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ACTIVE LEARNING BASED CLOTHING IMAGE RECOMMENDATION WITH IMPLICIT USER PREFERENCES

机译:基于主动学习的服装图像推荐,隐式用户偏好

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We address the problem of user-specific clothing image recommendation in this paper. Different from prior retrieval approaches, we advance an active learning scheme during retrieval for inferring user preferences. With a recently developed sparse-coding based algorithm for content-based image retrieval, we utilize support vector regression (SVR) with a user-interaction training stage to observe user preferences based on the feedback of retrieval results. Therefore, there is no need to explicitly ask his/her preferences such as desirable colors or patterns of clothing images. A subjective evaluation on a commercial clothing image dataset confirms the effectiveness of our method, which is shown to produce more satisfactory recommendation results when comparing to state-of-the-art content-based image retrieval approaches.
机译:我们在本文中解决了特定于用户的服装图像推荐问题。与先前的检索方法不同,我们在检索期间推进用于推断用户偏好的活动学习方案。利用最近开发的基于内容的图像检索的稀疏编码算法,我们利用具有用户交互训练阶段的支持向量回归(SVR),以基于检索结果的反馈观察用户偏好。因此,无需明确地提出他/她的偏好,例如理想的颜色或衣物图像的模式。在商业服装图像数据集上的主观评估证实了我们方法的有效性,当与最先进的基于内容的图像检索方法相比,显示出产生更令人满意的推荐结果。

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