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Security of facial biometric authentication for attendance system

机译:考勤系统面部生物识别认证的安全性

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摘要

Face image processing has become one of the fields of computer vision in processing computerized image patterns; the face becomes one of the vital biometrics that stores essential information used in predicting the characteristics of a person. Biometric techniques with facial recognition systems are now required in various fields, including business, one of which is the attendance marking system that is a crucial repetitive transaction requirement because it relates to employee productivity. In terms of ethics, attendance recording using a person's face has many benefits; one of them is removing the necessity to make direct contact with the scanning device. Before doing face recognition, one of the preprocessing stages is face detection as an effort to find the existence of a face image consisting of eyes, nose, mouth, and other facial features. This research employed Viola-Jones method for face detection, Gabor Wavelet for feature extraction, and Template Matching. Two scenarios are applied for attendance recording, individual face recording, and group face recording where several faces are captured simultaneously, and each face is extracted and recognized. For Individual attendance recognition, this research achieved an accuracy of 75%, recall 64%, and precision of 88%. The better result is shown on simultaneous/group face recognition, and the research achieved 88% accuracy, 75% of recall, and 97% of the precision score.
机译:面部图像处理已成为处理计算机化图像模式的计算机视野之一;面部成为重要的生物识别方法之一,存储用于预测人的特征的必要信息。现在需要具有面部识别系统的生物识别技术,包括业务,其中一个是一个重要的标记系统,这是一个重要的重复事务要求,因为它涉及员工的生产力。在道德方面,使用一个人面临的出勤记录有很多好处;其中一个是消除必需品,可以直接接触扫描装置。在进行面部识别之前,其中一个预处理阶段是面部检测,作为寻找由眼睛,鼻子,嘴巴和其他面部特征组成的面部图像的存在的努力。本研究采用了患者jones方法,用于面部检测,特征提取的Gabor小波和模板匹配。两种情况用于出勤记录,单个面部记录和组面录制,其中几个面是同时捕获的,并且每个面被提取和识别。对于个别出勤识识,该研究达到了75%的准确性,召回了64%,精度为88%。较好的结果显示在同时/群体面部识别上,研究达到了88%的准确度,75%的召回,占精度得分的97%。

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