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Data analysis / Covariance and correlation / Algebra of random variables / Kalman filter / Mahalanobis distance / Euclidean vector / Covariance matrix / Covariance / Lane / Statistics / Multivariate statistics / Robot control
Date: 2014-06-08 16:45:24
Data analysis
Covariance and correlation
Algebra of random variables
Kalman filter
Mahalanobis distance
Euclidean vector
Covariance matrix
Covariance
Lane
Statistics
Multivariate statistics
Robot control

2013 IEEE Intelligent Transportation Systems Conference (ITSC), the Hague, the Netherlands, Oct. 7-9, 2013, ppMap-based Long Term Motion Prediction for Vehicles in Traffic Environments Dominik Petrich1 , Thao

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