Hidden Markov chains and fields with observations in Riemannian manifolds

01/11/2021
by   Salem Said, et al.
0

Hidden Markov chain, or Markov field, models, with observations in a Euclidean space, play a major role across signal and image processing. The present work provides a statistical framework which can be used to extend these models, along with related, popular algorithms (such as the Baum-Welch algorithm), to the case where the observations lie in a Riemannian manifold. It is motivated by the potential use of hidden Markov chains and fields, with observations in Riemannian manifolds, as models for complex signals and images.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/15/2021

Online learning of Riemannian hidden Markov models in homogeneous Hadamard spaces

Hidden Markov models with observations in a Euclidean space play an impo...
research
07/02/2022

Geometric Learning of Hidden Markov Models via a Method of Moments Algorithm

We present a novel algorithm for learning the parameters of hidden Marko...
research
03/24/2020

Predicting play calls in the National Football League using hidden Markov models

In recent years, data-driven approaches have become a popular tool in a ...
research
10/05/2022

Extending Conformal Prediction to Hidden Markov Models with Exact Validity via de Finetti's Theorem for Markov Chains

Conformal prediction is a widely used method to quantify uncertainty in ...
research
06/15/2018

Selective Monitoring

We study selective monitors for labelled Markov chains. Monitors observe...
research
02/24/2020

Uncovering ecological state dynamics with hidden Markov models

Ecological systems can often be characterised by changes among a set of ...

Please sign up or login with your details

Forgot password? Click here to reset