Ta-Hsin Li, Kai-Sheng Song
IEEE Trans. Inf. Theory
This correspondence revisits the asymptotic normality question of the nonlinear least-squares estimator for sinusoidal parameter estimation and fills a gap in the literature by providing a complete proof of the asymptotic normality under the assumption of additive non-Gaussian white noise. The result shows that the nonlinear least-squares estimator is able to asymptotically attain the Cramer-Rao lower bound derived under the Gaussian white noise assumption in situations where the actual noise distribution is non-Gaussian. © 2008 IEEE.
Ta-Hsin Li, Kai-Sheng Song
IEEE Trans. Inf. Theory
Ta-Hsin Li
EUSIPCO 2010
Ta-Hsin Li, Keh-Shin Lii
IEEE TIP
Ta-Hsin Li, Kai-Sheng Song
IEEE TSP