Design and Implementation on EMBA Authentication models

Indrajit Das, Shalini Singh, Ria Das, S. Biswas, Sanjoy Roy, Sonali Gupta
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引用次数: 1

Abstract

Authentication systems in general have faced long-term security deficit despite convoluted sophistication within various systems for decades. Unfortunately, humans serve as the weakest prey for exploitation within any security chain. Unskillful and inefficient communications between systems and humans give rise to multiple vulnerabilities related to any security model. Additionally, the Passwords/Personal Identification Numbers (PIN’s) fail to provide idealistic security due to the lack of flawlessness in traditional password systems. On the contrary, since eye movements serve as a natural interaction modality, it was observed that the amalgamation of eye-tracking models enhances the overall security. In this context, the work presented in this paper leads to an extensive study and survey of many research works pertaining to existing Eye Movement authentication models. Besides, high-level overview of many conventional authentication methodologies have been discussed that can be launched in such EMBA models. Additionally, comparative analysis and performance metrics of different EMBA system is discussed. It was observed that the eye-password method has highest accuracy (97%) and eye motion based techniques has lowest accuracy (60%). Finally, an eye pupil tracking based authentication model has been proposed with accuracy of Eye detection, Eye open or closed detection and Eye pupil tracking detection are 98%, 92.51% and 96.25% respectively.
EMBA认证模型的设计与实现
尽管几十年来各种系统的复杂性错综复杂,但身份验证系统总体上面临着长期的安全缺陷。不幸的是,在任何安全链中,人类都是最脆弱的猎物。系统和人员之间不熟练和低效的通信会导致与任何安全模型相关的多个漏洞。此外,由于传统密码系统缺乏完美性,密码/个人识别号码(PIN 's)无法提供理想的安全性。相反,由于眼动是一种自然的交互方式,因此观察到眼动追踪模型的合并增强了整体安全性。在此背景下,本文提出的工作导致了对许多与现有眼动认证模型相关的研究工作的广泛研究和调查。此外,还对可以在此类EMBA模型中启动的许多传统身份验证方法进行了高级概述。此外,还讨论了不同EMBA系统的比较分析和性能指标。观察到,眼密码法的准确率最高(97%),而基于眼动的技术的准确率最低(60%)。最后,提出了一种基于瞳孔跟踪的认证模型,其眼睛检测、睁眼或闭眼检测和瞳孔跟踪检测的准确率分别为98%、92.51%和96.25%。
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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