Chen Y., So H. C., Kuruoglu E. E., Yang X. L.
Generalised Gaussian distribution Impulsive distributions Electrical and Electronic Engineering lp-norm estimation Alpha-stable distribution Computer Vision and Pattern Recognition Complex-valued signals Software Student-t distribution Variance analysis Signal Processing Control and Systems Engineering
Parameter estimation from noisy complex-valued measurements is a significant topic in various areas of science and engineering. In this aspect, an important goal is finding an unbiased estimator with minimum variance. Therefore, variance analysis of an estimator is desirable and of practical interest. In this paper, we concentrate on analyzing the complex-valued â,,"p-norm minimizer with pâ?¥1. Variance formulas for the resultant nonlinear estimators in the presence of three representative bivariate noise distributions, namely, α-stable, Student's t and mixture of generalized Gaussian models, are derived. To guarantee attaining the minimum variance for each noise process, optimum selection of p is studied, in the case of known noise statistics, such as probability density function and corresponding density parameters. All our results are confirmed by simulations and are compared with the Cramér-Rao lower bound.
Source: Signal processing (Print) 135 (2017): 17–25. doi:10.1016/j.sigpro.2016.12.018
Publisher: Elsevier, Amsterdam , Paesi Bassi
@article{oai:it.cnr:prodotti:364967, title = {Variance analysis of unbiased complex-valued lp-norm minimizer}, author = {Chen Y. and So H. C. and Kuruoglu E. E. and Yang X. L.}, publisher = {Elsevier, Amsterdam , Paesi Bassi}, doi = {10.1016/j.sigpro.2016.12.018}, journal = {Signal processing (Print)}, volume = {135}, pages = {17–25}, year = {2017} }