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(Sensor errors)
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=Sensor errors=
 
=Sensor errors=
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= Odometry sensor=
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File: odometry_plot.jpg
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After a time, the odometry's error accumulates, and the course (Degree) and position (x/y) are getting unprecise.
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Typical errors in outdoor condition (wet lawn, high slope):
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* Distance: 20cm per meter
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* Course: 10 degree per meter
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The course can be permanently corrected by the compass sensor, the position by recalibration on the perimeter wire.
  
 
=Sensor fusion=
 
=Sensor fusion=

Version vom 28. Januar 2015, 18:19 Uhr

Sensor errors

Odometry sensor

After a time, the odometry's error accumulates, and the course (Degree) and position (x/y) are getting unprecise.

Typical errors in outdoor condition (wet lawn, high slope):

  • Distance: 20cm per meter
  • Course: 10 degree per meter

The course can be permanently corrected by the compass sensor, the position by recalibration on the perimeter wire.

Sensor fusion

Mapping and localization (SLAM)

The perimeter magnetic field could be used as input for a robot position estimation. However, as both the magnetic field map and the robot position on it is unknown, the algorithm needs to calculate both at the same time. Such algorithms are called 'Simultaneous Localization and Mapping' (SLAM).

Input to SLAM algorithm:

  • control values (speed, steering)
  • observation values (speed, heading, magnetic field strength)

Output from SLAM algorithm:

  • magnetic field map (including perimeter border)
  • robot position on that map (x,y,theta)

Example SLAM algorithms:

  • Particle filter-based SLAM plus Rao-Blackwellization: model the robot’s path by sampling and compute the 'landmarks' given the poses