"Compression of ECG Signal Based on Compressive Sensing and the Extraction of Significant Features"
written by Mohammed M. Abo-Zahhad, Aziza I. Hussein, Abdelfatah M. Mohamed,
published by International Journal of Communications, Network and System Sciences, Vol.8 No.5, 2015
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] A Hybrid Signal Compression Technique using CS Theory and Various Transform for Speech and ECG
[2] CS Theory-Based Compression Techniques for Medical Images
2019
[3] Optimizing Compressive Sensing Matrix using Chicken Swarm OptimizationAlgorithm
2019
[4] A study on ECG signal characterization and practical implementation of some ECG characterization techniques
2019
[5] Compressive Sensing based Continuous ECG Monitoring and Processing using a Novel Feature Extraction Algorithm
Journal of Engineering Technology, 2019
[6] Introduction
Multibiometric Watermarking with Compressive Sensing Theory, 2018
[7] Advance Compression and Watermarking Technique for Speech Signals
SpringerBriefs in Electrical and Computer Engineering book series, 2018
[8] A systematic review of compressive sensing: Concepts, implementations and applications
2018
[9] Increasing the quality of reconstructed signal in compressive sensing utilizing Kronecker technique
Biomedical Engineering Letters, 2018
[10] Hybrid Compression Method Using Compressive Sensing (CS) Theory for Various Biometric Data and Biomedical Data
2018
[11] Speech Compression Technique Using Compressive Sensing Theory
Advance Compression and Watermarking Technique for Speech Signals, 2018
[12] FPGA Realization for Baseline Wander Noise Cancellation of ECG Signals using Wavelet Transform
International Journal of Computer Applications, 2017
[13] Investigation on the Compression of Electrocardiogram Signals Using Dual Tree Complex Wavelet Transform
Journal of Liquid Chromatography & Related Technologies, 2017
[14] Energy Efficient Sampling approach of Compressed Sensing for Wireless Body Area Network
2017
[15] Splines in Compressed Sensing
2016
[16] A Data-Driven Compressive Sensing Framework for Long-Term Health Monitoring
arXiv preprint arXiv:1606.01872, 2016
[17] An energy-efficient compressive sensing framework incorporating online dictionary learning for long-term wireless health monitoring
2016 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), 2016
[18] Adaptive Compression Ratio Estimation for Categorified Sparsity in Real-time ECG Monitoring System
2016
[19] A Data-Driven Compressive Sensing Framework Tailored For Energy-Efficient Wearable Sensing
2016