Title :
Nonlinear Channel Equalization With Gaussian Processes for Regression
Author :
Pérez-Cruz, Fernando ; Murillo-Fuentes, Juan José ; Caro, Sebastián
Author_Institution :
Electr. Eng. Dept., Princeton Univ., Princeton, NJ
Abstract :
We propose Gaussian processes for regression (GPR) as a novel nonlinear equalizer for digital communications receivers. GPR´s main advantage, compared to previous nonlinear estimation approaches, lies on their capability to optimize the kernel hyperparameters by maximum likelihood, which improves its performance significantly for short training sequences. Besides, GPR can be understood as a nonlinear minimum mean square error estimator, a standard criterion for training equalizers that trades off the inversion of the channel and the amplification of the noise. In the experiment section, we show that the GPR-based equalizer clearly outperforms support vector machine and kernel adaline approaches, exhibiting outstanding results for short training sequences.
Keywords :
channel estimation; equalisers; least mean squares methods; maximum likelihood estimation; regression analysis; Gaussian processes; digital communications receivers; maximum likelihood estimation; nonlinear channel equalization; nonlinear minimum mean square error estimator; short training sequences; Equalization; Gaussian Processes; Gaussian processes; Kernel Adaline; Nonlinear Equalization; Regression; Support Vector Machines; kernel adaline; nonlinear equalization; regression; support vector machines;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2008.928512