Efficient Near Maximum-Likelihood Detection for Underdetermined MIMO Antenna Systems Using a Geometrical Approach

被引:0
作者
Kai-Kit Wong
Arogyaswami Paulraj
机构
[1] University College London,Adastral Park Research Campus
[2] Stanford University,Information Systems Laboratory
来源
EURASIP Journal on Wireless Communications and Networking | / 2007卷
关键词
Detection Strategy; Antenna System; Geometrical Approach; Gaussian Approximation; Reasonable Performance;
D O I
暂无
中图分类号
学科分类号
摘要
Maximum-likelihood (ML) detection is guaranteed to yield minimum probability of erroneous detection and is thus of great importance for both multiuser detection and space-time decoding. For multiple-input multiple-output (MIMO) antenna systems where the number of receive antennas is at least the number of signals multiplexed in the spatial domain, ML detection can be done efficiently using sphere decoding. Suboptimal detectors are also well known to have reasonable performance at low complexity. It is, nevertheless, much less understood for obtaining good detection at affordable complexity if there are less receive antennas than transmitted signals (i.e., underdetermined MIMO systems). In this paper, our aim is to develop an effcient detection strategy that can achieve near ML performance for underdetermined MIMO systems. Our method is based on the geometrical understanding that the ML point happens to be a point that is "close" to the decoding hyperplane in all directions. The fact that such proximity-close points are much less is used to devise a decoding method that promises to greatly reduce the decoding complexity while achieving near ML performance. An average-case complexity analysis based on Gaussian approximation is also given.
引用
收藏
相关论文
共 40 条
[1]  
Foschini GJ(1998)On limits of wireless communications in a fading environment when using multiple antennas Wireless Personal Communications 6 311-335
[2]  
Gans MJ(1998)Space-time codes for high data rate wireless communication: performance criterion and code construction IEEE Transactions on Information Theory 44 744-765
[3]  
Tarokh V(1985)Improved methods for calculating vectors of short length in a lattice, including a complexity analysis Mathematics of Computation 44 463-471
[4]  
Seshadri N(1994)Maximum likelihood sequence estimation from the lattice viewpoint IEEE Transactions on Information Theory 40 1591-1600
[5]  
Calderbank AR(2000)Lattice code decoder for space-time codes IEEE Communications Letters 4 161-163
[6]  
Fincke U(2005)On the sphere-decoding algorithm—I: expected complexity IEEE Transactions on Signal Processing 53 2806-2818
[7]  
Phost M(2005)On the sphere-decoding algorithm—II: generalizations, second-order statistics, and applications to communications IEEE Transactions on Signal Processing 53 2819-2834
[8]  
Mow WH(1999)A universal lattice code decoder for fading channels IEEE Transactions on Information Theory 45 1639-1642
[9]  
Damen O(2006)A semidefinite relaxation approach to MIMO detection for high-order QAM constellations IEEE Signal Processing Letters 13 525-528
[10]  
Chkeif A(2006)Algorithm and implementation of the IEEE Journal on Selected Areas in Communications 24 491-503