A Biometric Key-Enhanced Multimedia Encryption Algorithm for Social Media Blockchain

Author:

Liu Tao1ORCID,Yu Zhongyang2ORCID

Affiliation:

1. School of Business Administration, Faculty of Economics and Management, East China Normal University, Shanghai 200241, P. R. China

2. Shanghai Vonechain Information Technology Company Ltd., Shanghai 200443, P. R. China

Abstract

Social media blockchain is emerging as a promising solution to deal with privacy issues, by putting user privacy in edge nodes rather than centralized nodes. Under the protection of information encryption, only those who have cryptographic keys can get access to key information. This work aims at multimedia information in social media blockchain and utilizes the RSA encryption mechanism to construct the information encryption system. Due to the resilience of biometric features, the biometric cryptographic keys are not easy to be fabricated. Thus, this paper proposes a biometric keys-enhanced multimedia encryption algorithm for social media blockchain. First of all, the wiener filter is adopted to make some preprocessing operations to images, such as noise reduction. On this basis, the discrete wavelet transform is adopted to extract feature representation from images, and nonlinear approximation of contourlet transform is adopted to make feature fusion. Next, cryptographic keys can be generated from the fused biometric feature vectors to encrypt biometric data. Finally, some simulation experiments are conducted to evaluate performance of the proposal from three aspects: key generation time, security level and encryption-decryption time complexity. For key generation time, processing speed of the proposal is approximately 1–2[Formula: see text]ms per sample. For security level, the proposal can reach an index value beyond 95% which is higher than comparison methods. For encryption-decryption time complexity, the proposal is about 30% lower than comparison methods.

Funder

East China Normal University

Publisher

World Scientific Pub Co Pte Ltd

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