Face recognition technologies are increasingly deployed in transport infrastructures to improve efficiency and security, but they raise significant privacy and data protection concerns. This study reviews how privacy-preserving face recognition techniques can address these challenges in real-world settings. Using a systematic literature review approach, the paper analyses research across technical, operational, and governance perspectives. The findings show that while advanced methods such as encryption, federated learning, and de-identification can reduce data exposure, they are rarely implemented in operational systems, which tend to prioritize performance and scalability. At the same time, governance-focused studies emphasize issues such as proportionality, accountability, and fundamental rights, often without clear links to technical solutions. Overall, the review highlights a fragmented landscape and a gap between research and practice, underscoring the need for integrated approaches that align privacy-preserving techniques with practical deployment constraints and regulatory requirements.
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Eva María Benito Sanz
Alba Gonzalo Gonzalo Primo
Gaurav Choudhary
Sensors
Technical University of Denmark
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Sanz et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69faa1eb04f884e66b5329f2 — DOI: https://doi.org/10.3390/s26092832