Retrieving Similar Styles to Parse Clothing

Pattern Analysis and Machine Intelligence, IEEE Transactions  (2015)

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摘要
Clothing recognition is a societally and commercially important yet extremely challenging problem due to large variations in clothing appearance, layering, style, and body shape and pose. In this paper, we tackle the clothing parsing problem using a retrieval-based approach. For a query image, we find similar styles from a large database of tagged fashion images and use these examples to recognize clothing items in the query. Our approach combines parsing from: pre-trained global clothing models, local clothing models learned on the fly from retrieved examples, and transferred parse-masks (Paper Doll item transfer) from retrieved examples. We evaluate our approach extensively and show significant improvements over previous state-of-the-art for both localization (clothing parsing given weak supervision in the form of tags) and detection (general clothing parsing). Our experimental results also indicate that the general pose estimation problem can benefit from clothing parsing.
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关键词
clothing,image retrieval,pose estimation,body pose,body shape,clothing appearance,clothing item recognition,clothing layering,clothing parsing problem,clothing style,image querying,local clothing models,pose estimation problem,pretrained global clothing models,similar style retrieval,clothing parsing,clothing recognition,image parsing,semantic segmentation,semantics,predictive models,estimation
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