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Performance Study of Various Adaptive filter algorithms for Noise Cancellation in Respiratory Signals
A.Bhavani Sankar, D.Kumar, K.Seethalakshmi
Pages - 267 - 278 | Revised - 30-11-2010 | Published - 20-12-2010
Published in Signal Processing: An International Journal (SPIJ)
MORE INFORMATION
KEYWORDS
Adaptive filter , Motion artifact, Power line interference, Least Mean Square (LMS), Normalized LMS (NLMS), Block LMS (BLMS)
ABSTRACT
Removal of noises from respiratory signal is a classical problem. In recent
years, adaptive filtering has become one of the effective and popular approaches
for the processing and analysis of the respiratory and other biomedical signals.
Adaptive filters permit to detect time varying potentials and to track the dynamic
variations of the signals. Besides, they modify their behavior according to the
input signal. Therefore, they can detect shape variations in the ensemble and
thus they can obtain a better signal estimation. This paper focuses on (i) Model
Respiratory signal with second order Auto Regressive process. Then randomly
generated noises have been mixed with respiratory signal and nullify these
noises using various adaptive filter algorithms (ii) to remove motion artifacts and
50Hz Power line interference from sinusoidal 0.18Hz respiratory signal using
various adaptive filter algorithms. At the end of this paper, a performance study
has been done between these algorithms based on various step sizes. It has
been found that there will be always tradeoff between step sizes and Mean
square error.
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Associate Professor A.Bhavani Sankar
- India
absankar72@gmail.com
Mr. D.Kumar
- India
Mr. K.Seethalakshmi
- India
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