A comprehensive study on enhanced QR extraction techniques with deep learning-based verification


연구 분야: Verification



학회: Applied Intelligence


초록

In the digital age, Quick Response (QR) codes have become essential in sectors such as digital payments and ticketing, propelled by advancements in Internet of Things (IoT) and deep learning. Despite their growing use, there are significant challenges in the accurate extraction and verification of QR codes, particularly in dynamic environments. Traditional methods struggle with issues like variable lighting, complex backgrounds, and counterfeits, which degrade the performance of QR code extraction and verification processes. This paper introduces a comprehensive approach that refines QR code extraction using enhanced adaptive thresholding techniques and incorporates a deep learning framework specifically tailored for robust QR code verification. Our methodology integrates dynamic window size adjustment, statistical weighting, and post-thresholding refinement to ensure precise QR code extraction under varying conditions. The verification process employs the ShuffleNetV2 network to ensure high performance with significantly low processing times suitable for real-time applications. Additionally, our deep learning model is trained on a comprehensive dataset comprising 28,523 images across 24 distinct QR code pattern classes, including variations in lighting, noise, and backgrounds to simulate real-world conditions. Experimental results demonstrate that our proposed methodology outperforms competing techniques in both processing speed and recognition accuracy, achieving a processing time of 0.08 seconds and a validation accuracy of 99.99% in constrained scenarios. Our approach shows an exceptional ability to distinguish real QR codes from counterfeits and highlights the significance and efficacy of our method in addressing contemporary challenges.


Author Profile
Nur Alam

Department of Computer Science and Engineering Sejong University Seoul 05006 Republic of Korea

Andorra
Author Profile
A S M Sharifuzzaman Sagar

Department of Intelligent Mechatronics Engineering Sejong University Seoul 05006 Republic of Korea

Korea
Author Profile
Wenqi Zhang

Department of Computer Science and Engineering Sejong University Seoul 05006 Republic of Korea

Andorra

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 Namibia, Andorra, Korea
사이트 Springer
좋아요 수 0

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