Cost effective and reliable mobile solution for face recognition and authentication

N. Pradeesh, V. S. Sreejesh Kumar, Aswesh T. Anand, V. Geetha Lekshmy, Shivsubramani Krishnamoorthy, K. Bijlani
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引用次数: 2

Abstract

Attendance marking is a critical and time-consuming process in schools and colleges. Manual attendance marking is time consuming, so as attendance recording using biometrics. Attendance marking using face recognition is time saving when compared to conventional methods. Most of the existing face recognition systems which uses static cameras are expensive and have portability issues too. To overcome this above mentioned time and portability constraints we propose an attendance marking system based on face recognition. The proposed system implemented as an android application takes input from the smart phone camera to mark the attendance. It uses Facenet Resnet V1 [10] convolutional neural network which was introduced by Google Inc, for face recognition. The attendance will be recorded in a learning management system(LMS) which serves as a back end application for the android application. After face recognition we are saving the attendance in our internal LMS system automatically. As per our analysis, we have noticed that the system works perfectly in a controlled scenario of 3-meter distance using a mobile camera device with a minimum face size of 108 × 108(Height × Width). In this controlled scenario our proposed methods achieves an accuracy over 90%.
具有成本效益和可靠的移动解决方案的人脸识别和身份验证
在学校和大学里,考勤是一个关键而耗时的过程。人工考勤费时,采用生物识别技术进行考勤记录。与传统的考勤方式相比,人脸识别考勤更加省时。现有的大多数使用静态摄像头的人脸识别系统都很昂贵,而且还存在便携性问题。为了克服上述时间和可移植性的限制,我们提出了一种基于人脸识别的考勤系统。所提出的系统实现为android应用程序,从智能手机摄像头获取输入来标记出勤。它使用谷歌公司推出的Facenet Resnet V1[10]卷积神经网络进行人脸识别。考勤将被记录在学习管理系统(LMS)中,该系统作为android应用程序的后端应用程序。人脸识别后,我们将考勤自动保存在我们的内部LMS系统中。根据我们的分析,我们注意到该系统在3米距离的受控场景下工作完美,使用最小面部尺寸为108 × 108(高×宽)的移动相机设备。在这种受控情况下,我们提出的方法达到了90%以上的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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