A Convex Penalty For Block-Sparse Signals With Unknown Structures
Hiroki Kuroda, Daichi Kitahara, Akira Hirabayashi
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We propose a novel convex penalty for block-sparse signals whose block partitions are unknown a priori. We first introduce a nonconvex penalty function, where the block partition is adjusted for the signal of interest by minimizing the mixed l2/l1 norm over all possible block partitions. Then, by exploiting a variational representation of the l2 norm, we derive the proposed penalty function as a suitable convex relaxation of the nonconvex penalty. For the resulting regularization model, we provide a proximal splitting-based algorithm which is guaranteed to converge to an optimal solution. Numerical experiments show the effectiveness of the proposed penalty.
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Piya Pal