Smart Home Guard: AI-Powered Security System
Keywords:
Alert system, Artificial intelligence, Home security, Machine Learning (ML), Raspberry PiAbstract
Home security has become a significant concern in recent years due to the increasing rates of burglaries and intrusions. This project focuses on developing a robust home security AI system that leverages facial recognition technology to enhance safety and security measures. The primary application areas for this system include residential homes, small businesses, and office buildings. With the global market for home security solutions expected to reach $78.9 billion by 2025, there is a growing demand for advanced and reliable security systems. Despite advancements in surveillance technologies, existing systems often fail to accurately identify intruders, leading to false alarms and compromised security. This project addresses these issues by integrating state-of-the-art facial recognition algorithms with a real-time notification system, ensuring precise identification and immediate alerts.
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