Creating Capsule Wardrobes from Fashion Images

2018 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2018)

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摘要
We propose to automatically create capsule wardrobes. Given an inventory of candidate garments and accessories, the algorithm must assemble a minimal set of items that provides maximal mix-and-match outfits. We pose the task as a subset selection problem. To permit efficient subset selection over the space of all outfit combinations, we develop submodular objective functions capturing the key ingredients of visual compatibility, versatility, and user-specific preference. Since adding garments to a capsule only expands its possible outfits, we devise an iterative approach to allow near-optimal submodular function maximization. Finally, we present an unsupervised approach to learn visual compatibility from "in the wild" full body outfit photos; the compatibility metric translates well to cleaner catalog photos and improves over existing methods. Our results on thousands of pieces from popular fashion websites show that automatic capsule creation has potential to mimic skilled fashionistas in assembling flexible wardrobes, while being significantly more scalable.
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关键词
capsule wardrobes,fashion images,candidate garments,subset selection problem,efficient subset selection,outfit combinations,submodular objective functions,key ingredients,visual compatibility,user-specific preference,possible outfits,iterative approach,near-optimal submodular function maximization,unsupervised approach,wild full body outfit photos,compatibility metric translates,automatic capsule creation,flexible wardrobes,fashion websites,catalog photos,mix-and-match outfits
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