Multiview deep learning-based attack to break text-CAPTCHAs

被引:0
|
作者
Mukhtar Opeyemi Yusuf
Divya Srivastava
Deepak Singh
Vijaypal Singh Rathor
机构
[1] Bennett University,Department of Computer Science and Engineering
[2] National Institute of Technology,Department of Computer Science and Engineering
[3] PDPM Indian Institute of Information Technology,undefined
[4] Design and Manufacturing,undefined
关键词
CAPTCHA; Multiview learning classification; Multiview integration; Security and privacy; Discriminative features; Connectionist temporal classification;
D O I
暂无
中图分类号
学科分类号
摘要
Completely Automated Public Turing Test To Tell Computer and Humans Apart (CAPTCHA) is a computer program that prevents malicious computer users. Text-CAPTCHA schemes utilize less-computational costs. Hence, they are the most popularly used. This paper investigates the effectiveness of state-of-the-art (SOTA) text-CAPTCHA schemes, proposes a Multiview deep learning system to break them, and highlights their weaknesses. Rather than the usual single-view feature extraction, the proposed model explores correlational features from multiple views to increase the model’s generalization and classification accuracy. The model combines convolutional neural networks and recurrent networks to preserve the input text-CAPTCHA’s spatial and sequential order. The proposed system has successfully achieved average accuracies ranging from 93.6% to 100%, and the average time to break a text-CAPTCHA scheme ranges from 0.0032 to 0.21 seconds on eight different datasets. Furthermore, an ablation study on 71 human users was conducted to evaluate the effectiveness of the schemes. The results demonstrated that the proposed system effectively outperforms the human users whom the schemes were designed to serve. Lastly, when compared with existing systems, the proposed system outperforms existing SOTA systems with an accuracy gap of almost 40% higher.
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页码:959 / 972
页数:13
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