Analysis vs. synthesis sparsity for $\alpha$-shearlets
Felix Voigtlaender, Anne Pein

TL;DR
This paper proves that analysis and synthesis sparsity notions coincide for shearlet frames under certain conditions, and demonstrates shearlets' near-optimal approximation rates for cartoon-like functions, extending to $ ext{alpha}$-shearlets.
Contribution
It establishes the equivalence of analysis and synthesis sparsity for shearlet frames with explicit conditions, and characterizes embeddings between $ ext{alpha}$-shearlet smoothness spaces.
Findings
Analysis and synthesis sparsity coincide for shearlet frames.
Shearlets provide near-optimal approximation rates for cartoon-like functions.
Characterization of embeddings between $ ext{alpha}$-shearlet smoothness spaces.
Abstract
There are two notions of sparsity associated to a frame : Analysis sparsity of means that the analysis coefficients are sparse, while synthesis sparsity means that with sparse coefficients . Here, sparsity of means for a given . We show that both notions of sparsity coincide if is a discrete (cone-adapted) shearlet frame with 'nice' generators and fine enough sampling density . The required 'niceness' is explicitly quantified in terms of Fourier-decay and vanishing moment conditions. Precisely, we show that suitable shearlet systems simultaneously provide Banach frames and atomic decompositions for the shearlet smoothness spaces introduced by Labate et al. Hence, membership in…
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Taxonomy
TopicsMathematical Analysis and Transform Methods
