CAPTCHAs recognition based on the central region of the convolutional feature map
ID:35 View Protection:ATTENDEE Updated Time:2024-08-05 15:28:10 Hits:1465 Oral Presentation

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Abstract
CAPTCHA (Completely Automated Public Turing Test to Tell Computers and Humans Apart) is a crucial human-machine distinction tool that websites employ to thwart automated malicious program attacks. Investigating CAPTCHA recognition can reveal weaknesses in CAPTCHA systems. By leveraging deep learning and computer vision techniques, the very purpose of CAPTCHAs can be circumvented. A Deep Convolutional Neural Network model is employed to identify CAPTCHAs, eliminating the need for traditional image processing techniques such as location and segmentation. Our research proposes a CAPTCHA recognition system focusing on the central area of feature maps using the DCNN model, which we customized and combined with the attention mechanism. This approach helps distill the character information that needs to be learned during training in the complex context of CAPTCHAs with lots of noise. The experimental findings illustrate that our model has exceptional identification capabilities on CAPTCHAs that contain background noise and character adhesion distortion. It achieves excellent accuracy and a low character mistake rate across several datasets.
Keywords
CAPTCHA recognition,deep convolutional neural network,security,deep learning,attention mechanism
Speaker
Viet Tran Quoc
Student Ho Chi Minh City Open University

Submission Author
Duy Nguyen FPT University
Viet Tran Quoc Ho Chi Minh City Open University
Trung Nguyen Quoc FPT University
Truong Hoang Vinh Ho Chi Minh City Open University
Tuan Le-Viet Ho Chi Minh City Open University
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Important Date
  • Conference Date

    Oct 24

    2024

    to

    Oct 27

    2024

  • Oct 14 2024

    Draft paper submission deadline

  • Oct 29 2024

    Registration deadline

  • Oct 31 2024

    Contribution Submission Deadline

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United Societies of Science
King Mongkut's University of Technology North Bangkok (KMUTNB)
IEEE Thailand Section
IEEE Thailand Section C Chapter
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