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Learning the Latent 'Look': Unsupervised Discovery of a Style-Coherent Embedding from Fashion Images

机译:学习潜在的“外观”:无监督从时尚形象中嵌入风格相干的发现

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What defines a visual style? Fashion styles emerge organically from how people assemble outfits of clothing, making them difficult to pin down with a computational model. Low-level visual similarity can be too specific to detect stylistically similar images, while manually crafted style categories can be too abstract to capture subtle style differences. We propose an unsupervised approach to learn a style-coherent representation. Our method leverages probabilistic polylingual topic models based on visual attributes to discover a set of latent style factors. Given a collection of unlabeled fashion images, our approach mines for the latent styles, then summarizes outfits by how they mix those styles. Our approach can organize galleries of outfits by style without requiring any style labels. Experiments on over 100K images demonstrate its promise for retrieving, mixing, and summarizing fashion images by their style.
机译:什么定义了视觉风格?时尚款式有机地从人们组装服装服装的情况下出现,使它们难以用计算模型放下。低级视觉相似度可以太具体,无法检测风格性相似的图像,而手动制作的风格类别可以太抽象,无法捕获微妙的风格差异。我们提出了一种无监督的方法来学习风格连贯的代表。我们的方法利用了基于视觉属性的概率性积极主题模型来发现一套潜在风格因素。鉴于未标记的时尚图像的集合,我们的方法矿山的潜在型号,然后概述了它们如何将这些样式混合的衣服。我们的方法可以通过风格组织装备的画廊,而无需任何样式标签。超过100K图像的实验证明了其承诺通过其风格来检索,混合和总结时尚图像。

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