使用机器学习的画布和WebGL的冒名顶替检测。

Manduti Sai Prathima, S. P. Milena, Pramila Rm
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引用次数: 0

摘要

身份验证提供了一种方法来确认用户试图访问托管在web上的任何受保护信息的合法性,因为组织正在在线移动其应用程序。长期以来,人们一直认为IP地址和cookie是最可靠的数字指纹,用于在线验证和跟踪人们。但过了一段时间,当现代网络技术允许感兴趣的组织使用新的方法来识别和跟踪用户时,事情就失控了。有许多新的可靠的数字指纹可以使用,如canvas和WebGL。画布和WebGL渲染图像依赖于系统的软件和硬件。在使用canvas和WebGL生成的哈希值时,我们使用KNN创建了一个模型来识别冒名顶替者。该模型在用户身份验证方面具有较高的准确性,准确率达到89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imposter detection with canvas and WebGL using Machine learning.
Authentication offers a way to confirm the legitimacy of a user attempting to access any protected information that is hosted on the web as organizations are moving their applications online. It has long been believed that IP addresses and Cookies are the most reliable digital fingerprints used to authenticate and track people online. But after a while, things got out of hand when modern web technologies allowed interested organizations to use new ways to identify and track users. There are many new reliable digital fingerprints that can be used such as canvas and WebGL. The canvas and WebGL render the image which is dependent on the software and hardware of the system. In our work with the generated hash value value from canvas and WebGL we create a model using KNN to identify the imposters. The model has proved to be accurate in authentication of user with an accuracy of 89%.
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