Automatic Detection of Whole Night Snoring Events Using Non-Contact Microphone

@inproceedings{Dafna2013AutomaticDO,
  title={Automatic Detection of Whole Night Snoring Events Using Non-Contact Microphone},
  author={Eliran Dafna and Ariel Tarasiuk and Yaniv Zigel},
  booktitle={PloS one},
  year={2013}
}
OBJECTIVE Although awareness of sleep disorders is increasing, limited information is available on whole night detection of snoring. Our study aimed to develop and validate a robust, high performance, and sensitive whole-night snore detector based on non-contact technology. DESIGN Sounds during polysomnography (PSG) were recorded using a directional condenser microphone placed 1 m above the bed. An AdaBoost classifier was trained and validated on manually labeled snoring and non-snoring… CONTINUE READING

Citations

Publications citing this paper.
Showing 1-10 of 27 extracted citations

Automatic snoring sounds detection from sleep sounds via multi-features analysis

Australasian Physical & Engineering Sciences in Medicine • 2016
View 4 Excerpts
Highly Influenced

Nasal pressure recordings for automatic snoring detection

Medical & Biological Engineering & Computing • 2015
View 12 Excerpts
Highly Influenced

Actuated bed for a closed loop anti-snoring therapy

2017 International Conference on Rehabilitation Robotics (ICORR) • 2017
View 3 Excerpts
Highly Influenced

Classification of breath and snore sounds using audio data recorded with smartphones in the home environment

2016 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) • 2016
View 6 Excerpts
Highly Influenced

Automatic classification of respiratory sounds during sleep

2018 26th Signal Processing and Communications Applications Conference (SIU) • 2018
View 2 Excerpts

References

Publications referenced by this paper.
Showing 1-10 of 51 references

Snoring sounds variability as a signature of obstructive sleep apnea.

Medical engineering & physics • 2013
View 12 Excerpts
Highly Influenced

Discrete-time processing of speech signals. New York: Institute of Electrical and Electronics

JR Deller, JHL Hansen, JL Proakis
2000
View 5 Excerpts
Highly Influenced

Automatic and Unsupervised Snore Sound Extraction From Respiratory Sound Signals

IEEE Transactions on Biomedical Engineering • 2011
View 5 Excerpts
Highly Influenced

An efficient method for snore/nonsnore classification of sleep sounds.

Physiological measurement • 2007
View 4 Excerpts
Highly Influenced

Similar Papers

Loading similar papers…