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BF2GAN: A Fused Federated Learning-Based Biometric Enabled Deep Learning Approach for Secure Medical Image Sharing in Cloud Environment.

April 27, 2026pubmed logopapers

Authors

Mohammed ZA,Rajeshwari D,Mohammed S,Sreelaxmi M

Affiliations (4)

  • Department of Information Technology, University of the Cumberlands, 6178 College Station Drive, Williamsburg, KY, 40769, USA. [email protected].
  • Department of Computer Science and Engineering, Sri Indu Institute of Engineering and Technology, Ranga Reddy, Sheriguda, Ibrahimpatnam, Telangana, India.
  • School of Computer Science, University of the Cumberlands, 6178 College Station Drive, Williamsburg, KY, 40769, USA.
  • Department of Computer Science and Engineering (Data Science), Sphoorthy Engineering College, Nadargul Village, Hyderabad, Telangana, 500112, India.

Abstract

Medical images contain sensitive and private health information of patients, which is crucial to be safeguarded from unauthorized access. Various encryption schemes are used for improving security; however, they are subject to adversaries associated with higher complexity, ineffective compression ratios, and slower responses in real time. Therefore, to address these limitations as well as to establish stronger security in medical image sharing, the research proposes a Biometric Fused Federated Generative Adversarial Network (BF2GAN) method. The federated learning (FL) concept is included in this research, which provides collaborative training while reducing the risks of gradient inversions. Moreover, the decentralized training strengthens data integrity and reduces the risk of data exposures. The biometric information is included for user verification and key generation, which assists in creating highly secure images that are difficult to decode without the correct keys. The method minimizes the reliance on key management algorithms and establishes a simplified encryption process that strengthens the overall system security. In the LUNA16 database, the BF2GAN achieves a significant performance in terms of 3.08 s encryption time, 0.975 structural similarity index measure, 0.82 Feature similarity index, 3.9 s decryption time, 58.38 decibels of peak signal-to-noise ratio, and minimum memory usage of 280.87 kilobytes, compared to the state-of-the-art methods.

Topics

Journal Article

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