Fourier and Hadamard Transforms in Pattern Recognition

The advent of high-speed, stored-program, general-purpose digital computers as powerful information-handling devices has led to revolutionary developments in many fields. Among these are several fields that deal with important problems that previously appeared to have only extremely difficult, complex, or even unrealizable solutions. A large number of such problems have proven amenable to attack by a set of techniques known as pattern recognition. Pattern recognition has become a fertile area for the development of concepts and techniques now being applied routinely to problems formerly considered to be approachable only by humans. It is for this reason that pattern recognition is often considered to be a subset of the artificial or machine intelligence field.

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