An Effective Card Scanning Framework for User Authentication System

Hania Arif, A. Javed
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Abstract

Exponential growth of fake ID cards generation leads to increased tendency of forgery with severe security and privacy threats. University ID cards are used to authenticate actual employees and students of the university. Manual examination of ID cards is a laborious activity, therefore, in this paper, we propose an effective automated method for employee/student authentication based on analyzing the cards. Additionally, our method also identifies the department of concerned employee/student. For this purpose, we employ different image enhancement and morphological operators to improve the appearance of input image better suitable for recognition. More specifically, we employ median filtering to remove noise from the given input image. Next, we apply the histogram equalization to enhance the contrast of the image. We employ Canny edge detector to detect the edges from this equalized image. The resultant edge image contains the broken characters. To fill these gaps, we apply the dilation operator that increases the thickness of the characters. Dilation fills the broken characters, however, also add extra thickness that is then removed through applying the morphological thinning. Finally, dilation and thinning are applied in combination to Optical character recognition (OCR) to segment and recognize the characters including the name, ID, and department of the employee/student. Finally, after the OCR application on the morphed image, we obtain the name, ID, and department of the employee/student. If the concerned credentials of the employee/student are matched with his/her department, then access of the door is granted to that employee/student. Experimental results illustrate the effectiveness of the proposed method.
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一种用于用户认证系统的有效的卡片扫描框架
假身份证数量呈指数级增长,导致伪造趋势增加,对安全和隐私构成严重威胁。学生证用于认证学校的实际员工和学生。因此,在本文中,我们提出了一种基于卡片分析的有效的自动化员工/学生身份验证方法。此外,我们的方法还确定了相关员工/学生的部门。为此,我们采用不同的图像增强和形态学算子来改善输入图像的外观,使其更适合识别。更具体地说,我们使用中值滤波从给定的输入图像中去除噪声。接下来,我们应用直方图均衡化来增强图像的对比度。我们使用Canny边缘检测器从均衡后的图像中检测边缘。生成的边缘图像包含破碎的字符。为了填补这些空白,我们应用扩展算子来增加字符的厚度。然而,膨胀填充了破碎的字符,也增加了额外的厚度,然后通过应用形态变薄去除。最后,将扩展和细化结合到光学字符识别(OCR)中,对员工/学生的姓名、ID和部门等字符进行分割和识别。最后,在对变形后的图像进行OCR应用程序之后,我们获得了员工/学生的姓名、ID和部门。如果员工/学生的相关凭证与他/她的部门相匹配,那么该员工/学生就可以进入该门。实验结果表明了该方法的有效性。
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