Most real-world spectrum analysis problems involve the computation of
the real-data discrete Fourier transform (DFT), a unitary transform
that maps elements N of the linear space of real-valued N-tuples, R ,
to elements of its complex-valued N counterpart, C , and when carried
out in hardware it is conventionally achieved via a real-from-complex
strategy using a complex-data version of the fast Fourier transform
(FFT), the generic name given to the class of fast algorithms used for
the ef?cient computation of the DFT. Such algorithms are typically
derived by explo- ing the property of symmetry, whether it exists just
in the transform kernel or, in certain circumstances, in the input
data and/or output data as well. In order to make effective use of a
complex-data FFT, however, via the chosen real-from-complex N
strategy, the input data to the DFT must ?rst be converted from
elements of R to N elements of C . The reason for choosing the
computational domain of real-data problems such N N as this to be C ,
rather than R , is due in part to the fact that computing equ- ment
manufacturers have invested so heavily in producing digital signal
processing (DSP) devices built around the design of the complex-data
fast multiplier and accumulator (MAC), an arithmetic unit ideally
suited to the implementation of the complex-data radix-2 butter?y, the
computational unit used by the familiar class of recursive radix-2 FFT
algorithms.
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Optimal Formulation of Real-Data Fast Fourier Transform for Silicon-Based Implementation in Resource-Constrained Environments
Produktdetaljer
ISBN
9789048139170
Publisert
2020
Utgiver
Vendor
Springer
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter