Source: sleepanalyser
Section: user/utilities
Priority: extra
Maintainer: George Ruinelli <george@ruinelli.ch>
Build-Depends: debhelper (>= 5)
Standards-Version: 3.7.2

Package: sleepanalyser
Architecture: all
Depends: python2.5, python2.5-qt4-gui (>> 4.7.3), python2.5-qt4-core (>> 4.7.3), python-alarm
Description: SleepAnalyser records your movement during your sleep.
 It is able to visualise it on a graph to show how much you move during your sleep.
 This can help to indicate how you sleep.
 Old records can be visualised and you can load records from your friends.
 SleepAnalyser has also a test function. It will record and visualise much faster. Also it will make a beep when ever your movement goes over the trigger level.
XSBC-Bugtracker: mailto:george@ruinelli.ch
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