Author:
Wu Hao,Cao Yu,Wei Haiping,Tian Zhuang
Abstract
Abstract
In order to improve the recognition rate of multi-face image, this paper proposes a face image recognition method based on haar-like and Euclidean distance. First of all, the initial features of Haar are moved in the image and gradually enlarged, the pixel sum of the feature area is obtained quickly by using the integral graph. The Haar feature is obtained by calculating the difference between black and white pixels in the feature region, and the threshold of weak classifier is calculated. Then, the extracted facial feature data is trained and classified to form a cascade classifier for face detection. Finally, the face of the image to be detected is compared with the training samples by using Euclidean distance. The experimental results show that the time of one attendance is 5-10 seconds and the success rate of face recognition is 91.1%, which verifies the advantage of the algorithm in improving the efficiency of attendance.
Subject
General Physics and Astronomy
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1. 3D face recognition based on pose and expression invariant alignment;Naeem,2015
2. Robust real-time face detection Computer Vision, 2001;Viola,2001
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