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With the increasing number of security threats faced by banks and ATMs, there is a growing need for lightweight and efficient security systems to protect these establishments. Traditional security systems can be costly to install and maintain, and may not always be effective against modern threats such as cyber attacks and sophisticated burglaries. In this paper, we propose a lightweight security system for banks and ATMs that leverages the power of IoT (Internet of Things) and AI (Artificial Intelligence) technologies. The system consists of a network of smart sensors and cameras placed strategically around the bank or ATM premises to monitor and detect any suspicious activities in real-time. These sensors and cameras are connected to a central server that processes the data and alerts the authorities in case of any security breach. The key features of our proposed security system include, Real-time monitoring: The system continuously monitors the bank or ATM premises and detects any suspicious activities such as unauthorized access or tampering.AI-powered analytics: The system uses AI algorithms to analyze the data from the sensors and cameras, enabling it to differentiate between normal and suspicious activities.Remote access: The system allows the authorities to access the live feed from the cameras and sensors remotely, enabling them to take immediate action in case of an emergency.Low cost: The system is designed to be cost-effective, making it suitable for small and medium-sized banks and ATMs.Overall, our proposed security system offers a lightweight and efficient solution for banks and ATMs to enhance their security measures and protect against modern security threats
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M S Gowshik
Ajieth Kumar VP
N. Muthukumaran
Sri Eshwar College of Engineering
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Gowshik et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68e6d6b8b6db6435876533a1 — DOI: https://doi.org/10.1109/icstem61137.2024.10561138