Max-margin multiattribute learning with low-rank constraint.

IEEE Transactions on Image Processing(2014)

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摘要
Attribute learning has attracted a lot of interests in recent years for its advantage of being able to model high-level concepts with a compact set of midlevel attributes. Real-world objects often demand multiple attributes for effective modeling. Most existing methods learn attributes independently without explicitly considering their intrinsic relatedness. In this paper, we propose max margin multiattribute learning with low-rank constraint, which learns a set of attributes simultaneously, using only relative ranking of the attributes for the data. By learning all the attributes simultaneously through low-rank constraint, the proposed method is able to capture their intrinsic correlation for improved learning; by requiring only relative ranking, the method avoids restrictive binary labels of attributes that are often assumed by many existing techniques. The proposed method is evaluated on both synthetic data and real visual data including a challenging video data set. Experimental results demonstrate the effectiveness of the proposed method.
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关键词
high-level concepts,image processing,low-rank constraint,midlevel attributes,max-margin multiattribute learning,learning (artificial intelligence),surgical skill,multi-task learning,relative attribute,compact set,synthetic data,relative ranking,attribute learning,real visual data,intrinsic correlation,multiple attributes,low rank,real-world objects,visualization,algorithm design and analysis,multi task learning,learning artificial intelligence,yttrium,accuracy,correlation
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