Compressed sensing
Compressed sensing (also known as
compressive sensing,
compressive sampling, or
sparse sampling) is a
signal processing technique for efficiently acquiring and reconstructing a
signal, by finding solutions to
underdetermined linear systems. This is based on the principle that, through optimization, the sparsity of a signal can be exploited to recover it from far fewer samples than required by the
Nyquist–Shannon sampling theorem. There are two conditions under which recovery is possible. The first one is
sparsity, which requires the signal to be sparse in some domain. The second one is incoherence, which is applied through the isometric property, which is sufficient for sparse signals. Compressed sensing has applications in, for example,
MRI where the incoherence condition is typically satisfied.
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