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Open accessProceedings ArticleDOI
08 Sep 1996
17 Citations
The ECG can be enhanced by processing the subbands to remove noise.
Finally results indicate noise reduction in the ECG.
A portable ECG system with our proposed noise reduction method can easily be used in living activities, such as walking and chest expansion.
Therefore, it was concluded that the source of the noise in the ECG during CPR is the skin-electrode interface and, specifically, that the noise is related to the electrical properties of the electrode.
Proceedings ArticleDOI
01 Jan 2016
12 Citations
The simulation results show that the proposed work is able to reduce noise from the noisy ECG signals and it also reliable even the signal condition is poor.
Proceedings ArticleDOI
M.S. Manikandan, Samarendra Dandapat 
16 Jul 2008
13 Citations
This measure is sensitive to ECG feature changes and insensitive to smoothing of low-level background noise.

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How does ica rejection affect the accuracy of EEG-based brain-computer interfaces?
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