Rajiv Ramaswami, Kumar N. Sivarajan
IEEE/ACM Transactions on Networking
Partially Hidden Markov Models (PHMM) are introduced. They differ from the ordinary HMM's in that both the transition probabilities of the hidden states and the output probabilities are conditioned on past observations. As an illustration they are applied to black and white image compression where the hidden variables may be interpreted as representing noncausal pixels. © 1996 IEEE.
Rajiv Ramaswami, Kumar N. Sivarajan
IEEE/ACM Transactions on Networking
Leo Liberti, James Ostrowski
Journal of Global Optimization
S. Sattanathan, N.C. Narendra, et al.
CONTEXT 2005
Victor Valls, Panagiotis Promponas, et al.
IEEE Communications Magazine