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Mixture of Switching Linear Dynamics to Discover Behavior Patterns in Object Tracks
2016
IEEE Transactions on Pattern Analysis and Machine Intelligence
In [4] we present a novel non-parametric Bayesian model to jointly discover the dynamics of low-level actions and high-level behaviors of tracked objects. Actions capture both linear, low-level object dynamics, and an additional spatial distribution on where the dynamic occurs. Furthermore, behavior classes capture high-level temporal motion dependencies in Markov chains of actions, thus each learned behavior is a Switching Linear Dynamical System. The number of actions and behaviors is
doi:10.1109/tpami.2015.2443801
pmid:26761737
fatcat:mm54fcs775fzhkvpp6pradsu64