We examine new approaches to the problem of decoding general linear codes under the strategies of full or bounded hard decoding and bounded soft decoding. The objective is to derive enhanced new algorithms that take advantage of the major features of existing algorithms to reduce decoding complexity. We derive a wide range of results on the complexity of many existing algorithms. We suggest a new algorithm for cyclic codes, and show how it exploits all the main features of the existing algorithms. Finally, we propose a new approach to the problem of bounded soft decoding, and show that its asymptotic complexity is significantly lower than that of any other currently known general algorithm. In addition, we give a characterization of the wei...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
In this report we present a class of efficient maximum-likelihood soft-decision decoding algorithms ...
AbstractWe examine new approaches to the problem of decoding general linear codes under the strategi...
A central paradox of coding theory has been noted for many years, and concerns the existence and con...
Information set decoding is an algorithm for decoding any linear code. Expressions for the complexit...
Information set decoding is an algorithm for decoding any linear code. Expressions for the complexit...
This dissertation deals with maximum-likelihood soft-decision decoding as well as suboptimal soft-de...
Two challenges in algebraic coding theory are addressed within this dissertation. The first one is ...
The problem of maximum-likelihood decoding of linear block codes is known to be hard. The fact that ...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
In this report we present a class of efficient maximum-likelihood soft-decision decoding algorithms ...
AbstractWe examine new approaches to the problem of decoding general linear codes under the strategi...
A central paradox of coding theory has been noted for many years, and concerns the existence and con...
Information set decoding is an algorithm for decoding any linear code. Expressions for the complexit...
Information set decoding is an algorithm for decoding any linear code. Expressions for the complexit...
This dissertation deals with maximum-likelihood soft-decision decoding as well as suboptimal soft-de...
Two challenges in algebraic coding theory are addressed within this dissertation. The first one is ...
The problem of maximum-likelihood decoding of linear block codes is known to be hard. The fact that ...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Two efficient, maximum likelihood, soft decision decoding algorithms for binary (linear) codes are d...
Soft-decision decoding is an NP-hard problem of great interest to developers of communication system...
In this report we present a class of efficient maximum-likelihood soft-decision decoding algorithms ...