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首页> 外文期刊>IEEE transactions on multimedia >Low-Rank Regularized Multi-Representation Learning for Fashion Compatibility Prediction
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Low-Rank Regularized Multi-Representation Learning for Fashion Compatibility Prediction

机译:用于时尚兼容性预测的低级正则化多表现学习

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摘要

The currently flourishing fashion-oriented community websites and the continuous pursuit of fashion have attracted the increased research interest of the fashion analysis community. Many studies show that predicting the compatibility of fashion outfits is a nontrivial task due to the difficulty in capturing the implicit patterns affecting fashion compatibility prediction and the complex relationships presented by raw data. To address these problems, in this paper, we propose a transductive low-rank hypergraph regularizer multiple-representation learning framework (LHMRL), whereby we formulate the processes of feature representation and fashion compatibility prediction in a joint framework. Specifically, we first introduce a low-rank regularized multiple-representation learning framework, in which the lowest-rank multiple representations of samples can be learned to characterize samples from different perspectives. In this framework, we maximize the total difference among multiple representations based on Grassmann manifold theory and incorporate a common hypergraph regularizer to naturally encode the complex relationships between fashion items and an outfit. To enhance the representation ability of our model, we then develop a supervised learning term by exploiting two types of supervision information from labeled data. Experiments on a publicly available large-scale dataset demonstrate the effectiveness of our proposed model over the state-of-the-art methods.
机译:目前蓬勃发展的时装面向社区网站和持续追求时尚吸引了时尚分析社区的研究兴趣。许多研究表明,由于难以捕获影响影响时尚兼容性预测的隐含模式和由原始数据呈现的复杂关系,因此由于难以捕获的隐含模式,预测时尚服装的兼容性是非活动任务。为了解决这些问题,在本文中,我们提出了一种转导的低级超图规范化器多个表示学习框架(LHMRL),由此我们在联合框架中制定特征表示和时尚兼容性预测的过程。具体地,我们首先引入低级正则化的多表示学习框架,其中可以学习最低等级的样本的多个表示来表征来自不同视角的样本。在该框架中,我们最大限度地提高了基于基于GrassMann歧管理论的多个表示的总差异,并纳入了常见的超图规范器,以自然地编码时尚物品和装备之间的复杂关系。为了提高我们模型的代表能力,我们通过从标记数据中利用两种类型的监督信息来开发监督学习术语。在公开的大型数据集上的实验证明了我们拟议模型在最先进的方法上的有效性。

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