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  • 學位論文

基於HOG特徵具抗光照與旋轉的臉部辨識系統之研製

Development of an illumination- and rotation-resilient face recognition system based on HOG features

指導教授 : 鐘太郎
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摘要


人臉辨識為樣形識別發展的一個重要應用,目前,人臉辨識技術已廣泛的運用在我們日常生活中,例如:機場的快速通關系統,門禁系統等等。 人臉辨識系統容易受到角度、光照與表情變化的影響而降低系統辨識率,所以如何處理這些問題,提高辨識率,即是人臉辨識技術的重要挑戰。 人臉辨識主要分為人臉偵測、影像前處理、特徵抽取與特徵比對四個步驟,梯度方向直方圖(Histogram of oriented Gradients,簡稱HOGs)特徵能夠優異地擷取人臉的邊緣與輪廓資訊,與對光照影響具有良好的抵抗性,故我們採用HOG為人臉辨識系統的特徵。單純使用HOG特徵時,若人臉圖片發生旋轉偏移,則會導致辨識率下降,故本論文在影像前處理時加入旋轉偏移校正的功能,以改善人臉角度旋轉對系統辨識率的影響。 本論文使用兩個人臉資料庫進行實驗分析,分別是PIE與FETET人臉資料庫,在FERET人臉資料庫的實驗將與Albiol et al.論文[15]進行比較,探討HOG特徵中各個參數對辨識率的影響;而在其他實驗也將探討人臉旋轉角度、光照與表情變化對系統辨識率FAR與FRR的影響。 最後的實驗結果顯示,我們所提出的前處理方法能夠有效地改善使用HOG特徵時的系統辨識率。

並列摘要


Face recognition is an important application in the field of pattern recognition. Face recognition technology is commonly used in our daily life, such as e-Gate, access control system, etc. The recognition rate will drop considerably when the head pose or illumination variation is too large, or when there is expression on the face. The greatest challenge is how to get over these difficulties. Face recognition can be divided into the following four steps: face detection, image preprocessing, feature extraction, and feature matching. Histogram of oriented Gradients (HOGs) feature is an effective descriptor for the contour of the face, and robust to illumination effect. So we choose HOG to be the feature in our system. In order to compensate for errors in facial recognition due to rotation changes, we proposed a rotation detection and correction method based on eye-location. Two human face databases, namely FERET database and CMU PIE, are used in our experiments to show the recognition performance of our proposed method and system. In the FERET database experiment, it is found that the rotation degrades the recognition rate drastically, using only HOG feature and subjecting to illumination and facial expression variations. But with the proposed rotation correction preprocessing, the recognition rate of our method is improved over that of the paper [15]. This improvement is also observed in the experiments on CMU PIE database where both EER and FRR/FAR are improved with the proposed rotation correction preprocessing and HOG features under illumination and facial expression variations. Finally, a PC/NB-webcam based face recognition system using the proposed rotation correction preprocessing and HOG features and the combined FERET and PIE face databases is implemented. Some experiments show the rotation and illumination resilient property of our proposed system.

並列關鍵字

HOG face recognition

參考文獻


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