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研究生: 羅天宏
Lo, Tien-Hong
論文名稱: 探討聲學模型化技術與半監督鑑別式訓練於語音辨識之研究
Investigating Acoustic Modeling and Semi-supervised Discriminative Training for Speech Recognition
指導教授: 陳柏琳
Chen, Berlin
學位類別: 碩士
Master
系所名稱: 資訊工程學系
Department of Computer Science and Information Engineering
論文出版年: 2019
畢業學年度: 107
語文別: 中文
論文頁數: 102
中文關鍵詞: 半監督式學習鑑別式訓練整體學習遷移學習自動語音辨識聲學模型LF-MMI
英文關鍵詞: semi-supervised training, discriminative training, transfer learning, ensemble learning, automatic speech recognition, acoustic model, LF-MMI
DOI URL: http://doi.org/10.6345/THE.NTNU.DCSIE.004.2019.B02
論文種類: 學術論文
相關次數: 點閱:127下載:37
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  • 近年來鑑別式訓練(Discriminative training)的目標函數Lattice-free maximum mutual information (LF-MMI)在自動語音辨識(Automatic speech recognition, ASR)的聲學模型(Acoustic model)訓練上取得重大的突破。儘管LF-MMI在監督式環境下斬獲最好的成果,然而在半監督式環境下的研究成果仍然有限。在常見的半監督式方法─自我訓練(Self-training)中,種子模型(Seed model)常因為語料有限而效果不佳。再者,因為LF-MMI屬於鑑別式訓練之故,較易受到標記正確與否的影響。基於上述,本論文將半監督式訓練拆解成兩個問題:1)如何提升種子模型的效能,以及2)如何利用未轉寫(無人工標記)語料。針對第一個問題,我們使用兩種方法可分別對應到是否具存有額外資料的情況,其一為遷移學習(Transfer learning),使用技術為權重遷移(Weight transfer)和多任務學習(Multitask learning);其二為模型合併(Model combination),使用技術為假說層級合併(Hypothesis-level combination)和音框層級合併(Frame-level combination)。針對第二個問題,基於LF-MMI目標函數,我們引入負條件熵(Negative conditional entropy, NCE)與保留更多假說空間的詞圖監督(Lattice for supervision)。在一系列於互動式會議語料(Augmented multi-party interaction, AMI)的實驗結果顯示,不論是利用領域外資料(Out-of-domain data, OOD)的遷移學習或多樣性互補的模型合併皆可提升種子模型的效能,而NCE與詞圖監督則能運用未轉寫語料降改善錯誤率(Word error rate, WER)與詞修復率(WER recovery rate, WRR)。

    More recently, a novel objective function of discriminative acoustic model training, namely Lattice-free maximum mutual information (LF-MMI), has been proposed and achieved the new state-of-the-art in automatic speech recognition (ASR). Although LF-MMI shows excellent performance in various ASR tasks with supervised training settings, its performance is often significantly degraded when with semi-supervised settings. This is because LF-MMI shares a common deficiency of discriminative training criteria, being sensitive to the accuracy of the corresponding transcripts of training utterances. In view of the above, this thesis explores two questions to LF-MMI with a semi-supervised training setting: the first one is how to improve the seed model and the second one is how to use untranscribed training data. For the former, we investigate several transfer learning approaches (e.g. weight transfer and multitask learning) and the model combination (e.g. hypothesis-level combination and frame-level combination). The distinction between the above two methods is whether extra training data is being used or not. On the other hand, for the second question, we introduce negative conditional entropy (NCE) and lattice for supervision, in conjunction with the LF-MMI objective function. A series of experiments were conducted on the Augmented Multi-Party Interaction (AMI) benchmark corpus. The experimental results show that transfer learning using out-of-domain data (ODD) and model combination based on complementary diversity can effectively improve the performance of the seed model. The pairing of NCE and lattice for supervision can improve the word error rate (WER) and WER recovery rate (WRR).

    第1章 緒論 1 1.1 研究背景 1 1.2 問題描述 3 1.2.1 領域不匹配(Domain mismtach)的語料 5 1.2.2 模型合併與知識蒸餾 5 1.2.3 自我訓練時的資料選擇 6 1.3 論文貢獻 8 1.4 論文章節安排 9 第2章 統計式語音辨識 11 2.1 聲學模型 12 2.2 語言模型 12 2.3 語音辨識之流程 13 2.4 聲學模型訓練 14 2.5 深層類神經網路模型訓練 15 2.6 Lattice-free maximum mutual information 19 2.6.1 Maximum mutual information 20 2.6.2 Lattice-free maximum mutual information 24 第3章 遷移學習 27 3.1 遷移學習與自動語音辨識 27 3.2 符號與定義 29 3.3 遷移學習的分類 31 3.3.1 歸納式遷移學習(Inductive transfer learning) 34 3.3.2 轉導式遷移學習(Transductive transfer learning) 45 3.4 負遷移學習(Negative transfer) 49 第4章 半監督式訓練於Lattice-free MMI 51 4.1 半監督式訓練 51 4.2 資料選擇與估測 54 4.2.1 半監督式LF-MMI(Semi-supervised LF-MMI) 55 4.2.2 條件熵(Conditional entropy) 57 4.3 模型合併與壓縮 58 4.3.1 模型合併(Model combination) 60 4.3.2 知識蒸餾(Knowledge distillation) 63 第5章 實驗架構與實驗結果 67 5.1 實驗架構 67 5.1.1 實驗語料說明 68 5.1.2 實驗流程設定 70 5.1.3 聲學模型與相關設定 71 5.1.4 實驗評估方式 73 5.2 實驗結果 73 5.2.1 基礎實驗 74 5.2.2 基於半監督式訓練的LF-MMI 77 第6章 結論與未來展望 89 參考文獻 91

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