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Source and Channel Coding with Vector Quantization

Source and Channel Coding with Vector Quantization PDF Author: Kenneth Alan Zeger
Publisher:
ISBN:
Category :
Languages : en
Pages : 208

Book Description


Source and Channel Coding with Vector Quantization

Source and Channel Coding with Vector Quantization PDF Author: Kenneth Alan Zeger
Publisher:
ISBN:
Category :
Languages : en
Pages : 208

Book Description


Source and Channel Coding

Source and Channel Coding PDF Author: John B. Anderson
Publisher: Springer Science & Business Media
ISBN: 1461539986
Category : Technology & Engineering
Languages : en
Pages : 438

Book Description
oW should coded communication be approached? Is it about prob H ability theorems and bounds, or about algorithms and structures? The traditional course in information theory and coding teaches these together in one course in which the Shannon theory, a probabilistic the ory of information, dominates. The theory's predictions and bounds to performance are valuable to the coding engineer, but coding today is mostly about structures and algorithms and their size, speed and error performance. While coding has a theoretical basis, it has a practical side as well, an engineering side in which costs and benefits matter. It is safe to say that most of the recent advances in information theory and coding are in the engineering of coding. These thoughts motivate the present text book: A coded communication book based on methods and algorithms, with information theory in a necessary but supporting role. There has been muchrecent progress in coding, both inthe theory and the practice, and these pages report many new advances. Chapter 2 cov ers traditional source coding, but also the coding ofreal one-dimensional sources like speech and new techniques like vector quantization. Chapter 4 is a unified treatment of trellis codes, beginning with binary convolu tional codes and passing to the new trellis modulation codes.

Joint source-channel coding using tree-strctured vector quantization for remote sensing images

Joint source-channel coding using tree-strctured vector quantization for remote sensing images PDF Author:
Publisher:
ISBN:
Category :
Languages : pt-BR
Pages :

Book Description
Este trabalho estuda o problema de compressão de imagens de sensoriamento remoto segundo a ótica da codificação conjunta fonte-canal. É analisado o desempenho de métodos baseados em quantização vetorial segundo o algoritmo LBG, principalmente o COVQ (Channel Optimized Vector Quantizer) bem como a quantização vetorial estruturada em árvore. Dentro desse contexto, são propostos 2 novos métodos para a resolução do problema: (1)Uma quantização vetorial estruturada em árvores que leva em conta a transmissão através de canais ruidosos, solução denominada COTSVQ (Channel-Design Tree Strutured Vecotr Quantizer), bem como (2) uma classe de métodos que se utiliza de códigos corretores de erro sobre a estrutura progressiva do TSVQ, de forma a proteger os dados de forma ativa durante a transmissão. Os dois métodos propostos podem ser combinados no mesmo compressor, de forma a originar uma classe ampla de compressores adaptados à transmissão por canais com ruído. São apresentados resultados que comparam os desempenhos dos métodos propostos com aqueles já existentes para uma análise de desempenho, na situação de transmissão via satélite de imagens captadas e comprimidas para uma taxa de 1,5bpp. Os resultados mostram que os métodos propostos são muito menos complexos que os já existentes, porém conseguindo atingir uma qualidade de imagem equivalente, ou, em alguns casos, superior.

Joint Source-Channel Coding of Discrete-Time Signals with Continuous Amplitudes

Joint Source-Channel Coding of Discrete-Time Signals with Continuous Amplitudes PDF Author: Norbert Goertz
Publisher: Imperial College Press
ISBN: 1860948464
Category : Technology & Engineering
Languages : en
Pages : 207

Book Description
This book provides the first comprehensive and easy-to-read discussion of joint source-channel encoding and decoding for source signals with continuous amplitudes. It is a state-of-the-art presentation of this exciting, thriving field of research, making pioneering contributions to the new concept of source-adaptive modulation. The book starts with the basic theory and the motivation for a joint realization of source and channel coding. Specialized chapters deal with practically relevant scenarios such as iterative source-channel decoding and its optimization for a given encoder, and also improved encoder designs by channel-adaptive quantization or source-adaptive modulation. Although Information Theory is not the main topic of the book OCo in fact, the concept of joint source-channel coding is contradictory to the classical system design motivated by a questionable practical interpretation of the separation theorem OCo this theory still provides the ultimate performance limits for any practical system, whether it uses joint source-channel coding or not. Therefore, the theoretical limits are presented in a self-contained appendix, which is a useful reference also for those not directly interested in the main topic of this book. Sample Chapter(s). Chapter 1: Introduction (98 KB). Contents: Joint Source-Channel Coding: An Overview; Joint Source-Channel Decoding; Channel-Adaptive Scaled Vector Quantization; Index Assignments for Multiple Descriptions Vector Quantizers; Source-Adaptive Modulation; Source-Adaptive Power Allocation; Appendices: Theoretical Performance Limits; Optimal Decoder for a Given Encoder; Symbol Error Probabilities for M-PSK; Derivative of the Expected Distortion for SAM. Readership: Students at advanced undergraduate and graduate level; practitioners and academics in Electrical and Communications Engineering, Information Technology and Computer Science."

Non-redundant Channel Coding for Vector Quantization

Non-redundant Channel Coding for Vector Quantization PDF Author: Da-Ming Chiang
Publisher:
ISBN:
Category :
Languages : en
Pages : 164

Book Description


Channel Coding Using Vector Quantization

Channel Coding Using Vector Quantization PDF Author: Sharon F. Harris
Publisher:
ISBN:
Category : Electrical engineering
Languages : en
Pages : 142

Book Description


Digital Communications 1

Digital Communications 1 PDF Author: Didier Le Ruyet
Publisher: John Wiley & Sons
ISBN: 1119232430
Category : Technology & Engineering
Languages : en
Pages : 392

Book Description
The communication chain is constituted by a source and a recipient, separated by a transmission channel which may represent a portion of cable, an optical fiber, a radio channel, or a satellite link. Whatever the channel, the processing blocks implemented in the communication chain have the same foundation. This book aims to itemize. In this first volume, after having presented the base of the information theory, we will study the source coding techniques with and without loss. Then we analyze the correcting codes for block errors, convutional and concatenated used in current systems.

Channel-optimised Source Coding and Vector Quantization with Neural Networks

Channel-optimised Source Coding and Vector Quantization with Neural Networks PDF Author: Lizhong Wu
Publisher:
ISBN:
Category : Bionics
Languages : en
Pages : 16

Book Description


Optimal Redundant Index Assignment for Robust Vector Quantization

Optimal Redundant Index Assignment for Robust Vector Quantization PDF Author: Ilju Na
Publisher:
ISBN:
Category :
Languages : en
Pages : 314

Book Description


Source Coding Theory

Source Coding Theory PDF Author: Robert M. Gray
Publisher: Springer Science & Business Media
ISBN: 146131643X
Category : Technology & Engineering
Languages : en
Pages : 197

Book Description
Source coding theory has as its goal the characterization of the optimal performance achievable in idealized communication systems which must code an information source for transmission over a digital communication or storage channel for transmission to a user. The user must decode the information into a form that is a good approximation to the original. A code is optimal within some class if it achieves the best possible fidelity given whatever constraints are imposed on the code by the available channel. In theory, the primary constraint imposed on a code by the channel is its rate or resolution, the number of bits per second or per input symbol that it can transmit from sender to receiver. In the real world, complexity may be as important as rate. The origins and the basic form of much of the theory date from Shan non's classical development of noiseless source coding and source coding subject to a fidelity criterion (also called rate-distortion theory) [73] [74]. Shannon combined a probabilistic notion of information with limit theo rems from ergodic theory and a random coding technique to describe the optimal performance of systems with a constrained rate but with uncon strained complexity and delay. An alternative approach called asymptotic or high rate quantization theory based on different techniques and approx imations was introduced by Bennett at approximately the same time [4]. This approach constrained the delay but allowed the rate to grow large.