Canonical Correlation a Tutorial
Correlation is strongly related to signal to noise ratio (SNR), which is a more com-monly used measure in signal processing. Consider a signal x and two noise signals 1 and 2 all having zero mean1 and all being uncorrelated with each other. Let S = E [x 2] and N i i be the energy of the signal and the noise signals respectively. Then the ...
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