In recent years, biometric systems have become integral to authentication, access control, and identification. However, the sensitive nature of biometric data raises significant privacy concerns. Homomorphic Encryption (HE) has emerged as a promising solution, allowing computations on encrypted data without decryption, thus preserving privacy. This bibliometric survey provides a focused bibliometric analysis based on the Scopus dataset, highlighting the evolution and current state-of-the-art in HE techniques within the context of privacy-preserving biometrics. Key aspects explored include foundational principles, encryption schemes, biometric applications, and the patent landscape. The study analyzes 206 documents using bibliometric methods such as keyword co-occurrence networks, author co-citation analysis, thematic evolution, and Sankey diagrams. The findings highlight a notable increase in research and patent activity, with 30 publications and 12 patents in the past year alone, reflecting growing interest in the convergence of HE and biometrics. Emerging applications in Artificial Intelligence and Blockchain are identified, while potential future directions include healthcare, Industry 5.0, and the Metaverse. This survey offers valuable insights into current research trends, challenges, and future opportunities, contributing to the advancement of privacy-preserving technologies in biometric systems.
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