Level:
Graduate
Instructors:
Prof. Alan Willsky
Prof. Gregory Wornell
Example of threshold phenomenon in nonlinear estimation. (Image courtesy of Alan Willsky and Gregory Wornell.)
Course Highlights
Course Description
This course examines the fundamentals of detection and estimation
for signal processing, communications, and control. Topics covered
include: vector spaces of random variables; Bayesian and Neyman-Pearson
hypothesis testing; Bayesian and nonrandom parameter estimation;
minimum-variance unbiased estimators and the Cramer-Rao bounds;
representations for stochastic processes, shaping and whitening
filters, and Karhunen-Loeve expansions; and detection and
estimation from waveform observations. Advanced topics include: linear
prediction and spectral estimation, and Wiener and Kalman filters.