GMCC is introduced as a linear-transformation-invariant similarity measure for trajectories, extending the multiple correlation coefficient for use in imitation learning.
Learning interaction for collaborative tasks with prob- abilistic movement primitives
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Generalized Multiple Correlation Coefficient as a Similarity Measurements between Trajectories
GMCC is introduced as a linear-transformation-invariant similarity measure for trajectories, extending the multiple correlation coefficient for use in imitation learning.