Augmented dictionary learning for motion prediction
Author(s)
Chen, Yu Fan; Liu, Miao; How, Jonathan P
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Developing accurate models and efficient representations of multivariate trajectories is important for understanding the behavior patterns of mobile agents. This work presents a dictionary learning algorithm for developing a part-based trajectory representation, which combines merits of the existing Markovian-based and clustering-based approaches. In particular, this work presents the augmented semi-nonnegative sparse coding (ASNSC) algorithm for solving a constrained dictionary learning problem, and shows that the proposed method would converge to a local optimum given a convexity condition. We consider a trajectory modeling application, in which the learned dictionary atoms correspond to local motion patterns. Classical semi-nonnegative sparse coding approaches would add dictionary atoms with opposite signs to reduce the representational error, which can lead to learning noisy dictionary atoms that correspond poorly to local motion patterns. ASNSC addresses this problem and learns a concise set of intuitive motion patterns. ASNSC shows significant improvement over existing trajectory modeling methods in both prediction accuracy and computational time, as revealed by extensive numerical analysis on real datasets.
Date issued
2016-05Department
Massachusetts Institute of Technology. Department of Aeronautics and Astronautics; Massachusetts Institute of Technology. Laboratory for Information and Decision SystemsJournal
IEEE International Conference on Robotics and Automation, 2016. ICRA '16.
Citation
Chen, Yu Fan, Miao Liu, and Jonathan P. How. “Augmented Dictionary Learning for Motion Prediction.” IEEE, 2016. 2527–2534.
Version: Author's final manuscript
ISBN
978-1-4673-8026-3