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Large Scale Visual Recommendations From Street Fashion Images

机译:街头时尚图片的大规模视觉推荐

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摘要

We describe a completely automated large scale visual recommendation system for fashion. Our focus is to efficiently harness the availability of large quantities of online fashion images and their rich meta-data. Specifically, we propose two classes of data driven models in the Deterministic Fashion Recommenders (DFR) and Stochastic Fashion Recommenders (SFR) for solving this problem. We analyze relative merits and pitfalls of these algorithms through extensive experimentation on a large-scale data set and baseline them against existing ideas from color science. We also illustrate key fashion insights learned through these experiments and show how they can be employed to design better recommendation systems. The industrial applicability of proposed models is in the context of mobile fashion shopping. Finally, we also outline a large- scale annotated data set of fashion images (Fashion-136K) that can be exploited for future research in data driven visual fashion.
机译:我们描述了一种针对时尚的全自动大规模视觉推荐系统。我们的重点是有效利用大量在线时尚图片及其丰富的元数据的可用性。具体来说,我们在确定性时尚推荐(DFR)和随机时尚推荐(SFR)中提出了两类数据驱动的模型来解决此问题。我们通过在大规模数据集上进行广泛的实验,分析这些算法的相对优缺点,并将其与色彩科学中的现有观念进行比较。我们还将说明从这些实验中学到的关键时尚见解,并展示如何将它们用于设计更好的推荐系统。所提出模型的工业适用性是在移动时尚购物的背景下进行的。最后,我们还概述了时尚图像的大规模注释数据集(Fashion-136K),可用于数据驱动的视觉时尚中的未来研究。

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