Dynamic Testing and Calibration of Gaussian Processes for Vehicle Attitude Estimation

ICMLA), 2011 10th International Conference(2011)

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摘要
A method of estimating a vehicle's attitude in relation to the road surface using only light detection and ranging (lidar) measurements is presented. Gaussian processes, a machine learning technique, is used to relate the measurements of the road surface to the pitch and roll of the vehicle. Testing was performed under normal driving conditions on a test track as well as under high dynamic maneuvers on a skid-pad to assess performance of the algorithm. On-vehicle results show that the attitude calculations are capable of being implemented in a real-time system and have been compared against a multi-antenna GPS attitude measurement for accuracy.
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关键词
high dynamic maneuvers,gaussian processes,multi-antenna gps attitude measurement,attitude calculation,vehicle attitude estimation,dynamic testing,on-vehicle result,road surface,test track,normal driving condition,real-time system,light detection,gaussian process,laser radar,real time systems,testing,estimation,lidar,training data,machine learning,vehicle dynamics,attitude,calibration,learning artificial intelligence
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