Learning Filter Bank Sparsifying Transforms

6 Mar 2018 Luke Pfister Yoram Bresler

Data is said to follow the transform (or analysis) sparsity model if it becomes sparse when acted on by a linear operator called a sparsifying transform. Several algorithms have been designed to learn such a transform directly from data, and data-adaptive sparsifying transforms have demonstrated excellent performance in signal restoration tasks... (read more)

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