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User-curated image collections: Modeling and recommendation

机译:用户策划的图像集:建模和推荐

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Most state-of-the-art image retrieval and recommendation systems predominantly focus on individual images. In contrast, socially curated image collections, condensing distinctive yet coherent images into one set, are largely overlooked by the research communities. In this paper, we aim to design a novel recommendation system that can provide users with image collections relevant to individual personal preferences and interests. To this end, two key issues need to be addressed, i.e., image collection modeling and similarity measurement. For image collection modeling, we consider each image collection as a whole in a group sparse reconstruction framework and extract concise collection descriptors given the pretrained dictionaries. We then consider image collection recommendation as a dynamic similarity measurement problem in response to user's clicked image set, and employ a metric learner to measure the similarity between the image collection and the clicked image set. As there is no previous work directly comparable to this study, we implement several competitive baselines and related methods for comparison. The evaluations on a large scale Pinterest data set have validated the effectiveness of our proposed methods for modeling and recommending image collections.
机译:大多数最新的图像检索和推荐系统主要集中于单个图像。相反,社会策划的图像集将独特而又连贯的图像浓缩为一组,却被研究界所忽视。在本文中,我们旨在设计一种新颖的推荐系统,该系统可以为用户提供与个人个人喜好和兴趣相关的图像集。为此,需要解决两个关键问题,即图像收集建模和相似性测量。对于图像集合建模,我们将每个图像集合视为一个整体的稀疏重建框架,并根据给定的预训练字典提取简洁的集合描述符。然后,我们将图像收集推荐视为响应用户单击的图像集的动态相似度测量问题,并采用度量学习器来测量图像收集和单击的图像集之间的相似度。由于没有以前的工作可以直接与这项研究进行比较,因此我们实施了几种竞争基准和相关方法进行比较。对大规模Pinterest数据集的评估验证了我们提出的建模和推荐图像收集方法的有效性。

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