Litcius/Paper detail

A Review on Privacy-Preserving Techniques for Spatiotemporal Data

Shadwa AbuElHassan, Alshaimaa Abo‐alian, Tamer Abdelkader, Nagwa Badr

2025International Journal of Data Science and Analytics6 citationsDOIOpen Access PDF

Abstract

Abstract The rapid proliferation of spatiotemporal data—originating from GPS-enabled devices, sensor networks, IoT ecosystems, and social media platforms—has raised critical privacy concerns. Protecting sensitive information while preserving data utility is increasingly becoming a central research challenge. Although existing surveys have addressed privacy-preserving methods, many lack systematic methodological frameworks, rigorous quantitative comparisons, or in-depth analysis of emerging techniques tailored to spatiotemporal contexts. This survey bridges these gaps by offering a comprehensive and structured review of privacy-preserving techniques specific to spatiotemporal data. Our contributions include: (i) a systematic methodology for selecting and evaluating relevant literature from reputable sources, (ii) a novel theoretical classification of techniques including data anonymization, differential privacy, cryptographic methods, federated learning, and geospatial watermarking, (iii) a quantitative comparison based on standardized performance metrics, and (iv) a critical analysis of hybrid approaches that integrate differential privacy, cryptography, and machine learning. Furthermore, the paper highlights current limitations, practical challenges, and key areas for future research, serving as a roadmap for researchers and practitioners. The insights provided aim to foster the development of robust, scalable, and privacy-aware solutions for spatiotemporal data analysis.

Topics & Concepts

Computer scienceInformation privacyInternet privacyPrivacy-Preserving Technologies in DataTraffic Prediction and Management TechniquesAutomated Road and Building Extraction