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The Stationary Bionic Wavelet Transform and its Applications for ECG and Speech Processing
Details
This book first details a proposed Stationary Bionic Wavelet Transform (SBWT) for use in speech processing. The author then details the proposed techniques based on SBWT. These techniques are relevant to speech enhancement, speech recognition, and ECG de-noising. The techniques are then evaluated by comparing them to a number of methods existing in literature. For evaluating the proposed techniques, results are applied to different speech and ECG signals and their performances are justified from the results obtained from using objective criterion such as SNR, SSNR, PSNR, PESQ , MAE, MSE and more.
Describes and applies a proposed Stationary Bionic Wavelet Transform (SBWT) Discusses how speech enhancement, speech recognition, and ECG de-noising are aided by SBWTs Relevant to researchers, professionals, students, and academics in speech and ECG processing
Autorentext
Mourad Talbi is an Assistant Professor in Electrical Engineering in the Center of Researches and Technologies of Energy of Borj Cedria, Tunis, Tunisia. He has obtained his Master degree in automatics and signal processing in National Engineering School of Tunis in 2004. He has obtained his PhD Thesis in Electronics in Faculty of Sciences of Tunis, and his HDR in Electronics in Faculty of sciences of Tunis.
Inhalt
- Speech enhancement based on stationary bionic wavelet transform and maximum a posterior estimator of magnitude-squared spectrum.- 2. ECG denoising based on 1-D double-density complex DWT and SBWT.- 3. Speech Enhancement based on SBWT and MMSE Estimate of Spectral Amplitude.- 4. Arabic Speech Recognition by Stationary Bionic Wavelet Transform and MFCC using a Multi-Layer Perceptron for Voice Control<p
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783030934040
- Lesemotiv Verstehen
- Genre Electrical Engineering
- Auflage 1st edition 2022
- Sprache Englisch
- Anzahl Seiten 100
- Herausgeber Springer International Publishing
- Größe H241mm x B160mm x T12mm
- Jahr 2022
- EAN 9783030934040
- Format Fester Einband
- ISBN 3030934047
- Veröffentlichung 15.02.2022
- Titel The Stationary Bionic Wavelet Transform and its Applications for ECG and Speech Processing
- Autor Talbi Mourad
- Untertitel Signals and Communication Technology
- Gewicht 325g