Abstract: We review the eigen-analysis and convex polytope approaches for the development of sparse approximation and compressed sensing algorithms. Problems which can be recast as convex relaxations are amenable to a precise analysis, but non-convex formulated algorithms have a dramatically less precise theoretical understanding. We present a gpu accelerated software package for the empirical investigation of non-convex algorithms. Large scale testing reveals a map of problem parameters and which algorithm has the lowest complexity for that problem parameters.
This work is joint with Bah, Blanchard, and Donoho.
This work is joint with Bah, Blanchard, and Donoho.
November 16, 2011
12:30 pm (1h)
Discovery Building, Orchard View Room
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