The EEG signals are highly subjective and the information about the
various states may appear at random in the time scale. For example, a
time series may be obtained by recording at regular time intervals the
mean electrical activity of a portion of the mammalian brain. More
specifically, by using a time series one can determine the possibility
of constructing an attractor and thereby establishing the deterministic
character of dynamic underlying system. Such methods from the non linear
dynamical theory can be dragged for better perception of EEG signals.
The complexity of drowsiness estimation and characterizing the EEG
signals can be brought under some chaotic optimization techniques.
Chapter1 introduces Chaos, Non linear dynamics and focus of the
research. Chapter 2 discusses the literature survey of correlation
dimension estimation. Chapter 3 and Chapter 4 enumerate the review of
LAB view and Mat lab software for the book. Results are discussed in
Chapter 5. Chapter 6 brings out the conclusion of this work. Future
scope of this work is solemnized in chapter 7. This monograph is useful
for all Engineering undergraduate, graduates students and practicing
engineers.