We report on the evaluation of a new method for audio source separation using only one sensor. The method can be
viewed as a generalization of Wiener filtering to locally stationary signals, where the sources are modelled using power
spectral density dictionaries which are estimated during a training step. The experiments were designed to measure how
separation performance varied with amount of training data, model complexity and the representativity of the training
data. The results show that model complexity and training data representativity are more important than the amount of
training data.