REVIEW OF TECHNOLOGIES AND USES OF VIDEO SURVEILLANCE
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Abstract
Modern security and monitoring systems now mostly depend on video surveillance. It covers a broad spectrum of technologies and uses, therefore greatly improving operational effectiveness and safety in many different fields. Thanks to developments in computer vision, artificial intelligence, and networking, video surveillance has advanced impressively from its early use in sensitive surroundings to its general presence in public spaces (Ardabili et al., 2022; Rezaei et al., 2021). Beyond only capturing visual data, video surveillance's main goal is intelligent analysis of image sequences to identify and track things, so helping to comprehend and interpret their activity (Ko, 2011). Advanced algorithms built into modern systems enable them to quickly identify and respond to any hazards or odd events by automatically detecting, classifying items, and spotting anomalies (Alhaidari et al., 2019; Civelek & Yaz, 2016). Security, traffic monitoring, retail analysis, and industrial automation (Patrikar & Parate, 2022) are just a few of the several domains these systems find use in. Furthermore, by providing a multimodal monitoring and anomaly detection (Mãâ¼Ller et al., 2021) integration of video surveillance with other sensor technologies such as sound sensors improves capabilities. Furthermore made possible by the development of cloud-based video surveillance systems is remote access and management of video data, which facilitates real-time and historical analysis from anywhere with an internet connection.
Modern security and monitoring systems now revolve around video surveillance as absolutely essential component. Driven by developments in computer vision, artificial intelligence (AI), and networking, modern surveillance technologies go from simple video recording tools to advanced intelligent systems. This study investigates the technical development, present capabilities, and several uses of video surveillance systems, so underlining their increasing importance in improving operational efficiency and safety in several fields. It also looks at the development of cloud-based solutions as major field innovations and the integration of multimodal sensors.
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