Face Mask detection with fine rate
نویسندگان
چکیده
منابع مشابه
Face Detection Using Template Face Mask
In today’s world, the importance of biometric studies is increasing day by day. Biometric face recognition study is the most widely used method in the legal environment. Commonly, face images are used in all identification systems(IDs, driver’s license, passport, etc.). In particular, to improve the social security of city life, automatic face detection and face recognition systems are needed. ...
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Cephalometric evaluation of patients with Class III malocclusion after face mask therapy in mixed dentition period Dr. MS. A Akhoundi * - Dr. A. Khorshidian ** * Associate Professor of Orthodontics Dept., Faculty of Dentistry and Dental Research Center, Tehran University of Medical Sciences. ** Dentist. Abstract Background and Aim: Among different treatment options for patients with Class III m...
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In today’s world, importance of biometric studies is increasing day by day. Biometric face recognition study is the most widely used method in the legal environment. Commonly, face image uses in all identification (IDs, driver’s license, passport, etc.). In particularly, to improve the social security of city life, automatic face detection and face recognition systems are needed and there is a ...
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A method for ne skin and face detection is described that starts from a coarse color segmentation. Some regions represent parts of human skin and are selected by minimizing an error between the color distribution of each region and the output of a compression decompression neural network, which learns skin color distribution for several populations of di erent ethnicity. This ANN is used to nd ...
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Face detection technique recognition is developed by using and fine tuning the Gabor Wavelet parameters. An extensive study of these parameters have been made and checked on a large acquired data set of face images, for extracting the features. The Facial data consists of 320 frontal face 180 non-face images. (Total=500 images) Artificial Neural Network is then used on the extracted features fo...
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ژورنال
عنوان ژورنال: IOP Conference Series: Materials Science and Engineering
سال: 2021
ISSN: 1757-8981,1757-899X
DOI: 10.1088/1757-899x/1145/1/012047