
 
2 SLEEP DATA 
Generally speaking, sleep is a kind of brain activity 
and its purpose is recovery from brain fatigue. 
Therefore, sleep state is measured mainly by EEG, 
and is classified into several stages. Sleep state is 
roughly divided into REM (rapid-eye movement) 
sleep and NREM (Non-REM) sleep. NREM sleep is 
divided into 4 stages. Stages 3 and 4 of NREM sleep 
are so called deep sleep, and stages 1 and 2 are 
shallow sleep. These stages are decided by a sleep 
specialist using PSG data (Rechtschaffen, 1968), and 
their change is shown in a graph called a hypnogram 
(shown in Figure 1).  
A doctor mainly uses a hypnogram for 
evaluating a person’s sleep quality. For example, the 
doctor checks the quantity of deep sleep if a patient 
complains about oppressive drowsiness in the 
daytime. If the patient frequently wakes up in the 
night and experiences difficulty in breathing, he/she 
might be suffering from sleep apnea syndrome. If 
REM sleep always occurs soon after falling asleep, 
there might be a problem concerning the patient’s 
nervous system. From the viewpoint of healthcare, it 
is important to check the balance of deep sleep, 
REM sleep or sleep cycle. Therefore, a sleep 
monitoring system for home use can also show the 
result of one night’s data in a graph similar to a 
hypnogram. 
 
 
 
 
 
 
 
Figure 1: Sleep hypnogram. 
There are many studies on the relationship between 
physiological parameters and sleep stages. For 
example, Baharav et al. stated that autonomic 
nervous activity level derived from heart rate 
variability (HRV) during sleep changes in response 
to the sleep stages (Baharav, 1995). A value of 
LF/HF shows the activity of the sympathetic nerve. 
During a REM sleep, a value of LF/HF and the 
variability of that are large, and the value of LF/HF 
decreases during a NREM sleep, particularly in the 
case of deep sleep (Slow Wave Sleep). Since the 
brain stem controls both the cerebrum and the 
autonomic nervous system, it may be possible to 
estimate the sleep stage using HRV. 
3 RELATED WORKS 
A number of trials have been conducted with a view 
to developing sleep monitors for home use. For 
example, body/wrist motion has been used for 
wake/sleep identification. 
The amount of activity 
(number of subtle wrist motions per minute)
 measured 
from acceleration sensors is often used for 
monitoring wake/sleep rhythms (Sadeh, 1989) 
although the sleep stages (ex. REM sleep / NREM 
sleep) cannot be determined from the data. 
More recently, researchers have focused on 
measuring heart/pulse rate and analyzing its 
variability: HRV (Watanabe, 2004, Michimori, 2003 
and Wakuda, 2007). The sleep stages can be 
calculated from HRV if the indices of HRV are 
properly mapped for the sleep stages.  
However, there are two problems in this 
approach. One is that body/wrist motion often 
disturbs heart/pulse sensing and the HRV value can 
not be calculate correctly. The other is that the level 
of autonomic nervous activity differs according to 
age, sex and body/mental condition. For example, 
the autonomic nervous system of the young is 
generally more active than that of the old. Sleep 
stages cannot be classified using static thresholds. 
Our sensor measures both pulse wave interval 
and wrist motion. The wrist motion data are used not 
only for counting the amount of activity, but also for 
detecting errors in HRV data. This solves the first 
problem mentioned above. 
For the second problem, we employ a statistical 
method for deciding sleep stages (Suzuki, 2007). We 
assume that there are several stages in a certain 
period of sleeping time since the sleep stage 
cyclically repeats about every 90 minutes. It means 
that the data of autonomic nervous activity can be 
classified into several groups if we have any 90-120 
minute dataset. In this way, the thresholds for 
dividing sleep stages are changed flexibly along with 
the dataset. 
4 THE OVERVIEW OF THE 
SYSTEM 
4.1  Wearable Physiological Sensor 
Figure 2 shows our wearable physiological sensor. 
The size of the sensor is 50mm*60mm*13mm and 
the weight is only 35g. A rechargeable battery is 
used as an electrical power source. It is possible to 
measure physiological data for over 40 hours after 
Wake 
REM 
Stage1 
Stage2 
Stage3 
Stage4 
DEVELOPMENT OF A SLEEP MONITORING SYSTEM WITH WEARABLE VITAL SENSOR FOR HOME USE
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