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The Regularized Fast Hartley Transform Lowcomplexity Parallel Computation Of The Fht In One And Multiple Dimensions 2nd Edition Jones

  • SKU: BELL-34597820
The Regularized Fast Hartley Transform Lowcomplexity Parallel Computation Of The Fht In One And Multiple Dimensions 2nd Edition Jones
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The Regularized Fast Hartley Transform Lowcomplexity Parallel Computation Of The Fht In One And Multiple Dimensions 2nd Edition Jones instant download after payment.

Publisher: Springer
File Extension: PDF
File size: 7.84 MB
Pages: 339
Author: Jones, Keith John
ISBN: 9783030682446, 3030682447
Language: English
Year: 2021
Edition: 2

Product desciption

The Regularized Fast Hartley Transform Lowcomplexity Parallel Computation Of The Fht In One And Multiple Dimensions 2nd Edition Jones by Jones, Keith John 9783030682446, 3030682447 instant download after payment.

This book describes how a key signal/image processing algorithm – that of the fast Hartley transform (FHT) or, via a simple conversion routine between their outputs, of the real‑data version of the ubiquitous fast Fourier transform (FFT) – might best be formulated to facilitate computationally-efficient solutions. The author discusses this for both 1-D (such as required, for example, for the spectrum analysis of audio signals) and m‑D (such as required, for example, for the compression of noisy 2-D images or the watermarking of 3-D video signals) cases, but requiring few computing resources (i.e. low arithmetic/memory/power requirements, etc.). This is particularly relevant for those application areas, such as mobile communications, where the available silicon resources (as well as the battery-life) are expected to be limited. The aim of this monograph, where silicon‑based computing technology and a resource‑constrained environment is assumed and the data is real-valued in nature, has thus been to seek solutions that best match the actual problem needing to be solved.

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