• Home
  • Browse
    • Current Issue
    • By Issue
    • By Author
    • By Subject
    • Author Index
    • Keyword Index
  • Journal Info
    • About Journal
    • Aims and Scope
    • Editorial Board
    • Publication Ethics
    • Peer Review Process
  • Guide for Authors
  • Submit Manuscript
  • Contact Us
 
  • Login
  • Register
Home Articles List Article Information
  • Save Records
  • |
  • Printable Version
  • |
  • Recommend
  • |
  • How to cite Export to
    RIS EndNote BibTeX APA MLA Harvard Vancouver
  • |
  • Share Share
    CiteULike Mendeley Facebook Google LinkedIn Twitter
JES. Journal of Engineering Sciences
arrow Articles in Press
arrow Current Issue
Journal Archive
Volume Volume 53 (2025)
Volume Volume 52 (2024)
Volume Volume 51 (2023)
Volume Volume 50 (2022)
Volume Volume 49 (2021)
Volume Volume 48 (2020)
Volume Volume 47 (2019)
Volume Volume 46 (2018)
Volume Volume 45 (2017)
Volume Volume 44 (2016)
Volume Volume 43 (2015)
Volume Volume 42 (2014)
Volume Volume 41 (2013)
Volume Volume 40 (2012)
Volume Volume 39 (2011)
Volume Volume 38 (2010)
Volume Volume 37 (2009)
Volume Volume 36 (2008)
Issue No 6
Issue No 5
Issue No 4
Issue No 3
Issue No 2
Issue No 1
Volume Volume 35 (2007)
Volume Volume 34 (2006)
M. Ahmed, S. (2008). OPTIMAL SELECTION OF THRESHOLD LEVELS AND WAVELET FILTERS FOR HIGH QUALITY ECG SIGNAL COMPRESSION. JES. Journal of Engineering Sciences, 36(No 5), 1225-1243. doi: 10.21608/jesaun.2008.118723
Sabah M. Ahmed. "OPTIMAL SELECTION OF THRESHOLD LEVELS AND WAVELET FILTERS FOR HIGH QUALITY ECG SIGNAL COMPRESSION". JES. Journal of Engineering Sciences, 36, No 5, 2008, 1225-1243. doi: 10.21608/jesaun.2008.118723
M. Ahmed, S. (2008). 'OPTIMAL SELECTION OF THRESHOLD LEVELS AND WAVELET FILTERS FOR HIGH QUALITY ECG SIGNAL COMPRESSION', JES. Journal of Engineering Sciences, 36(No 5), pp. 1225-1243. doi: 10.21608/jesaun.2008.118723
M. Ahmed, S. OPTIMAL SELECTION OF THRESHOLD LEVELS AND WAVELET FILTERS FOR HIGH QUALITY ECG SIGNAL COMPRESSION. JES. Journal of Engineering Sciences, 2008; 36(No 5): 1225-1243. doi: 10.21608/jesaun.2008.118723

OPTIMAL SELECTION OF THRESHOLD LEVELS AND WAVELET FILTERS FOR HIGH QUALITY ECG SIGNAL COMPRESSION

Article 8, Volume 36, No 5, September and October 2008, Page 1225-1243  XML PDF (307.64 K)
Document Type: Research Paper
DOI: 10.21608/jesaun.2008.118723
View on SCiNiTO View on SCiNiTO
Author
Sabah M. Ahmed
Assistant Professor, Department of Electrical and Electronics Engineering, Faculty of Engineering, Assiut University , Assiut, Egypt
Abstract
Although most of the theoretical and implementation aspects of wavelet based algorithms in ElectroCardioGram (ECG) signal compression are well studied, many issues related to the choice of wavelet filters and threshold levels selection remain unresolved. The utilization of optimal mother wavelet will lead to localization and maximization of wavelet coefficients' values in wavelet domain. This paper presents an ECG compressor based on the optimal selection of wavelet filters and threshold levels in different subbands that achieve maximum data volume reduction while guaranteeing reconstruction quality. The proposed algorithm starts by segmenting the ECG signal into frames; where each frame is decomposed into m subbands through optimized wavelet filters. The resulting wavelet coefficients are threshold and those having absolute values below specified threshold levels in all subands are deleted and the remaining coefficients are appropriately encoded with a modified version of the run-length coding scheme. The threshold levels to use, before encoding, are adjusted in an optimum manner, until predefined compression ratio and signal quality are achieved. Extensive experimental tests were made by applying the algorithm to ECG records from the MIT-BIH Arrhythmia Database [1]. The compression ratio (CR), the percent root-mean-square difference (PRD) and the zero-mean percent root-mean-square difference (PRD1) measures are used for measuring the algorithm performance (high CR with excellent reconstruction quality). From the obtained results, it can be deduced that the performance of the optimized signal dependent wavelet outperforms that of Daubechies and Coiflet standard wavelets. However, the computational complexity of the proposed technique is the price paid for the improvement in the compression performance measures. Finally, it should be noted that the proposed method is flexible in controlling the quality of the reconstructed signals and the volume of the compressed signals by establishing target PRD and CR a priori respectively.
Keywords
ECG signal compression; Discrete wavelet transform; Coding; Thresholding
Main Subjects
Electrical Engineering, Computer Engineering and Electrical power and machines engineering.
Statistics
Article View: 116
PDF Download: 516
Home | Glossary | News | Aims and Scope | Sitemap
Top Top

Journal Management System. Designed by NotionWave.