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研究生: 郭明翰
ming han kuo
論文名稱: 階梯教室之學生上課動作分析系統
Students' gesture analysis system in a lecture theatre
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: 2010
畢業學年度: 98
語文別: 中文
論文頁數: 65
中文關鍵詞: 動作辨識階梯教室region gorwingobject segmentation
論文種類: 學術論文
相關次數: 點閱:66下載:5
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  • 本篇論文主要探討階梯教室學生上課動作分析系統。動作分析在教育領域尤其重要,老師可藉由觀察學生的動作知道學生的學習狀況。例如學生舉手,老師可對學生不懂的部份加以說明,提高學生的學習效率。
    本研究將攝影機架設在階梯教室前面以擷取學生上課影像。系統先定位教室椅背高度線,並取出影像前景顏色。藉由motion與前景顏色資訊整合判斷出影像前景點。接著利用影像前景點為種子進行region growing,並將擴展出的regions利用region combination演算法定位學生物件。本系統使用學生物件的組成關係變化辨識六種動作,分別為舉右手、舉左手、舉雙手、趴下、站立與正常坐姿。實驗結果顯示提出方法可以解決一些環境的問題,並對實驗遇到其他問題有分析與討論。
    最後本研究還有能改進的部份,未來希望能整合其他資訊或者更適合的方法讓本研究更完整。

    This paper presents a students’ gestures recognition system in a theater classroom. Gesture recognition is important in many fields, especially in education field. Teacher can know students’ situation by observing their gestures in class. For example, students raise their hands may have question in class, so teacher can explain that make students clear in problem.
    In this study the PTZ camera is set in front of the classroom to capture the student sequence. The system first preprocess the input image to locate the main line and extract foreground color. Then system combine motion and foreground color to judge foreground pixels. System use these foreground pixels as seeds to do region growing. Then system apply region combination algorithm to do object segmentation. Six student gesture, including different gesture of raising the right hand, raising the left hand, raising two hands, lining prone, standing up and normal, are classified by the relationship of objects. The experimental results show that the proposed method can solve some experimental situation problem, and the other problem also analyzed and discussed.
    Finally, the study have some part can be improved. In the future year, I hope that better technology and information can added to this system in order to make the research more complete.

    目錄 第一章 簡介 1.1序論--------------------------------------1-1 1.2研究困難----------------------------------1-2 1.3文獻探討----------------------------------1-3 1.4論文架構----------------------------------1-5 第二章 系統架構 2.1系統架設環--------------------------------2-1 2.2系統流程----------------------------------2-2 第三章 影像前處理 3.1 Motion偵測-------------------------------3-1 3.2影像前景點判斷----------------------------3-2 3.3椅背高度線定位----------------------------3-6 第四章 候選物件的組成 4.1 Region growing --------------------------4-1 4.2 Region combination-------------------------------------4-4 第五章 學生物件擷取與動作分析 5.1學生物件擷取-----------------------------5-1 5.2學生動作分析-----------------------------5-2 第六章 實驗結果 6.1學生動作辨識實驗結果---------------------6-1 6.2實驗結果討論-----------------------------6-13 第七章 結論與未來工作 7.1結論--------------------------------------7-1 7.2未來工作----------------------------------7-2 參考文獻-------------------------------------------------A-1

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