A novel approach to detect respiratory phases from pulmonary acoustic signals using normalised power spectral density and fuzzy inference system
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Kenneth Sundaraj | Sebastian Sundaraj | Rajkumar Palaniappan | S. S. Revadi | R. Palaniappan | K. Sundaraj | Sebastian Sundaraj | N. Huliraj | N Huliraj | S S Revadi
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