For iterative detection and decoding (IDD) in multiple-input multiple-output systems, the maximum a posteriori probability (map) detector would be ideal in terms of the performance. However, due to its high computatio...
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For iterative detection and decoding (IDD) in multiple-input multiple-output systems, the maximum a posteriori probability (map) detector would be ideal in terms of the performance. However, due to its high computational complexity, various suboptimal low-complexity approximate map detectors have been studied. In this study, a lattice reduction (LR)-based detector is considered for a near-optimal performance for IDD. The authors improve further the performance by employing a partial bit-wise minimum mean square error (MMSE) approach with randomised sampling, which has a lower complexity than that of the full bit-wise MMSE method. Moreover, the list of candidate vectors obtained by randomised sampling is extended using a map-aided integer perturbation algorithm for a better performance with low additional complexity. Through simulation results, it is shown that a near-optimal performance can be obtained which is better than that of the LR-based randomised successive interference cancellation and the full bit-wise MMSE methods.
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