比利时vs摩洛哥足彩
,
university of california san diego
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math 295 - mathematics colloquium
michael p. friedlander
university of british columbia
algorithms for large-scale sparse reconstruction
abstract:
many signal-processing applications seek to approximate a signal as a superposition of only a few elementary atoms drawn from a large collection. this is known as sparse reconstruction. the theory of compressed sensing allows us to pose sparse reconstruction problems as structured convex optimization problems. i will discuss the role of duality in revealing some unexpected and useful properties of these problems, and will show how they lead to practical, large-scale algorithms. i will also describe some applications of the resulting algorithms.
host: philip gill
february 19, 2009
3:00 pm
ap&m 6402
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