Authors
Nhan Duy Truong, Jing Yan Haw, Syed Muhamad Assad, Ping Koy Lam, Omid Kavehei
Publication date
2018/6/26
Journal
IEEE Transactions on Information Forensics and Security
Volume
14
Issue
2
Pages
403-414
Publisher
IEEE
Description
Random number generators (RNGs) that are crucial for cryptographic applications have been the subject of adversarial attacks. These attacks exploit environmental information to predict generated random numbers that are supposed to be truly random and unpredictable. Though quantum random number generators (QRNGs) are based on the intrinsic indeterministic nature of quantum properties, the presence of classical noise in the measurement process compromises the integrity of a QRNG. In this paper, we develop a predictive machine learning (ML) analysis to investigate the impact of deterministic classical noise in different stages of an optical continuous variable QRNG. Our ML model successfully detects inherent correlations when the deterministic noise sources are prominent. After appropriate filtering and randomness extraction processes are introduced, our QRNG system, in turn, demonstrates its …
Total citations
20192020202120222023202435941910
Scholar articles
ND Truong, JY Haw, SM Assad, PK Lam, O Kavehei - IEEE Transactions on Information Forensics and …, 2018