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Restricted isometry property of principal component pursuit with reduced linear measurements
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نویسنده
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you q. ,wan q. ,xu h.
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منبع
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journal of applied mathematics - 2013 - دوره : 2013 - شماره : 0
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چکیده
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The principal component prsuit with reduced linear measurements (pcp-rlm) has gained great attention in applications,such as machine learning,video,and aligning multiple images. the recent research shows that strongly convex optimization for compressive principal component pursuit can guarantee the exact low-rank matrix recovery and sparse matrix recovery as well. in this paper,we prove that the operator of pcp-rlm satisfies restricted isometry property (rip) with high probability. in addition,we derive the bound of parameters depending only on observed quantities based on rip property,which will guide us how to choose suitable parameters in strongly convex programming. © 2013 qingshan you et al.
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آدرس
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school of computer science,civil aviation flight university of china,guanghan,sichuan 618307,china,school of electronic engineering,university of electronic science and technology of china,chengdu, China, school of electronic engineering,university of electronic science and technology of china,chengdu, China, school of computer science,civil aviation flight university of china,guanghan, China
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Authors
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