cannam@95: cannam@95: cannam@95: The Discrete Hartley Transform - FFTW 3.3.3 cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95: cannam@95:
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2.5.3 The Discrete Hartley Transform

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If you are planning to use the DHT because you've heard that it is cannam@95: “faster” than the DFT (FFT), stop here. The DHT is not cannam@95: faster than the DFT. That story is an old but enduring misconception cannam@95: that was debunked in 1987. cannam@95: cannam@95:

The discrete Hartley transform (DHT) is an invertible linear transform cannam@95: closely related to the DFT. In the DFT, one multiplies each input by cannam@95: cos - i * sin (a complex exponential), whereas in the DHT each cannam@95: input is multiplied by simply cos + sin. Thus, the DHT cannam@95: transforms n real numbers to n real numbers, and has the cannam@95: convenient property of being its own inverse. In FFTW, a DHT (of any cannam@95: positive n) can be specified by an r2r kind of FFTW_DHT. cannam@95: cannam@95: Like the DFT, in FFTW the DHT is unnormalized, so computing a DHT of cannam@95: size n followed by another DHT of the same size will result in cannam@95: the original array multiplied by n. cannam@95: cannam@95: The DHT was originally proposed as a more efficient alternative to the cannam@95: DFT for real data, but it was subsequently shown that a specialized DFT cannam@95: (such as FFTW's r2hc or r2c transforms) could be just as fast. In FFTW, cannam@95: the DHT is actually computed by post-processing an r2hc transform, so cannam@95: there is ordinarily no reason to prefer it from a performance cannam@95: perspective.1 cannam@95: However, we have heard rumors that the DHT might be the most appropriate cannam@95: transform in its own right for certain applications, and we would be cannam@95: very interested to hear from anyone who finds it useful. cannam@95: cannam@95:

If FFTW_DHT is specified for multiple dimensions of a cannam@95: multi-dimensional transform, FFTW computes the separable product of 1d cannam@95: DHTs along each dimension. Unfortunately, this is not quite the same cannam@95: thing as a true multi-dimensional DHT; you can compute the latter, if cannam@95: necessary, with at most rank-1 post-processing passes cannam@95: [see e.g. H. Hao and R. N. Bracewell, Proc. IEEE 75, 264–266 (1987)]. cannam@95: cannam@95:

For the precise mathematical definition of the DHT as used by FFTW, see cannam@95: What FFTW Really Computes. cannam@95: cannam@95:

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Footnotes

[1] We provide the DHT mainly as a byproduct of some cannam@95: internal algorithms. FFTW computes a real input/output DFT of cannam@95: prime size by re-expressing it as a DHT plus post/pre-processing cannam@95: and then using Rader's prime-DFT algorithm adapted to the DHT.

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