International audienceThis paper first introduces a new set of aggregated state models for soft-input decoding of quasi arithmetic (QA) codes with a termination constraint. The decoding complexity with these models is linear with the sequence length. The aggregation parameter controls the tradeoff between decoding performance and complexity. It is shown that close-to-optimal decoding performance can be obtained with low values of the aggregation parameter, that is, with a complexity which is significantly reduced with respect to optimal QA bit/symbol models. The choice of the aggregation parameter depends on the synchronization recovery properties of the QA codes. This paper thus describes a method to estimate the probability mass function ...
Soft-combining algorithms use retransmissions of the same codeword to improve the reliability of com...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1994.Includes bibliographical references (leaves 177...
Quantum decoherence and errors represent some of the major challenges arising in quantum computation...
International audienceThis paper first introduces a new set of aggregated state models for soft-inpu...
This paper first introduces a new set of aggregated state models for soft-input decoding of quasi ar...
The issue of robust and joint source-channel decoding of quasi-arithmetic codes is addressed. Quasi...
International audienceOptimum soft decoding of sources compressed with variable length codes and qua...
International audienceVariable length codes exhibit de-synchronization problems when transmitted ove...
International audienceThis paper describes a new set of state models for soft decoding of variable l...
International Telemetering Conference Proceedings / November 14-16, 1978 / Hyatt House Hotel, Los An...
co rre cte d 1 Synchronization recovery and state model reduction for soft decoding of variable leng...
In this work, we investigate a hybrid decoding approach that combines algebraic hard-input decoding ...
In this article we address the computational hardness of optimally decoding a quantum stabilizer cod...
We demonstrate that the complex decision variables eminating directly from the channel receiver may ...
Abstract-This paper presents a novel approach to soft decision decoding for binary linear block code...
Soft-combining algorithms use retransmissions of the same codeword to improve the reliability of com...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1994.Includes bibliographical references (leaves 177...
Quantum decoherence and errors represent some of the major challenges arising in quantum computation...
International audienceThis paper first introduces a new set of aggregated state models for soft-inpu...
This paper first introduces a new set of aggregated state models for soft-input decoding of quasi ar...
The issue of robust and joint source-channel decoding of quasi-arithmetic codes is addressed. Quasi...
International audienceOptimum soft decoding of sources compressed with variable length codes and qua...
International audienceVariable length codes exhibit de-synchronization problems when transmitted ove...
International audienceThis paper describes a new set of state models for soft decoding of variable l...
International Telemetering Conference Proceedings / November 14-16, 1978 / Hyatt House Hotel, Los An...
co rre cte d 1 Synchronization recovery and state model reduction for soft decoding of variable leng...
In this work, we investigate a hybrid decoding approach that combines algebraic hard-input decoding ...
In this article we address the computational hardness of optimally decoding a quantum stabilizer cod...
We demonstrate that the complex decision variables eminating directly from the channel receiver may ...
Abstract-This paper presents a novel approach to soft decision decoding for binary linear block code...
Soft-combining algorithms use retransmissions of the same codeword to improve the reliability of com...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1994.Includes bibliographical references (leaves 177...
Quantum decoherence and errors represent some of the major challenges arising in quantum computation...