基于人脸识别和图像增强技术的考勤管理系统

Shubhnoor Gill, N. Sharma, Chetan Gupta, Argha Samanta
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引用次数: 3

摘要

在过去的几十年里,学生的出勤都是通过纸质的方式进行的。这种方法的局限性众所周知,也很清楚,它耗时,容易出错,而且总是有代理出席的机会。当今实施的许多技术非常不可靠,效率也很低,比如生物识别技术和无线射频识别(RFID),在主要通过触摸传播的大流行中,这一点尤为重要。这显然为人脸特征检测和人脸识别领域提供了机会。我们提出了一种有效和时尚的解决方案,使用人脸识别技术,包括哈尔级联和局部二值模式直方图算法来标记出勤。该系统将识别单个或多个学生的面部,并将其与预定义的面部编码进行比较,从而将与会者的详细信息生成CSV文件。为了创建数据库,我们将使用图像增强技术。这个系统也可以用来解决假出勤和代理的问题。
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Attendance Management System Using Facial Recognition and Image Augmentation Technique
Over decades the attendance of students has been taken using methods involving paper. The limitations of this method are widely known and clearly understood, it is time-consuming, prone to errors and there is always a chance of proxy attendance. Many techniques that are implemented in today’s time are vastly unreliable and are majorly inefficient, like biometrics and Radio Frequency Identification (RFID), more importantly when there is a pandemic that majorly spreads via touch. This clearly presents an opportunity in the field of facial feature detection and face recognition. We propose an effective and modish solution to mark attendance using the face recognition technique including Haar Cascade and Local Binary Pattern Histogram algorithms. The system will recognize the face of an individual or multiple students and compare them with the predefined face encoding to make a CSV file of attendees with their details. To create the database we will use image augmentation techniques. This system can also be used to tackle the problem of fake attendance and proxies.
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