Automated CAPTCHA Generation from Annotated Images Using Encoder Decoder Architecture

Madhura Das, A. Naresh, A. Narang, Anantharaman Narayana, R. Jayashree
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引用次数: 4

Abstract

A CAPTCHA (Completely Automated Public Turing test to tell Computers and Humans Apart) is a program that protects websites from bots by generating and grading assessments that humans can pass but current computer programs cannot. CAPTCHAs provide security from bots in applications such as preventing comment spam in blogs, protecting website registrations etc. Recent breakthroughs in Artificial Intelligence (AI) have led to development of systems which can crack current image based CAPTCHAs with over 90% accuracy. This necessitates the need for new types of image based CAPTCHA which would be plausible for a human to solve it, and, at the same time, pose a challenge for a bot to break the CAPTCHA. To this end, the paper proposes a novel type of image based CAPTCHA where the user is presented with a set of images and a multiple answer based question based on the contents of the image-set. The question generated is such that a human is able to answer the question easily, whereas a bot would have to delve into the intricacies of image recognition, natural language processing on the question and then perform a knowledge correlation with the options to crack the CAPTCHA which is a rather tedious task to achieve. The novelty in the CAPTCHA presented can be expressed in terms of the CAPTCHA type itself as well as the deep learning architecture employed to synthesize the CAPTCHA. The proposed CAPTCHA generation system uses an Encoder Decoder architecture whose basic building block is a Gated Recurrent Unit (GRU) - a type of Recurrent Neural Network (RNN). The proposed system also facilitates a dynamic CAPTCHA generation mechanism eliminating the need to store a mapping between the images and questions.
使用编码器解码器架构从注释图像自动生成CAPTCHA
CAPTCHA(区分计算机和人类的完全自动化公共图灵测试)是一种程序,它通过生成和评分评估来保护网站免受机器人的攻击,这些评估人类可以通过,但目前的计算机程序无法通过。captcha在应用程序中提供安全性,例如防止博客中的评论垃圾邮件,保护网站注册等。人工智能(AI)的最新突破导致了系统的发展,该系统可以以90%以上的准确率破解当前基于图像的captcha。这就需要一种新型的基于图像的验证码,这种验证码对人类来说是合理的,同时也给机器人打破验证码带来了挑战。为此,本文提出了一种新型的基于图像的CAPTCHA,其中向用户提供一组图像和基于图像集内容的基于多个答案的问题。生成的问题使人类能够轻松地回答问题,而机器人必须深入研究图像识别的复杂性,对问题进行自然语言处理,然后执行与破解CAPTCHA选项的知识关联,这是一项相当繁琐的任务。所提出的验证码的新颖性可以通过验证码类型本身以及用于合成验证码的深度学习架构来表达。提出的验证码生成系统使用编码器-解码器架构,其基本构建块是门控循环单元(GRU) -一种循环神经网络(RNN)。该系统还促进了动态CAPTCHA生成机制,消除了存储图像和问题之间映射的需要。
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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