This research is focusing on the terrain classification using data from an inertial measurement unit acquired during vehicle motion. The proposed classifier is different from the vibration-based classifier in the fact that it uses the relationship between different axis of input as well as the spectral information to classify the difference between terrains. The data from the inertial measurement unit (IMU) are three axes acceleration and three axes angular velocity. The acquired data are preprocessed and filtered by fuzzy rules, then classified by a neural network into 5 categories: flat plane, rugged terrain, grassy terrain, incline plane and unclassified. The trained networks were experimentally validated with 100 samples in each category. The result shows that the proposed classification method can classify a flat plane, rugged terrain, and incline plane 100% correctly. For grassy terrain, it can be classified correctly about 80%.
[1]
Roberto Manduchi,et al.
Autonomous terrain characterisation and modelling for dynamic control of unmanned vehicles
,
2002,
IEEE/RSJ International Conference on Intelligent Robots and Systems.
[2]
Richard M. Voyles,et al.
Terrain classification through weakly-structured vehicle/terrain interaction
,
2004,
IEEE International Conference on Robotics and Automation, 2004. Proceedings. ICRA '04. 2004.
[3]
Steven Dubowsky,et al.
Vibration-based Terrain Analysis for Mobile Robots
,
2005,
Proceedings of the 2005 IEEE International Conference on Robotics and Automation.
[4]
Gary Witus,et al.
Terrain characterization and classification with a mobile robot
,
2006,
J. Field Robotics.