FaRO 2: an Open Source, Configurable Smart City Framework for Real-Time Distributed Vision and Biometric Systems
Joel Brogan, Nell Barber, David Cornett, David Bolme

TL;DR
FaRO 2 is an open-source, configurable framework designed for real-time, distributed vision and biometric systems in smart cities, enabling seamless, secure, and flexible integration of heterogeneous sensors and machine learning pipelines.
Contribution
FaRO 2 introduces a comprehensive, extensible platform that unifies biometric evaluation, supports declarative pipeline configuration, and ensures secure PII handling in smart city environments.
Findings
Supports real-time distributed biometric processing
Enables flexible configuration and hot-swapping of systems
Provides secure handling of PII data
Abstract
Recent global growth in the interest of smart cities has led to trillions of dollars of investment toward research and development. These connected cities have the potential to create a symbiosis of technology and society and revolutionize the cost of living, safety, ecological sustainability, and quality of life of societies on a world-wide scale. Some key components of the smart city construct are connected smart grids, self-driving cars, federated learning systems, smart utilities, large-scale public transit, and proactive surveillance systems. While exciting in prospect, these technologies and their subsequent integration cannot be attempted without addressing the potential societal impacts of such a high degree of automation and data sharing. Additionally, the feasibility of coordinating so many disparate tasks will require a fast, extensible, unifying framework. To that end, we…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · IoT and Edge/Fog Computing · Advanced Neural Network Applications
