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研究生: 陳韋豪
論文名稱: 使用空間-時間之特徵分布資訊於強健性語音辨識之研究
Feature Normalization Exploiting Spatial-Temporal Distribution Characteristics for Robust Speech Recognition
指導教授: 陳柏琳
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: 2010
畢業學年度: 98
語文別: 中文
論文頁數: 99
中文關鍵詞: 強健式語音辨識統計圖等化法
論文種類: 學術論文
相關次數: 點閱:74下載:2
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  • 統計圖等化法(Histogram Equalization, HEQ)是一種概念簡單且有效的語音強健技術。在傳統的做法中,語音特徵向量的各個維度特徵值是獨立進行正規化。換言之,大部份方法都只個別考慮每一維度特徵值與其相對應分布之統計資訊進行正規化。不僅如此,不同的統計圖等化法有各自較顯著的缺點。例如查表式統計圖等化法(Table-Lookup Histogram Equalization, THEQ)相較於分位差統計圖等化法(Quantile-Based Histogram Equalization, QHEQ),其耗費較大的記憶體空間;分位差統計圖等化法則需較大的處理器計算量。在本文吾人首先探討語音訊號與強健式語音訊號在空間與時間上之特徵分布關係,並利用該關係提出了空間與時間之特徵分布統計圖等化法(Spatial-Temporal Distribution Characteristics Histogram Equalization, STHEQ),降低不同的聲學環境所產生的偏差(Mismatch)。並且嘗試消除傳統統計圖等化法無法處理的問題,即雜訊的隨機特性(Random Behavior)對語音所產生的影響。此外,相較於前述二個傳統方法,空間與時間之特徵分布統計圖等化法所耗費之記憶體空間與處理器計算量皆顯著地下降。再者,以結合空間與時間之特徵分布資訊(Joint Spatial-Temporal Distribution Information, JSTDI)為基礎,吾人提出一個更廣泛的(General)語音特徵正規化架構,稱之為以空間與時間之特徵分布為基礎之正規化架構(Spatial-Temporal Distribution-Based Normalization Framework, STDNF)。此架構不僅能有效地結合不同正規化法,更能利用不同的空間轉換函數之求解法則來增進語音特徵參數正規化之功效。本論文之語音辨識實驗以Aurora-2語料庫為研究題材,實驗結果顯示在乾淨語料訓練模式下,吾人所提出的方法相較於基礎實驗結果,能顯著地降低字錯誤率,並且成效也較其它傳統語音強健方法來的好。

    一、序論 1 1.1 研究背景 1 1.2 強健性語音技術 2 1.3 研究內容與貢獻 12 1.4 研究內容架構 13 二、文獻回顧 15 2.1語音特徵參數轉換法 15 2.1.1資料相關線性語音特徵空間轉換 156 2.1.2語音特徵參數進行正規化 17 2.1.2.1相對頻譜法(RASTA) 17 2.1.2.2階動差正規化法(Moment Normalization) 18 2.1.2.3統計圖等化法(HEQ) 19 2.1.2.4分位差統計圖等化法(QHEQ) 22 2.1.2.5多項式擬合統計圖等化法(PHEQ) 23 2.1.2.6自動迴歸移動平均(ARMA) 24 2.2語音特徵參數補償法 26 2.2.1編碼詞相關倒頻譜正規化法(CDCN) 26 2.2.2訊噪比相關倒頻譜正規化法(SDCN) 27 2.2.3機率最佳化過濾法(POF) 27 2.2.4雙聲源為基礎分段線性補償(SPLICE) 29 2.2.5隨機特徵向量對映法(SVM) 31 2.2.6使用向量泰勒展開式(VTS)於強健性於音辨識 35 2.3語音特徵參數重建法 38 2.3.1遺失特徵重建法作用在前端語音特徵擷取上 38 2.3.2遺失特徵重建法作用在後端語音解碼上 41 三、實驗語料庫與相關基礎實驗結果 43 3.1 實驗語料庫 43 3.2 實驗設定 43 3.3 辨識效能評估方式 45 3.4 基礎實驗結果 47 四、改良方法與實驗結果 52 4.1空間與時間之特徵分布補償法 52 4.1.1 空間與時間之特徵分布統計圖轉換法(STHEQ) 53 4.1.2 空間與時間之特徵分布統計圖轉換法相關實驗結果 57 4.2核心函數平滑化(Kernel Smoother) 63 4.2.1以高斯為核心之位移式音框平滑化函數(GKSWS) 63 4.2.2以高斯為核心之位移式音框平滑化函數相關實驗結果 65 五、以空間與時間之特徵分布統計圖轉換法之一般化延伸 67 5.1空間與時間之特徵分布為基礎之正規化法 67 5.1.1語音特徵正規化 67 5.1.2目標函數 70 5.1.3以空間與時間之特徵分布為基礎之正規化架構之流程 76 5.2以空間與時間之特徵分布為基礎之正規化架構相關實驗結果 78 5.3使用不同目標函數於以空間與時間之特徵分布為基礎之正規化架構的相關實驗結果 82 六、結論與未來展望 87 6.1結論 87 6.2未來展望 88 七、參考文獻 90

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