TY - JOUR AB - In this paper, the noise estimation for model-based speech feature enhancement in automatic speech recognition (ASR) is investigated. Beside a stationary noise prior, three linear state space models for the (cepstral) noise process are considered. We have derived novel EM algorithms for the estimation of the noise model parameters: A blockwise EM algorithm is applied on noise-only input data. It is supposed to be used during the offline training mode of the recognizer. Further a sequential online EM algorithm is employed to adapt the observation variance in recognition mode which works as well under the asumption of a stationary noise prior and a linear state model for the noise. Experiments on the AURORA4 database lead to improved recognition results with the new state model compared to the assumption of stationary noise. AU - Windmann, Stefan AU - Haeb-Umbach, Reinhold ID - 11940 JF - 2008 ITG Conference on Voice Communication (SprachKommunikation) TI - A novel approach to noise estimation in model-based speech feature enhancement ER -