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Reprinted from: http://cns-alumni.bu.edu/~slehar/fourier/fourier.html An Intuitive Explanation of Fourier Theory<a href="http://www.statcounter.com/" target="_blank"><img src="76366945-1c60-49f1-ac31-ff97990c217e_files/co…