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研究生: 馬仲文
Ma, Chung-Wen
論文名稱: 結合臉部表情及聲音之嬰兒情緒辨識系統
An Infant Emotion Recognition System Using both Facial Expressions and Vocalization
指導教授: 方瓊瑤
Fang, Chiung-Yao
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: 2015
畢業學年度: 103
語文別: 中文
論文頁數: 70
中文關鍵詞: 嬰兒監控系統臉部偵測嬰兒情緒辨識區域三元化圖形(LTP)Zernike moments梅爾頻率倒頻譜係數(MFCCs)
英文關鍵詞: infant monitory system, face detection, infant emotion recognition, local ternary pattern(LTP), Zernike moments, mel frequency cepstral coefficients(MFCCs)
論文種類: 學術論文
相關次數: 點閱:204下載:4
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  • 嬰兒的情緒發展會影響未來的學習力、注意力甚至於成長後的個性及人際關係,而在人一生的情緒發展中以嬰兒時期的情緒發展最為重要。所以若是能得知嬰兒目前情緒及生理需求並予以滿足,對未來發展影響甚大,然而嬰兒在1歲之前只能使用臉部表情及不帶詞意的聲音來向父母表達自己目前的情緒及生理需求。所以本論文開發一套結合嬰兒臉部表情及聲音的監控系統,適時協助轉達嬰兒情緒,以減輕父母照顧嬰兒的負擔,更幫助父母妥善的照顧嬰兒。
    本系統一開始分成兩部分執行,一部分為影像部分,另一部分為聲音部分。影像部分主要分為嬰兒臉部偵測及臉部特徵擷取,當系統讀入連續的嬰兒影像後,會從影像中擷取膚色區域並從這些膚色區域中找出嬰兒的臉部區域。接著採用local ternary pattern標示影像中嬰兒臉部輪廓,並進行差分影像累積,最後計算累積差分影像中0階至3階的Zernike moments值,當作嬰兒臉部特徵使用。而聲音方面利用常見的mel frequency cepstral coefficients與其差量倒頻譜係數當作嬰兒聲音特徵使用。最後利用support vector machine將影像及聲音特徵分別進行分類,並將兩者分類結果整合成嬰兒情緒類別。
    實驗影片共有100段,其中每段影片僅包含單一情緒類別,合計影片長度為100分鐘,拍攝嬰兒之月齡為1個月至7個月,而嬰兒情緒辨識之平均正確率約為85.3%,由此可知,本系統的辨識結果具有一定的可信度。

    The emotional development of infants will affect their learning ability, attention, personality and interpersonal in the future, thus it is very important in the life of person. However infants are difficult to use words to express their emotions or physiological needs, others can understand their emotion or physiological needs by their facial expressions, vocalization, and body movements. Therefore, the study presents an infant emotion recognition system using both facial expressions and vocalization to reduce the burden of parents to take care of the infants.
    The system can be divided into two parts: image processing part and speech processing part. Image processing part consists of two main stages: infant face detection and facial expression feature extraction. In the infant face detection stage, the system detects the skin color pixels from the input images and uses the connect component technology to find the biggest skin color region which is regarded as the face of infants. In the facial expression feature extraction stage, the system uses the local ternary pattern technology to label the face contour of the infants and calculates the values of 0 to 3 order Zernike moments in the cumulative difference image.
    In speech processing part, the system uses common mel frequency cepstral coefficients and its delta cepstrum coefficients as speech features. Finally the system uses support vector machine to classify the facial expression features and vocalization respectively. By combining two types of classification results, the system gets the emotion of the infants.
    The number of experimental sequence is 100 with total length 100 minutes and the infants in these sequences are 1-7 months old. Each sequence only contains one emotion, while the average rate of infant emotions is 85.3%. As a result, the proposed system is robust and efficient.

    摘要 I Abstract II 誌謝 III 目錄 IV 圖目錄 VI 表目錄 IX 第一章 緒論 1 第一節 研究動機 1 第二節 研究困難 3 第三節 論文架構 4 第二章 文獻探討 5 第一節 情緒分類方法分析 5 第二節 情緒辨識技術之發展 7 第三章 嬰兒情緒辨識系統 14 第一節 系統目的 14 第二節 研究環境與設備 14 第三節 系統流程 15 第四章 嬰兒臉部偵測及表情分類 18 第一節 嬰兒臉部偵測 18 第二節 臉部特徵擷取 24 第三節 表情分類 31 第五章 嬰兒聲音分類及情緒分類 33 第一節 聲音特徵擷取 33 第二節 聲音分類 37 第三節 情緒分類 40 第六章 實驗結果 41 第一節 嬰兒臉部偵測準確度之分析 43 第二節 嬰兒臉部表情的分類結果與分析 50 第三節 嬰兒聲音的分類結果與分析 54 第四節 結合嬰兒臉部表情及聲音所分類的情緒結果與分析 59 第七章 結論與未來工作 66 第一節 結論 66 第二節 未來工作 66 參考文獻 68

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