In the proposed talk, I will cover the two types of linear prediction
which deal with the problem of predicting the values of a stationary
random process either forward in time or, backward in time known as
forward and backward prediction. I will discuss basic principals of
linear prediction analysis and the fundamental problem related with
the analysis as applied to speech processing. As linear prediction
refers to a variety of formulations of the problem of modeling the
speech waveforms, I will discuss few basic formulations of linear
prediction analysis and examine the similarities and difference among
them. I will then highlight the basic problems related with linear
prediction as applied to speech which will lead to PLP analysis, an
extension over linear prediction.
Additional items of interest: