A Comparison of the Squared Energy and Teager-Kaiser Operators for Short-Term Energy Estimation in Additive Noise

Time-frequency distributions that evaluate the signal's energy content both in the time and frequency domains are indispensable signal processing tools, especially, for nonstationary signals. Various short-time energy computation schemes are used in practice, including the mean squared amplitud...

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Veröffentlicht in:IEEE transactions on signal processing 2009-07, Vol.57 (7), p.2569-2581
Hauptverfasser: Dimitriadis, D., Potamianos, A., Maragos, P.
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Potamianos, A.
Maragos, P.
description Time-frequency distributions that evaluate the signal's energy content both in the time and frequency domains are indispensable signal processing tools, especially, for nonstationary signals. Various short-time energy computation schemes are used in practice, including the mean squared amplitude and Teager-Kaiser energy approaches. Herein, we focus primarily on the short- and medium-term properties of these two energy estimation schemes, as well as, on their performance in the presence of additive noise. To facilitate this analysis and generalize the approach, we use a harmonic noise model to approximate the noise component. The error analysis is conducted both in the continuous- and discrete-time domains, deriving similar conclusions. The estimation errors are measured in terms of normalized deviations from the expected signal energy and are shown to greatly depend on both the signals' spectral content and the analysis window length. When medium- and long-term analysis windows are employed, the Teager-Kaiser energy operator is proven superior to the common squared energy operator, provided that the spectral content of the noise is more lowpass than the corresponding signal content, and vice versa. However, for shorter window lengths, the Teager-Kaiser operator always outperforms the squared energy operator. The theoretical results are experimentally verified for synthetic signals. Finally, the performance of the proposed energy operators is evaluated for short-term analysis of noisy speech signals and the implications for speech processing applications are outlined.
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subjects Additive noise
Additives
Applied sciences
Approximation
bandlimited signals
Detection, estimation, filtering, equalization, prediction
Energy use
Error analysis
estimation
Estimation error
Exact sciences and technology
feature extraction
Frequency domain analysis
Harmonic analysis
Information, signal and communications theory
Miscellaneous
Noise
Operators
robustness
Signal analysis
Signal and communications theory
signal detection
Signal processing
Signal representation. Spectral analysis
Signal, noise
Spectra
spectral analysis
Speech analysis
Speech processing
Studies
Telecommunications and information theory
Time frequency analysis
title A Comparison of the Squared Energy and Teager-Kaiser Operators for Short-Term Energy Estimation in Additive Noise
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