Web Authentication Biometric 3D Animated CAPTCHA System Using Artificial Intelligence and Machine Learning Approach

N. Bora, Dinesh Chandra Jain
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引用次数: 2

Abstract

The internet and web security are integral aspects of our daily lives. Many commercial firms provide clients with internet services. For web access, it is assumed that only the genuine user, who is a human, will register. Yet automated hacking programs can also do registrations with fake data that consume a lot of bandwidth, slowing down or occasionally even shutting down websites, leading to Distributed denial-of-service (DDOS) attacks. Completely Automated Public Turing test to tell Computers and Human Apart (CAPTCHA) is the solution. Complex CAPTCHA is challenging for humans to recognize, but simple CAPTCHA is simple for AI to decipher. With the developments in neural networks and machine learning bots are mimicking humans and it is becoming difficult to distinguish humans and bots apart. This generated a need to think of some more innovative and novel CAPTCHA. Now, utilizing the same AIML approach to increase the efficacy of CAPTCHA and make it stronger against the bot attack. Biometric 3D Animated (B3DA) Algorithm proposed in this research is a novel approach based on the Face Detection AI algorithm along with handwritten 3D animated characters selected randomly to create a string which makes CAPTCHA simple that humans can identify but very difficult for bots. The test results have proven this to be a very robust CAPTCHA. The machine learning algorithm employed will keep on increasing the efficacy of this CAPTCHA each time the bot tries to break this.
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基于人工智能和机器学习的Web认证生物识别三维动画CAPTCHA系统
互联网和网络安全是我们日常生活中不可或缺的一部分。许多商业公司为客户提供互联网服务。对于web访问,假设只有真正的用户(即人类)才会注册。然而,自动黑客程序也可以使用虚假数据进行注册,这会消耗大量带宽,减慢甚至偶尔关闭网站,从而导致分布式拒绝服务(DDOS)攻击。完全自动化的公共图灵测试来区分计算机和人类(CAPTCHA)是解决方案。复杂的验证码对人类来说很难识别,但简单的验证码对人工智能来说很容易破译。随着神经网络和机器学习的发展,机器人正在模仿人类,很难区分人类和机器人。这就需要考虑一些更具创新性和新颖的验证码。现在,利用相同的AIML方法来提高CAPTCHA的有效性,并使其更强大地抵御bot攻击。本研究提出的生物识别3D动画(B3DA)算法是一种基于人脸检测人工智能算法和随机选择的手写3D动画字符创建字符串的新方法,该字符串使得CAPTCHA简单,人类可以识别,但机器人很难识别。测试结果证明这是一个非常健壮的验证码。每次机器人试图破解CAPTCHA时,所采用的机器学习算法都会不断提高其有效性。
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