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arxiv: 1705.10368 · v1 · pith:H4VDDJKWnew · submitted 2017-05-29 · 💻 cs.SD · cs.NE

DNN-based uncertainty estimation for weighted DNN-HMM ASR

classification 💻 cs.SD cs.NE
keywords uncertaintyenhancednoisyobservationcleandnn-hmmestimationnoise
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In this paper, the uncertainty is defined as the mean square error between a given enhanced noisy observation vector and the corresponding clean one. Then, a DNN is trained by using enhanced noisy observation vectors as input and the uncertainty as output with a training database. In testing, the DNN receives an enhanced noisy observation vector and delivers the estimated uncertainty. This uncertainty in employed in combination with a weighted DNN-HMM based speech recognition system and compared with an existing estimation of the noise cancelling uncertainty variance based on an additive noise model. Experiments were carried out with Aurora-4 task. Results with clean, multi-noise and multi-condition training are presented.

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