We present an online, recursive filtering technique to model linear dynamical systems that operate on the state space of symmetric positive definite matrices (tensors) that lie on a Riemannian manifold. The proposed approach describes a predict-and-update computational paradigm, similar to a vector Kalman filter, to estimate the optimal tensor state. We adapt the original Kalman filtering algorithm to appropriately propagate the state over time and assimilate observations, while conforming to the geometry of the manifold. We validate our algorithm with synthetic data experiments and demonstrate its application to visual object tracking using covariance features.
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4-18-7 Zenpukuji,Suginami Ku, Tokyo 1670041, JapanMayflower Corp, High Wycombe, Bucks, England
Kanou, Makoto
Sato, Tomohiko
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Mayflower Corp, High Wycombe, Bucks, England
Nihon Univ, Dept Liberal Arts & Basic Sci, Coll Ind Technol, 2-11-1 Shin Ei, Narashino, Chiba 2758576, JapanMayflower Corp, High Wycombe, Bucks, England
Sato, Tomohiko
Watanabe, Kazuo
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Gakushuin Univ, Dept Math, Fac Sci, Toshima Ku, 1-5-1 Mejiro, Tokyo 1718588, JapanMayflower Corp, High Wycombe, Bucks, England