Deep Channel Estimation

Conference: WSA 2017 - 21th International ITG Workshop on Smart Antennas
03/15/2017 - 03/17/2017 at Berlin, Deutschland

Proceedings: WSA 2017

Pages: 6Language: englishTyp: PDF

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Authors:
Neumann, David; Wiese, Thomas; Utschick, Wolfgang (Associate Institute for Signal Processing, Technische Universität München, 80290 Munich, Germany)

Abstract:
We consider the problem of channel estimation from a single noisy snapshot. We use a typical hierarchical channel model, where the channel is zero-mean, complex Gaussian distributed given the covariance matrix. The covariance matrix is unknown and depends on underlying random hyperparameters such as the angles of the propagation paths. For this model we derive the MMSE estimator and then exploit the structure of the channel model to arrive at a low-complexity, approximate MMSE estimator for a specific channel model with only one hyperparameter. We use the structure of this low-complexity estimator as a blueprint to design the architecture of a neural network which we then apply to general channel models. Simulation results demonstrate the effectiveness of our approach.