Deceiving computers in Reverse Turing Test through Deep Learning
- URL: http://arxiv.org/abs/2006.11373v1
- Date: Mon, 1 Jun 2020 10:11:42 GMT
- Title: Deceiving computers in Reverse Turing Test through Deep Learning
- Authors: Jimut Bahan Pal
- Abstract summary: Almost every website and service providers today have the process of checking whether their website is being crawled or not by automated bots.
The aim of this investigation is to check whether the use of a subset of commonly used CAPTCHAs, known as the text CAPTCHA is a reliable process for verifying their human customers.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: It is increasingly becoming difficult for human beings to work on their day
to day life without going through the process of reverse Turing test, where the
Computers tests the users to be humans or not. Almost every website and service
providers today have the process of checking whether their website is being
crawled or not by automated bots which could extract valuable information from
their site. In the process the bots are getting more intelligent by the use of
Deep Learning techniques to decipher those tests and gain unwanted automated
access to data while create nuisance by posting spam. Humans spend a
considerable amount of time almost every day when trying to decipher CAPTCHAs.
The aim of this investigation is to check whether the use of a subset of
commonly used CAPTCHAs, known as the text CAPTCHA is a reliable process for
verifying their human customers. We mainly focused on the preprocessing step
for every CAPTCHA which converts them in binary intensity and removes the
confusion as much as possible and developed various models to correctly label
as many CAPTCHAs as possible. We also suggested some ways to improve the
process of verifying the humans which makes it easy for humans to solve the
existing CAPTCHAs and difficult for bots to do the same.
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