2020
DOI: 10.1007/978-981-15-7394-1_26
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Survey on Captcha Recognition Using Deep Learning

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Cited by 3 publications
(3 citation statements)
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“…Typically, image-selection CAPTCHA instances are ASIRRA CAPTCHA, Facebook CAPTCHA and Google CAPTCHA, IMAGINATION [ 12 ], FR-CAPTCHA [ 13 ], ARTiFACIAL CAPTCHA [ 14 ], etc. To classify these images, the most widely used and effective methods for cracking image-based CAPTCHAs have been to train neural networks, with outstanding research by Cheung [ 15 ], Sivakorn et al [ 16 ], Zhu et al [ 17 ], Gao et al [ 18 ], Li [ 19 ], Srivastava et al [ 20 ], Fatmah et al [ 21 ], etc. Mouse-based CAPTCHAs require users to drag an image fragment back to its original location or adjust an image’s orientation, such as: What’s up CAPTCHA [ 22 ], Capy CAPTCHA [ 23 ], and Geetest CAPTCHA [ 24 ].…”
Section: Related Workmentioning
confidence: 99%
See 1 more Smart Citation
“…Typically, image-selection CAPTCHA instances are ASIRRA CAPTCHA, Facebook CAPTCHA and Google CAPTCHA, IMAGINATION [ 12 ], FR-CAPTCHA [ 13 ], ARTiFACIAL CAPTCHA [ 14 ], etc. To classify these images, the most widely used and effective methods for cracking image-based CAPTCHAs have been to train neural networks, with outstanding research by Cheung [ 15 ], Sivakorn et al [ 16 ], Zhu et al [ 17 ], Gao et al [ 18 ], Li [ 19 ], Srivastava et al [ 20 ], Fatmah et al [ 21 ], etc. Mouse-based CAPTCHAs require users to drag an image fragment back to its original location or adjust an image’s orientation, such as: What’s up CAPTCHA [ 22 ], Capy CAPTCHA [ 23 ], and Geetest CAPTCHA [ 24 ].…”
Section: Related Workmentioning
confidence: 99%
“…This model took first and second places in the 2014 ILSVRC challenge. ResNet, which stands for Residual Network, is a type of CNN introduced in 2015 by He Kaiming et al [ 20 ]. ResNet-101 has 101 layers and was created using convolution neural networks and residual blocks.…”
Section: Applied Techniquesmentioning
confidence: 99%
“…It asks users to select images matching a category or label provided in the challenge instruction to verify that they are humans and not bots. For a more extensive review, see Chen et al (2017), Kaur and Behal (2014), Sinha andTarar (2016), Srivastava, Sakshi, Dutta, andNingthoujam (2021) and Tiwari (2018).…”
Section: Breaking Captchasmentioning
confidence: 99%