Back close

Biorthogonal Wavelet Filters for Compressed Sensing ECG Reconstruction

Publication Type : Journal

Publisher : Elsevier

Source : Biomedical Signal Processing and Control

Url : https://www.sciencedirect.com/science/article/abs/pii/S1746809418302015

Campus : Coimbatore

School : School of Artificial Intelligence

Center : Center for Computational Engineering and Networking

Year : 2019

Abstract : This paper elaborates the design details of a new set of bi orthogonal wavelet filters derived from double sided exponential splines. The designed wavelets are applied in compressed sensing (CS) scenario and results were quite promising. CS is a signal acquisition paradigm, which surpasses the traditional limit of Nyquist sampling. Increasing the reconstruction quality with minimum number of samples in CS is always challenging. We have addressed this challenging task of increasing the reconstruction quality within a minimum number of measurements in CS by developing this new set of biorthogonal wavelet filters. Biorthogonal wavelets have several advantages such as linear phase as compared to orthogonal wavelets. This wavelet which we prefer to call as dew1 (double exponential wavelet 1) is applied in CS based ECG reconstruction scenarios and experimented over 21 data records from MIT arrhythmia data base. A total of 950 experiments were conducted in three CS based methodologies for ECG reconstruction and the results were noted. Over all we were able to get nearly 30% improvement in the reconstruction quality. This paper elaborates the design of these bi orthogonal filters and its application in CS based ECG reconstruction scenario. Other than endorsing the results, we also aim to familiarize this newly designed wavelet so it can be further experimented in different domains.

Cite this Research Publication : Abhishek, S., Shanmugham Veni, and K. A. Narayanankutty. "Biorthogonal wavelet filters for compressed sensing ECG reconstruction." Biomedical Signal Processing and Control 47 (2019): 183-195.

Admissions Apply Now