Swallowing sound detection using hidden Markov modeling of recurrence plot features
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Peer Reviewed
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Author (aut): Aboofazeli, Mohammad
Author (aut): Moussavi, Zahra
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Abstract |
Abstract
Automated detection of swallowing sounds in swallowing and breath sound recordings is of importance for monitoring purposes in which the recording durations are long. This paper presents a novel method for swallowing sound detection using hidden Markov modeling of recurrence plot features. Tracheal sound recordings of 15 healthy and nine dysphagic subjects were studied. The multidimensional state space trajectory of each signal was reconstructed using the Taken method of delays. The sequences of three recurrence plot features of the reconstructed trajectories (which have shown discriminating capability between swallowing and breath sounds) were modeled by three hidden Markov models. The Viterbi algorithm was used for swallowing sound detection. The results were validated manually by inspection of the simultaneously recorded airflow signal and spectrogram of the sounds, and also by auditory means. The experimental results suggested that the performance of the proposed method using hidden Markov modeling of recurrence plot features was superior to the previous swallowing sound detection methods.
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Volume 39, Issue 2
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DOI
10.1016/j.chaos.2007.01.071
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0960-0779
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Use and Reproduction
©2009. Chaos, Solitons and Fractals. Elsevier.
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