Weighted eigenfunction estimates with applications to compressed sensing
classification
🧮 math.NA
cs.NAmath.AP
keywords
estimateseigenfunctiongiverevolutionsamplingsurfacesweightedanalysis
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Using tools from semiclassical analysis, we give weighted L^\infty estimates for eigenfunctions of strictly convex surfaces of revolution. These estimates give rise to new sampling techniques and provide improved bounds on the number of samples necessary for recovering sparse eigenfunction expansions on surfaces of revolution. On the sphere, our estimates imply that any function having an s-sparse expansion in the first N spherical harmonics can be efficiently recovered from its values at m > s N^(1/6) log^4(N) sampling points.
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