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Human Face Identification using LBP and Haar-like Features for Real Time Attendance Monitoring

机译:人类脸识别使用LBP和Laar的特征进行实时考勤监测

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Real time attendance monitoring is the essential requirement in modern era to improve the work efficiency for all private and public organization. There happens to be a number of methods to monitor the attendance of student or employee signature based method and biometric based methods like fingerprint, palm scanning, iris and voice recognition etc. One same of those, these biometrics are not much effective for person identification due to several reasons as they involves one's physical interaction during registration and testing process. Many times wet or oily skins and contact lens can therefore be the responsible cause for no detection or false/fake detection. This paper suggest a robust technique of attendance monitoring using face identification. The method proposed here for person identification in real time involves face detection approach through Haar-like features with cascade classifier. The face recognition is done using Local binary pattern histogram. Results derived for face identification of each individual are found to have 81.6 percent accuracy.
机译:实时出勤监测是现代时代的基本要求,以提高所有私营和公共组织的工作效率。恰好存在许多方法来监控基于学生或员工签名的方法和基于生物识别的方法,如指纹,手掌扫描,虹膜和语音识别等。这些生物识别对人的识别并不多有效由于它们涉及在注册和测试过程中涉及一个人的物理交互的原因。因此,许多次潮湿或油性皮肤和隐形眼镜可以是无检测或假/假检测的负责任的原因。本文建议使用面部识别的稳健考勤监控技术。这里提出的方法实时识别的方法涉及通过具有级联分类器的类似哈尔的特征来面对检测方法。面部识别是使用局部二进制模式直方图完成的。发现针对每个人的面部识别的结果具有81.6%的精度。

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