基于暹罗神经网络的“通行”系统构建

Jason Mahalim, Aminuddin Rizal
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引用次数: 0

摘要

安全是我们生活中的一个重要方面。这个世界上几乎所有的小工具和网站都使用一些安全措施,比如密码和密码。每一种安全措施都存在一定的安全漏洞,并且有许多黑客攻击该安全措施的方法。为了解决这些问题,“密码”系统是一种基于记忆技术的图形密码系统。“Passwle”系统使用Python 3.7.10版本作为编程语言,使用Siamese Neural Network进行训练和预测过程,使用Omniglot Dataset作为数据集。前端使用Node.js提供用户界面并与后端通信,后端使用Flask框架提供API和预测图像,谷歌协作实验室使用该图像作为密码,谷歌驱动器用于数据库。经过测试,“Passwle”系统目前还不能作为现有安全措施的替代方案,因为登录和注册的过程时间明显长于传统安全措施,注册平均时间为4.35秒,登录平均时间为18.88秒,并且用户端安全存在一些重大漏洞,社会工程攻击和系统端安全漏洞的成功率为92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building “Passwle” System Based on Siamese Neural Network
Security is one of the important aspect in our life. Almost every gadgets and websites in this world use some security measure like password and passcode. with every security measure there are some security fault and many hacking method to attack said security measure. To answer those problem “Passwle” system which is a Graphical Password with recall-based technique is created. “Passwle” system created by using Python version 3.7.10 as the programming language with Siamese Neural Network for training and prediction process and using Omniglot Dataset as the dataset. For the frontend, Node.js is used to deliver the User Interface and communicate with the backend, backend side use Flask Framework to provide the API and predicting the image that used as password in Google Colaboratory and Google Drive is used for the database. After some testing, “Passwle” system currently can not be used as an alternative to the current security measure, because the process time for sign in and sign up is significantly longer than conventional security measure which take average 4.35 seconds for sign up and 18.88 seconds for sign in process and there are some major flaw in the user-side security which have 92% success rate for Social engineering attack and system-side security flaw.
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