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A Graphical Model for Content Based Image Suggestion and Feature Selection

机译:基于内容的图像建议和特征选择的图形模型

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摘要

Content based image retrieval systems provide techniques for representing, indexing and searching images. They address only the user's short term needs expressed as queries. From the importance of the visual information in many applications such as advertisements and security, we motivate in this paper, the Content Based Image Suggestion. It targets the user's long term needs as a recommendation of products based on the user preferences in different situations, and on the visual content of images. We propose a generative model in which the visual features and users are clustered into separate classes. We identify the number of both user and image classes with the simultaneous selection of relevant visual features. The goal is to ensure an accurate prediction of ratings for multidimensional images. This model is learned using the minimum message length approach. Experiments with an image collection showed the merits of our approach.
机译:基于内容的图像检索系统提供了用于表示,索引和搜索图像的技术。它们仅解决表示为查询的用户短期需求。从视觉信息在广告和安全等许多应用中的重要性出发,我们在本文中提出了基于内容的图像建议。它根据不同情况下的用户偏好以及图像的视觉内容,将用户的长期需求作为产品推荐的目标。我们提出了一个生成模型,其中视觉特征和用户被聚集到单独的类中。我们通过同时选择相关的视觉特征来识别用户和图像类别的数量。目的是确保对多维图像的评级进行准确的预测。使用最小消息长度方法学习此模型。图像收集实验表明了我们方法的优点。

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