Publication | Open Access
Gaussian-Mixture-Model Based Clutter Suppression in Perceptive Mobile Networks
11
Citations
11
References
2020
Year
RadarMobile Signal ProcessingStatistical Signal ProcessingEngineeringCompressive SensingClutter SuppressionSignal ReconstructionGaussian Mixture ModelMobile ComputingEffective Clutter EstimationChannel EstimationSignal SeparationSignal Processing
Suppression of undesired non-information bearing multipaths, aka clutter, from received signals is a key process for sensing parameter estimation in the perceptive mobile network, a next generation mobile network that integrates radar sensing into communications. In this correspondence, we propose a novel clutter suppression method based on the Gaussian mixture model (GMM) and expectation maximization (EM) estimation, which can achieve fast and effective clutter estimation requiring only a small number of samples. We then apply a one-dimension (1D) compressive sensing (CS) based sensing algorithm to extract useful channel information after removing the estimated clutter. Simulation results are provided for the proposed solution and existing techniques, and validate the effectiveness of the proposed scheme.
| Year | Citations | |
|---|---|---|
2008 | 2.4K | |
2018 | 894 | |
2019 | 277 | |
2017 | 68 | |
2015 | 67 | |
2019 | 35 | |
2017 | 32 | |
2017 | 19 | |
2016 | 11 | |
2011 | 10 |
Page 1
Page 1