基于机器学习的虹膜识别现代投票系统

Aparna D K, Dharshini V S, Rajeshkumar G, Mohana Priya D, P. Balasubrarnanie, S. Hamsanandhini
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引用次数: 1

摘要

传统上使用纸质选票或基于直接反应电子(DRE)或相同投票箱的电子投票机(EVM)进行投票。本研究提出了一种基于机器学习算法的数字投票系统,利用虹膜识别来解决当前投票过程中的缺陷,以解决传统投票系统的缺陷。一个名为“基于虹膜识别的投票系统”的程序根据人们眼睛的虹膜模式来识别他们。虹膜识别是一种自动生物识别技术,通过分析个人单侧或双侧虹膜的视频证据,识别出清晰、稳定且从远处可见的复杂模式。一个选民只能投一张票,而该技术禁止同一个人投多张票,因为它可以发现重复的条目。此外,该技术不需要用户携带具有相关信息的选民身份证,因为Aadhar与选民身份证结合在一起,从而通过对每个用户的Aadhar卡中可用的生物特征和虹膜模式进行数字验证来增强数字化。在投票地点,一个简单的虹膜扫描将允许收集选民的虹膜并用作身份证明。虹膜识别过程包括图像采集、虹膜分割、特征提取和模式匹配四个步骤。虹膜识别具有较高的识别率,是最值得信赖的生物识别方式之一。因此,该系统消除了传统投票系统的主要缺点,并通过融入现代转型来增强数字投票。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Iris Recognition Modern Voting System
A paper ballot or an Electronic Voting Machine (EVM) based on Direct Response Electronic (DRE) or Identical Ballot Boxes have traditionally been used for voting. This study recommends a digital voting system based on Machine Learning algorithm that uses Iris recognition to address the flaws in the current voting process in order to fix the traditional voting system's flaws. A program called the Iris recognition-based Voting System identifies people based on the iris pattern of their eyes. Iris recognition is an automated biometric identification technology that analyses video evidence of one or both of an individual's iris to identify complex patterns that are distinct, stable, and visible from a distance. A voter may only cast one ballot, where the proposed technology prohibits multiple votes from the same person because it can spot duplicate entries. Additionally, this technique does away with the need for the user to carry a voter ID that has the relevant information since the Aadhar is incorporated with the voter ID thus enhancing the digitalization by means of digital verification of biometric and iris pattern available in Aadhar card of every user. At the voting venue, a simple iris scan will allow the voter's iris to be collected and used as identification. The iris recognition process consists of the following four steps: image acquisition, iris segmentation, feature extraction, and pattern matching. Iris recognition is one of the most trustworthy biometric modalities due to its high identification rate. Thereby this system eliminates the major drawbacks of traditional voting systems and enhances the digital voting by incorporating the modern transformation.
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