Speech sample estimation from composite zerocrossings and encoding via adaptive switching of transforms


Autoria(s): Narayanan, N K; Dr.Sridhar, C S
Data(s)

27/03/2014

27/03/2014

17/02/1990

Resumo

This thesis investigates the potential use of zerocrossing information for speech sample estimation. It provides 21 new method tn) estimate speech samples using composite zerocrossings. A simple linear interpolation technique is developed for this purpose. By using this method the A/D converter can be avoided in a speech coder. The newly proposed zerocrossing sampling theory is supported with results of computer simulations using real speech data. The thesis also presents two methods for voiced/ unvoiced classification. One of these methods is based on a distance measure which is a function of short time zerocrossing rate and short time energy of the signal. The other one is based on the attractor dimension and entropy of the signal. Among these two methods the first one is simple and reguires only very few computations compared to the other. This method is used imtea later chapter to design an enhanced Adaptive Transform Coder. The later part of the thesis addresses a few problems in Adaptive Transform Coding and presents an improved ATC. Transform coefficient with maximum amplitude is considered as ‘side information’. This. enables more accurate tfiiz assignment enui step—size computation. A new bit reassignment scheme is also introduced in this work. Finally, sum ATC which applies switching between luiscrete Cosine Transform and Discrete Walsh-Hadamard Transform for voiced and unvoiced speech segments respectively is presented. Simulation results are provided to show the improved performance of the coder

Department of Electronics, Cochin University of Science and Technology

Cochin University of Science and Technology

Identificador

http://dyuthi.cusat.ac.in/purl/3396

Idioma(s)

en

Publicador

Cochin University of Science and Technology

Palavras-Chave #Switching , #Transforms, #Euclidean distance, #Zerocrossing sampling theory, #Voiced or unvoiced classification
Tipo

Thesis