Learning the MMSE Channel Estimator

July 18, 2017 Β· Declared Dead Β· πŸ› IEEE Transactions on Signal Processing

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Authors David Neumann, Thomas Wiese, Wolfgang Utschick arXiv ID 1707.05674 Category cs.IT: Information Theory Citations 301 Venue IEEE Transactions on Signal Processing Last Checked 3 months ago
Abstract
We present a method for estimating conditionally Gaussian random vectors with random covariance matrices, which uses techniques from the field of machine learning. Such models are typical in communication systems, where the covariance matrix of the channel vector depends on random parameters, e.g., angles of propagation paths. If the covariance matrices exhibit certain Toeplitz and shift-invariance structures, the complexity of the MMSE channel estimator can be reduced to O(M log M) floating point operations, where M is the channel dimension. While in the absence of structure the complexity is much higher, we obtain a similarly efficient (but suboptimal) estimator by using the MMSE estimator of the structured model as a blueprint for the architecture of a neural network. This network learns the MMSE estimator for the unstructured model, but only within the given class of estimators that contains the MMSE estimator for the structured model. Numerical simulations with typical spatial channel models demonstrate the generalization properties of the chosen class of estimators to realistic channel models.
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