We propose a decoding algorithm for tail-biting convolutional codes over phase noise channels. It can be seen as a reduced complexity approximation of maximum likelihood decoding. We target short blocks and extend the wrap-around Viterbi algorithm to trellises describing the random evolution of the phase impairment, for which we adopt two different models: a blockwise non-coherent and a blockwise Wiener channel model. Numerical results show that the performance of the proposed algorithm is within a few tenths of dB or less from maximum likelihood decoding for the setup studied in this letter
Convolutional encoding with Viterbi decoding is a FEC technique that is particularly suited to a cha...
In a coded communication system with equiprobable signaling, MLD minimizes the word error probabilit...
30 pages, 8 figuresInternational audienceWe consider the multiple-input multiple-output (MIMO) commu...
We propose a decoding algorithm for tail-biting convolutional codes over phase noise channels. It ca...
We introduce a new algorithm for Maximum Likelihood (ML) decoding for channels with memory. The algo...
Motivated by the increasing interest in powerful short channel codes for low-latency ultra-reliable ...
Convolutional codes are characterized by a trellis structure. Maximum-likelihood decoding is charact...
Coding for the phase noise channel is investigated in the paper. Specifically, Wiener's phase noise,...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
This paper considers the average complexity of maximum likelihood (ML) decoding of convolutional cod...
We introduce a new algorithm for realizing Maximum Likelihood (ML) decoding in discrete channels wit...
Decoding convolutional codes with binary digital modulation in intersymbol interference (ISI) channe...
The design of a simplified Viterbi decoder for signals in Middleton Class-A noise is considered. The...
This thesis is a study of error-correcting codes for reliable communication in the presence of extre...
A linear time approximate maximum likelihood decoding algorithm on tail-biting trellises is presente...
Convolutional encoding with Viterbi decoding is a FEC technique that is particularly suited to a cha...
In a coded communication system with equiprobable signaling, MLD minimizes the word error probabilit...
30 pages, 8 figuresInternational audienceWe consider the multiple-input multiple-output (MIMO) commu...
We propose a decoding algorithm for tail-biting convolutional codes over phase noise channels. It ca...
We introduce a new algorithm for Maximum Likelihood (ML) decoding for channels with memory. The algo...
Motivated by the increasing interest in powerful short channel codes for low-latency ultra-reliable ...
Convolutional codes are characterized by a trellis structure. Maximum-likelihood decoding is charact...
Coding for the phase noise channel is investigated in the paper. Specifically, Wiener's phase noise,...
We introduce a new algorithm for realizing maximum likelihood (ML) decoding for arbitrary codebooks ...
This paper considers the average complexity of maximum likelihood (ML) decoding of convolutional cod...
We introduce a new algorithm for realizing Maximum Likelihood (ML) decoding in discrete channels wit...
Decoding convolutional codes with binary digital modulation in intersymbol interference (ISI) channe...
The design of a simplified Viterbi decoder for signals in Middleton Class-A noise is considered. The...
This thesis is a study of error-correcting codes for reliable communication in the presence of extre...
A linear time approximate maximum likelihood decoding algorithm on tail-biting trellises is presente...
Convolutional encoding with Viterbi decoding is a FEC technique that is particularly suited to a cha...
In a coded communication system with equiprobable signaling, MLD minimizes the word error probabilit...
30 pages, 8 figuresInternational audienceWe consider the multiple-input multiple-output (MIMO) commu...