles

机译:从森林中了解一棵树:使用档案社会进行艺术图像检索

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This paper aims to address the problem of art image retrieval (AIR), which aims to help users find their favorite painting images. AIR is of great interests to us because of its application potentials and interesting research challenges―the retrieval is not only based on painting contents or styles, but also heavily based on user preference profiles. This paper describes the collaborative ensemble learning, a novel statistical learning approach to this task. It at first applies probabilistic support vector machines (SVMs) to model each individual user's profile based on given examples, i.e. liked or disliked paintings. Due to the high complexity of profile modelling, the SVMs can be rather weak in predicting preferences for new paintings. To overcome this problem, we combine a society of users' profiles, represented by their respective SVM models, to predict a given user's preferences for painting images. We demonstrate that the combination scheme is embedded in a Bayesian framework and retains intuitive interpretations―like-minded users are likely to share similar preferences. We report extensive empirical studies based on two experimental settings. The first one includes some controlled simulations performed on 4533 painting images. In the second setting, we report evaluations based on user preferences collected through an online web-based survey. Both experiments demonstrate that the proposed approach achieves excellent performance in terms of capturing a user's diverse preferences.
机译:本文旨在解决艺术图像检索(空中)的问题,旨在帮助用户找到他们最喜欢的绘画图像。由于其应用潜力和有趣的研究挑战,空中对我们来说非常兴趣 - 检索不仅基于绘画内容或风格,而且还基于用户偏好配置文件。本文介绍了协作集团学习,这项任务的新型统计学习方法。首先,它适用概率支持向量机(SVM)来根据给定的示例,即喜欢或不喜欢的绘画来模拟每个用户的轮廓。由于型材建模的高度复杂性,SVMS可以相当薄弱地预测新绘画的偏好。为了克服这个问题,我们将由他们各自的SVM模型表示的用户的简档组合,以预测给定用户对绘画图像的偏好。我们证明,组合方案嵌入在贝叶斯框架中,并保留直观的解释,志同道合的用户可能分享类似的偏好。我们报告了基于两种实验设置的广泛实证研究。第一个包括在4533绘画图像上执行的一些受控模拟。在第二个设置中,我们根据通过基于在线网络的调查收集的用户偏好报告评估。两个实验表明,在捕获用户的多样化偏好方面,该方法可以实现出色的性能。

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