DocumentCode :
1759643
Title :
Low-Complexity MIMO Detection Based on Belief Propagation Over Pairwise Graphs
Author :
Seokhyun Yoon ; Chan-Byoung Chae
Author_Institution :
Dept. of Electron. Eng., Dankook Univ., Yongin, South Korea
Volume :
63
Issue :
5
fYear :
2014
fDate :
41791
Firstpage :
2363
Lastpage :
2377
Abstract :
This paper considers a belief propagation algorithm over pairwise graphical models to develop low-complexity iterative multiple-input multiple-output (MIMO) detectors. The pairwise graphical model is a bipartite graph where a pair of variable nodes are related by an observation node represented by the bivariate Gaussian function obtained by marginalizing the posterior joint probability density under the Gaussian input assumption. Specifically, we consider two types of pairwise models: the fully connected and ring-type. The pairwise graphs are sparse, compared with the conventional graphical model introduced by Bickson et al., insofar as the number of edges connected to an observation node (edge degree) is only two. Consequently, the computations are much easier than those of maximum likelihood (ML) detection, which are similar to the belief propagation (BP) that is run over the fully connected bipartite graph. The link level performance for non-Gaussian input is evaluated via simulations, and the results show the validity of the proposed algorithms. We also customize the algorithm with Gaussian input assumption to obtain the Gaussian BP run over the two pairwise graphical models, and for the ring-type, we prove its convergence to the linear minimum mean square error (MMSE) estimates. Since the maximum a posterior (MAP) estimator for Gaussian input is equivalent to the linear MMSE estimator, it shows the optimality of the scheme for Gaussian input.
Keywords :
Gaussian processes; MIMO communication; belief networks; graph theory; iterative methods; least mean squares methods; maximum likelihood estimation; Gaussian BP run; Gaussian input assumption; MAP estimator; ML detection; belief propagation algorithm; bivariate Gaussian function; edge degree; fully connected bipartite graph; linear MMSE estimates; linear minimum mean square error estimates; link level performance; low-complexity iterative MIMO detectors; maximum a posterior estimator; maximum likelihood detection; multiple-input multiple-output detectors; nonGaussian input; observation node; pairwise graphical models; pairwise graphs; posterior joint probability density; Bipartite graph; Complexity theory; Detectors; Image edge detection; Joints; MIMO; Maximum likelihood decoding; Belief propagation (BP); Markov random field; Markov random field (MRF); belief propagation; forward-backward recursion; graph-based detection; low complexity MIMO detection; low-complexity multi-input and multi-output (MIMO) detection; sum-product algorithm; sumproduct algorithm;
fLanguage :
English
Journal_Title :
Vehicular Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9545
Type :
jour
DOI :
10.1109/TVT.2013.2291245
Filename :
6665044
Link To Document :
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