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GRÉZL, F. KARAFIÁT, M. ČERNOCKÝ, J.
Original Title
Neural network topologies and bottle neck features in speech recognition
Type
presentation
Language
English
Original Abstract
Different neural net topologies for estimating features for speech recognition were presented. We introduced bottle-neck structure into previously proposed Split Context. This was done mainly to reduce size of resulting neural net, which serves as feature estimator. When bottle-neck outputs are used also as final outputs from neural network instead of probability estimates, the reduction of word error rate is also reached.
Keywords
neural networks, topologies, speech recognition, bottle-neck features
Authors
GRÉZL, F.; KARAFIÁT, M.; ČERNOCKÝ, J.
Released
28. 6. 2007
Location
Brno
Pages from
78
Pages to
82
Pages count
5
BibTex
@misc{BUT63689, author="František {Grézl} and Martin {Karafiát} and Jan {Černocký}", title="Neural network topologies and bottle neck features in speech recognition", year="2007", pages="78--82", address="Brno", note="presentation" }