Commercially available voice recognition systems are generally
speaker-dependent, with the voice recognition system first being trained
to the voice of the speaker before it can be used. A disadvantage with
this method is that modified reference data has to be buffered and
permanently saved in several steps when the speaker adaptation algorithm
is executed, and thus requires a lot of memory space. This primarily
negatively affects applications on devices with restricted processor
power and limited memory space, such as mobile radio terminals for
example. A method of speaker adaptation for a Hidden Markov Model based
voice recognition system may address these issues. In the method, the
memory space requirement and thus also the processor power required can
be considerably reduced. This is achieved by using modified reference
data in a speaker adaptation algorithm to adapt a new speaker to a
reference speaker. The modified reference data is processed in compressed
form.