Machine Learning (ML) Technologies
Date
2024-04-03
Authors
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Publisher
John Jay College of Criminal Justice
Abstract
Integrating Machine Learning (ML) technologies into physical security has ignited significant
discourse within scholarly circles, focusing on identifying specific ML technologies currently
employed and elucidating their tangible outcomes. This integration occurs against a rapidly
evolving technological landscape, encompassing advancements such as cloud computing, 5G
wireless technology, real-time Internet of Things (IoT) data, surveillance cameras fortified with
biometric technologies, and predictive data analytics. Collectively, these innovations augment
the transformative potential of ML within security frameworks, ranging from sophisticated video
analytics facilitating advanced threat detection to predictive algorithms aiding in comprehensive
risk assessment. Moreover, the seamless fusion of disparate data streams and the capability to
extract actionable insights in real-time present profound implications for the future trajectory of
security protocols, heralding a paradigm shift in the conceptualization, implementation, and
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Department of Security, Fire and Emergency Management
maintenance of physical security measures. This study endeavors to delve into the specifics of
ML technologies currently operationalized in physical security contexts, scrutinize the tangible
outcomes they yield, and forecast how these trends will shape the future security landscape—
additionally, strategic recommendations aimed at optimizing the efficacy of ML-driven security
solutions in safeguarding physical environments.
Description
Keywords
Machine Learning, Physical Security, Facial Recognition, Anomaly Detection, Cloud Computing, 5G Wireless Technology, Internet of Things (IoT), Biometric Surveillance, Predictive Analytics, Algorithmic Bias, Privacy Concerns, Threat Detection, Risk Management, Security Measures, Future Trends