Title :
Automatic detection and classification of acoustic breathing cycles
Author :
Yahya, Omar ; Faezipour, Miad
Abstract :
This paper focuses on respiratory phase detection and classification without the help of the airflow measurements. Instead of using the airflow measurements to identify breathing phases, the proposed work depends on advanced digital signal processing techniques to process the acoustic signal of respiration that was collected using a microphone placed in front of the subject´s nose. The recorded signal is processed using the voiced-unvoiced algorithm to differentiate between the voiced period and the unvoiced (silence) period. The desired features are extracted from each voiced phase. Finally, support vector machine is used to distinguish between the inspiration and the expiration phases according to the extracted features. The signals were recorded from a number of subjects who do not have a history of pulmonary diseases. The proposed method has achieved an accuracy of 95% when tested on the subjects.
Keywords :
acoustic signal detection; bioelectric potentials; biomedical ultrasonics; feature extraction; medical signal detection; medical signal processing; microphones; pneumodynamics; signal classification; support vector machines; acoustic signal; automatic acoustic breathing cycle classification; automatic acoustic breathing cycle detection; digital signal processing techniques; expiration phases; feature extraction; inspiration phases; microphone; pulmonary diseases; respiratory phase classification; respiratory phase detection; support vector machine; voiced-unvoiced algorithm; Accuracy; Conferences; Feature extraction; Microphones; Nose; Phase detection; Support vector machines; Acoustical signal of respiration; Airflow; Breathing Phases; Microphone;
Conference_Titel :
American Society for Engineering Education (ASEE Zone 1), 2014 Zone 1 Conference of the
Conference_Location :
Bridgeport, CT
Print_ISBN :
978-1-4799-5232-8
DOI :
10.1109/ASEEZone1.2014.6820648