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New decoding strategy for underdetermined MIMO transmission using sparse decomposition

Signal Processing Conference(2013)

引用 27|浏览16
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摘要
In this paper we address the problem of large dimension decoding in MIMO systems. The complexity of the optimal maximum likelihood detection makes it unfeasible in practice when the number of antennas, the channel impulse response length or the source constellation size become too high. We consider a MIMO system with finite constellation and model it as a system with sparse signal sources. We formulate the decoding problem as an underdetermined sparse source recovering problem and apply the ℓ1-minimization to solve it. The resulting decoding scheme is applied to large MIMO systems and to frequency selective channel. We also review the computational cost of some ℓ1-minimization algorithms. Simulation results show significant improvement compared to other existing receivers.
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关键词
MIMO communication,compressed sensing,decoding,maximum likelihood detection,minimisation,signal sources,ℓ1-minimization algorithms,MIMO systems,channel impulse response length,frequency selective channel,large dimension decoding,optimal maximum likelihood detection,source constellation size,sparse decomposition,sparse signal sources,underdetermined MIMO transmission,underdetermined sparse source recovering problem,
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