The BEAST-APP decoding algorithm is a low-complexity bidirectional algorithm that searches code trees to find the list of the most likely codewords, which are used to compute approximate a posteriori probabilities (APPs) of the transmitted symbols. It can be applied to APP-decoding of any linear block code, as well as in iterative structures for decoding concatenated block codes. Previous work has shown that the list size sufficient to achieve the performance of true-APP decoding is very small. This paper aims at providing a theoretical justification for this result. The sufficient list size is estimated first via the minimum list distance - a parameter that is defined and analyzed as a key factor that governs the performance of list-based ...
Abstract — List decoding of binary block codes for the additive white Gaussian noise channel is cons...
The weight distribution and list-decoding size of Reed-Muller codes are studied in this work. Given ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Good approximations of code-symbol a-posteriori probabilities (APPs) are obtained using a list of th...
BEAST is a bidirectional efficient algorithm for searching trees. In this correspondence, BEAST is e...
A Bidirectional Efficient Algorithm for Searching code Trees (BEAST) is proposed for efficient soft-...
BEAST is a Bidirectional Efficient Algorithm for Searching code Trees. In this paper, it is used for...
BEAST is a bidirectional efficient algorithm for searching trees that performs soft-decision maximum...
When searching for convolutional codes and tailbiting codes of high complexity it is of vital import...
List decoding of binary block codes for the additive white Gaussian noise channel is considered. The...
We propose a simple optimal a posteriori probability (APP) symbol decoding algorithm for linear bloc...
Abstract — The micorrection probability of a list de-coder is the probability that the decoder will ...
For an error-correcting code and a distance bound, the list decoding problem is to compute all the c...
In this work we study the list-decoding size of Reed-Muller codes. Given a received word and a dista...
List-based algorithms for decoding Block Turbo Codes (BTC) have gained popularity due to their low c...
Abstract — List decoding of binary block codes for the additive white Gaussian noise channel is cons...
The weight distribution and list-decoding size of Reed-Muller codes are studied in this work. Given ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Good approximations of code-symbol a-posteriori probabilities (APPs) are obtained using a list of th...
BEAST is a bidirectional efficient algorithm for searching trees. In this correspondence, BEAST is e...
A Bidirectional Efficient Algorithm for Searching code Trees (BEAST) is proposed for efficient soft-...
BEAST is a Bidirectional Efficient Algorithm for Searching code Trees. In this paper, it is used for...
BEAST is a bidirectional efficient algorithm for searching trees that performs soft-decision maximum...
When searching for convolutional codes and tailbiting codes of high complexity it is of vital import...
List decoding of binary block codes for the additive white Gaussian noise channel is considered. The...
We propose a simple optimal a posteriori probability (APP) symbol decoding algorithm for linear bloc...
Abstract — The micorrection probability of a list de-coder is the probability that the decoder will ...
For an error-correcting code and a distance bound, the list decoding problem is to compute all the c...
In this work we study the list-decoding size of Reed-Muller codes. Given a received word and a dista...
List-based algorithms for decoding Block Turbo Codes (BTC) have gained popularity due to their low c...
Abstract — List decoding of binary block codes for the additive white Gaussian noise channel is cons...
The weight distribution and list-decoding size of Reed-Muller codes are studied in this work. Given ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...