嗨,神奇衣橱,告诉我该穿什么!

Si Liu, Jiashi Feng, Zheng Song, Tianzhu Zhang, Hanqing Lu, Changsheng Xu, Shuicheng Yan
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引用次数: 271

摘要

在本文中,我们针对一个实用的系统,魔术衣橱,自动面向场合的服装推荐。给定用户输入的场合,例如婚礼、购物或约会,magic closet智能地从用户自己的服装相册中建议最合适的服装,或者自动将用户指定的参考服装(上身或下半身)与在线商店中最合适的服装配对。魔术衣橱系统明确考虑了两个关键标准。其中一个标准是穿着得体,例如,与西装裤相比,在宴会场合穿鸡尾酒会礼服更得体。另一个标准是穿着美观,例如,红色t恤比绿色裤子更适合白色裤子。为了缩小服装的低级特征与高级场合类别之间的语义差距,我们采用服装的中级属性(如服装类别、颜色、图案)作为桥梁。更具体地说,在我们提出的基于潜在支持向量机(SVM)的推荐模型中,服装属性被视为潜在变量。该模型通过特征-场合势和属性-场合势来描述穿着适性标准,而穿着审美标准则通过属性-属性势来表达。为了学习泛化井模型并对其进行综合评价,我们收集了一个大型的服装What-to-Wear (WoW)数据集,并通过Amazon Mechanic Turk对整个数据集进行了7个多值服装属性和10个场合类别的全面注释。在WoW数据集上的大量实验证明了魔术衣橱系统在面向场合的服装推荐和配对方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hi, magic closet, tell me what to wear!
In this paper, we aim at a practical system, magic closet, for automatic occasion-oriented clothing recommendation. Given a user-input occasion, e.g., wedding, shopping or dating, magic closet intelligently suggests the most suitable clothing from the user's own clothing photo album, or automatically pairs the user-specified reference clothing (upper-body or lower-body) with the most suitable one from online shops. Two key criteria are explicitly considered for the magic closet system. One criterion is to wear properly, e.g., compared to suit pants, it is more decent to wear a cocktail dress for a banquet occasion. The other criterion is to wear aesthetically, e.g., a red T-shirt matches better white pants than green pants. To narrow the semantic gap between the low-level features of clothing and the high-level occasion categories, we adopt middle-level clothing attributes (e.g., clothing category, color, pattern) as a bridge. More specifically, the clothing attributes are treated as latent variables in our proposed latent Support Vector Machine (SVM) based recommendation model. The wearing properly criterion is described in the model through a feature-occasion potential and an attribute-occasion potential, while the wearing aesthetically criterion is expressed by an attribute-attribute potential. To learn a generalize-well model and comprehensively evaluate it, we collect a large clothing What-to-Wear (WoW) dataset, and thoroughly annotate the whole dataset with 7 multi-value clothing attributes and 10 occasion categories via Amazon Mechanic Turk. Extensive experiments on the WoW dataset demonstrate the effectiveness of the magic closet system for both occasion-oriented clothing recommendation and pairing.
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