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arxiv: 1609.02082 · v1 · pith:O5VMLO2Enew · submitted 2016-08-04 · 💻 cs.LG · cs.CL· cs.SD

An improved uncertainty decoding scheme with weighted samples for DNN-HMM hybrid systems

classification 💻 cs.LG cs.CLcs.SD
keywords dnn-hmmhybriddecodingmodeluncertaintyweightedaveragingdistortion
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In this paper, we advance a recently-proposed uncertainty decoding scheme for DNN-HMM (deep neural network - hidden Markov model) hybrid systems. This numerical sampling concept averages DNN outputs produced by a finite set of feature samples (drawn from a probabilistic distortion model) to approximate the posterior likelihoods of the context-dependent HMM states. As main innovation, we propose a weighted DNN-output averaging based on a minimum classification error criterion and apply it to a probabilistic distortion model for spatial diffuseness features. The experimental evaluation is performed on the 8-channel REVERB Challenge task using a DNN-HMM hybrid system with multichannel front-end signal enhancement. We show that the recognition accuracy of the DNN-HMM hybrid system improves by incorporating uncertainty decoding based on random sampling and that the proposed weighted DNN-output averaging further reduces the word error rate scores.

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