Vivek Tyagi
Idiap Research Institute
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Vivek Tyagi.
international conference on acoustics, speech, and signal processing | 2003
Hemant Misra; Vivek Tyagi
Classifier performance is often enhanced through combining multiple streams of information. In the context of multi-stream HMM/ANN systems in ASR, a confidence measure widely used in classifier combination is the entropy of the posteriors distribution output from each ANN, which generally increases as classification becomes less reliable. The rule most commonly used is to select the ANN with the minimum entropy. However, this is not necessarily the best way to use entropy in classifier combination. In this article, we test three new entropy based combination rules in a full-combination multi-stream HMM/ANN system for noise robust speech recognition. Best results were obtained by combining all the classifiers having entropy below average using a weighting proportional to their inverse entropy.
ieee automatic speech recognition and understanding workshop | 2003
Vivek Tyagi; Iain A. McCowan; Hemant Misra
In this paper, we present new dynamic features derived from the modulation spectrum of the cepstral trajectories of the speech signal. Cepstral trajectories are projected over the basis of sines and cosines yielding the cepstral modulation frequency response of the speech signal. We show that the different sines and cosines basis vectors select different modulation frequencies, whereas the frequency responses of the delta and the double delta filters are only centered over 15 Hz. Therefore, projecting cepstral trajectories over the basis of sines and cosines yield a more complementary and discriminative range of features. In this work, the cepstrum reconstructed from the lower cepstral modulation frequency components is used as the static feature. In experiments, it is shown that, as well as providing an improvement in clean conditions, these new dynamic features yield a significant increase in the speech recognition performance in various noise conditions when compared directly to the standard temporal derivative features and C-JRASTA PLP features.
Archive | 2002
Hemant Misra; Hervé Bourlard; Vivek Tyagi
conference of the international speech communication association | 2003
Vivek Tyagi; Iain A. McCowan; Hemant Misra
Archive | 2003
Vivek Tyagi; Hervé Bourlard
conference of the international speech communication association | 2005
Vivek Tyagi; Christian Wellekens
conference of the international speech communication association | 2008
Vivek Tyagi
conference of the international speech communication association | 2008
Vivek Tyagi
conference of the international speech communication association | 2007
Vivek Tyagi
Lecture Notes in Computer Science | 2006
Vivek Tyagi; Christian Wellekens