Viterbi Extraction tutorial with Hidden Markov Toolkit

08/07/2019
by   Zulkarnaen Hatala, et al.
0

An algorithm used to extract HMM parameters is revisited. Most parts of the extraction process are taken from implemented Hidden Markov Toolkit (HTK) program under name HInit. The algorithm itself shows a few variations compared to another domain of implementations. The HMM model is introduced briefly based on the theory of Discrete Time Markov Chain. We schematically outline the Viterbi method implemented in HTK. Iterative definition of the method which is ready to be implemented in computer programs is reviewed. We also illustrate the method calculation precisely using manual calculation and extensive graphical illustration. The distribution of observation probability used is simply independent Gaussians r.v.s. The purpose of the content is not to justify the performance or accuracy of the method applied in a specific area. This writing merely to describe how the algorithm is performed. The whole content should enlighten the audience the insight of the Viterbi Extraction method used by HTK.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/06/2011

Tech Report A Variational HEM Algorithm for Clustering Hidden Markov Models

The hidden Markov model (HMM) is a generative model that treats sequenti...
research
04/11/2012

A Simple Explanation of A Spectral Algorithm for Learning Hidden Markov Models

A simple linear algebraic explanation of the algorithm in "A Spectral Al...
research
07/09/2014

Online Stroke and Akshara Recognition GUI in Assamese Language Using Hidden Markov Model

The work describes the development of Online Assamese Stroke & Akshara R...
research
03/15/2021

Regenerativity of Viterbi process for pairwise Markov models

For hidden Markov models one of the most popular estimates of the hidden...
research
11/07/2017

Hidden Markov Random Field Iterative Closest Point

When registering point clouds resolved from an underlying 2-D pixel stru...

Please sign up or login with your details

Forgot password? Click here to reset