Matrix Completion for Multi-label Image Classification Ricardo S. Cabral Fernando De la Torre João P. Costeira
–Neural Information Processing Systems
Recently, image categorization has been an active research topic due to the urgent need to retrieve and browse digital images via semantic keywords. This paper formulates image categorization as a multi-label classification problem using recent advances in matrix completion. Under this setting, classification of testing data is posed as a problem of completing unknown label entries on a data matrix that concatenates training and testing features with training labels. We propose two convex algorithms for matrix completion based on a Rank Minimization criterion specifically tailored to visual data, and prove its convergence properties.
Neural Information Processing Systems
Mar-15-2024, 02:59:27 GMT
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- Research Report > New Finding (0.46)
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- Media (0.34)
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