The aim of this book is to present graduate students with a thorough
survey of reference probability models and their applications to optimal
estimation and control. These new and powerful methods are particularly
useful in signal processing applications where signal models are only
partially known and are in noisy environments. Well-known results,
including Kalman filters and the Wonham filter, emerge as special cases.
The authors begin with discrete time and discrete state spaces. From
there, they proceed to cover continuous time, and progress from linear
models to nonlinear models, and from completely known models to only
partially known models. Readers are assumed to have a basic grounding in
probability and systems theory, such as might be gained from the first
year of graduate study, but otherwise this account is self-contained.
Throughout, the authors have taken care to demonstrate engineering
applications which show the usefulness of these methods.