We study detection of random signals corrupted by noise that over time switch their values (states) between a finite set of possible values, where the switchings occur at unknown points in time. We model such signals as hidden semi-Markov signals (HSMS), which generalize classical Markov chains by introducing explicit (possibly non-geometric) distribution for the time spent in each state. Assuming two possible signal states and Gaussian noise, we derive optimal likelihood ratio test and show that it has a computationally tractable form of a matrix product, with the number of matrices involved in the product being the number of process observations. The product matrices are independent and identically distributed, constructed by a simple mea...
We propose a new test for the stability of parameters in a Markov switching model where regime chang...
International audienceIn a hidden Markov model (HMM), the system goes through a hidden Markovian seq...
A numerical method for computing the error exponent for Neyman–Pearson detection of two-state Marko...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
This paper develops maximum likelihood (ML) estimation schemes for finite-state semi-Markov chains i...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
AbstractAs an extension to the popular hidden Markov model (HMM), a hidden semi-Markov model (HSMM) ...
Abstract—A numerical method for computing the error exponent for Neyman–Pearson detection of two-sta...
Hidden semi-Markov models (HSMMs) are latent variable models which allow latent state persistence an...
Abstract—We consider the estimation of the number of hidden states (the order) of a discrete-time fi...
This paper investigates the decentralized detection of Hidden Markov Processes using the Neyman-Pear...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
For Hidden Markov Models (HMMs) with fully connected transition models, the three fundamental proble...
We propose a new test for the stability of parameters in a Markov switching model where regime chang...
International audienceIn a hidden Markov model (HMM), the system goes through a hidden Markovian seq...
A numerical method for computing the error exponent for Neyman–Pearson detection of two-state Marko...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
We study detection of random signals corrupted by noise that over time switch their values (states) ...
This paper develops maximum likelihood (ML) estimation schemes for finite-state semi-Markov chains i...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
AbstractAs an extension to the popular hidden Markov model (HMM), a hidden semi-Markov model (HSMM) ...
Abstract—A numerical method for computing the error exponent for Neyman–Pearson detection of two-sta...
Hidden semi-Markov models (HSMMs) are latent variable models which allow latent state persistence an...
Abstract—We consider the estimation of the number of hidden states (the order) of a discrete-time fi...
This paper investigates the decentralized detection of Hidden Markov Processes using the Neyman-Pear...
We consider the Sequential Probability Ratio Test applied to Hidden Markov Models. Given two Hidden ...
For Hidden Markov Models (HMMs) with fully connected transition models, the three fundamental proble...
We propose a new test for the stability of parameters in a Markov switching model where regime chang...
International audienceIn a hidden Markov model (HMM), the system goes through a hidden Markovian seq...
A numerical method for computing the error exponent for Neyman–Pearson detection of two-state Marko...