Abstract

In an era marked by dynamic security challenges, real-time CCTV anomaly detection systems have emerged as a cornerstone in contemporary security frameworks. These systems, leveraging advanced algorithms rooted in machine learning, continuously scrutinize live video streams to establish a baseline of normal activities. The fundamental aim is to promptly identify deviations and anomalies, ushering in a new era of proactive and responsive security monitoring. This technology's real-time capabilities represent a transformative leap forward, enabling immediate responses to potential threats or irregular events within monitored environments. The effectiveness of real-time anomaly detection lies not only in its ability to distinguish between normal and abnormal patterns but also in its contribution to the broader landscape of safety and protection. This abstract delves into the multifaceted significance of real-time CCTV anomaly detection, exploring its role in elevating overall security measures. Beyond the immediate identification of anomalies, these systems promise to shape the future of security by offering a proactive approach to surveillance. As technological advancements persist, the integration of such systems underscores a commitment to anticipatory security strategies, ensuring adaptability in the face of evolving security challenges. Keywords: Anomaly Detection, Intrusion Detection, Machine Learning, Statistical Methods, Network Security, Cybersecurity, Pattern Recognition, Alarm Systems, Real-time Detection.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call