DocumentCode
1398198
Title
Wavelet analysis [for signal processing]
Author
Bruce, Andrew ; Donoho, David ; Gao, Hong-ye
Author_Institution
Div. of Data Products Anal., MathSoft Inc., Seattle, WA, USA
Volume
33
Issue
10
fYear
1996
fDate
10/1/1996 12:00:00 AM
Firstpage
26
Lastpage
35
Abstract
As every engineering student knows, any signal can be portrayed as an overlay of sinusoidal waveforms of assorted frequencies. But while classical analysis copes superbly with naturally occurring sinusoidal behavior-the kind seen in speech signals-it is ill-suited to representing signals with discontinuities, such as the edges of features in images. Latterly, another powerful concept has swept applied mathematics and engineering research: wavelet analysis. In contrast to a Fourier sinusoid, which oscillates forever, a wavelet is localized in time-it lasts for only a few cycles. Like Fourier analysis, however, wavelet analysis uses an algorithm to decompose a signal into simpler elements. Here, the authors describe how localized waveforms are powerful building blocks for signal analysis and rapid prototyping-and how they are now available in software toolkits
Keywords
signal processing; software prototyping; software tools; waveform analysis; wavelet transforms; engineering students; image edge features; rapid prototyping; signal analysis; signal decomposition algorithm; signal discontinuities; signal processing; sinusoidal waveforms; software toolkits; speech signals; wavelet analysis; Algorithm design and analysis; Engineering students; Frequency; Image analysis; Mathematics; Power engineering and energy; Signal analysis; Signal processing; Speech analysis; Wavelet analysis;
fLanguage
English
Journal_Title
Spectrum, IEEE
Publisher
ieee
ISSN
0018-9235
Type
jour
DOI
10.1109/6.540087
Filename
540087
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