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This suggests that habituation to noise has two aspects, sensation and perception mechanisms, corresponding to sleep polygraphy and to questionnaire respectively.
This suggests that this method is a useful tool to measure the sleep disturbance caused by noise under well-controlled conditions.
Proceedings ArticleDOI
Aaron Raymond See, Chih-Kuo Liang 
23 Sep 2011
29 Citations
Further refinement of the data and the program could be useful for a test the sleep stage classification on other database or data.
These data indicate that auditory evoked activity changes from wakefulness to sleep.
The results suggest that alterations of subjective evaluation of sleep were determined by physical parameters of the noise but modified by individual factors like noise sensitivity.
The findings support the assumption that strong daytime noise may interfere with subsequent sleep processes.

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