抄録
Performances of automatic speech recognition (ASR) systems degrade rapidly when there is a mismatch between train and test acoustic conditions. Performance can be improved using a multi-stream framework, which involves combining posterior probabilities from several classifiers (often deep neural networks (DNNs)) trained on different features/streams. Knowledge about the confidence of each of these classifiers on a noisy test utterance can help in devising better techniques for posterior combination than simple sum and product rules [1]. In this work, we propose to use autoencoders which are multilayer feed forward neural networks, for estimating this confidence measure. During the training phase, for each stream, an autocoder is trained on TANDEM features extracted from the corresponding DNN. On employing the autoencoder during the testing phase, we show that the reconstruction error of the autoencoder is correlated to the robustness of the corresponding stream. These error estimates are then used as confidence measures to combine the posterior probabilities generated from each of the streams. Experiments on Aurora4 and BABEL databases indicate significant improvements, especially in the scenario of mismatch between train and test acoustic conditions.
本文言語 | English |
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ホスト出版物のタイトル | Proceedings of the Annual Conference of the International Speech Communication Association, INTERSPEECH |
出版社 | International Speech and Communication Association |
ページ | 3551-3555 |
ページ数 | 5 |
巻 | 2015-January |
出版ステータス | Published - 2015 |
イベント | 16th Annual Conference of the International Speech Communication Association, INTERSPEECH 2015 - Dresden, Germany 継続期間: 2015 9月 6 → 2015 9月 10 |
Other
Other | 16th Annual Conference of the International Speech Communication Association, INTERSPEECH 2015 |
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国/地域 | Germany |
City | Dresden |
Period | 15/9/6 → 15/9/10 |
ASJC Scopus subject areas
- 言語および言語学
- 人間とコンピュータの相互作用
- 信号処理
- ソフトウェア
- モデリングとシミュレーション