The Intelligent Campus Community Monitoring and Tracking System represents a significant leap forward in campus safety technology featuring a sophisticated integration of state-of-the-art facial recognition technology and a network of strategically placed cameras. This system leverages advanced algorithms, specifically Multi-task Cascaded Convolutional Networks (MTCNN) and Inception Resnet V1, for high-accuracy face detection and recognition. These algorithms identify individuals even in highly populated and dynamic campus environments, ensuring the system's efficacy in real-time security monitoring and threat detection. This robust system is meticulously designed to cater to the needs of its users—both administrative personnel and campus community members. The interface facilitates ease of navigation and operation, ensuring that all users, irrespective of their technical capabilities, can utilize the system efficiently. Privacy and data security are essential in designing and implementing this surveillance system. Given the use of sensitive biometric data, strict protocols are enforced to secure personal information against unauthorized access and breaches. The system's architecture is built to ensure that data integrity and confidentiality are always maintained, thus supporting the trust and confidence of the campus community. The system's architecture is not only robust but also highly scalable, designed to accommodate the growth and technological advancements of educational institutions. On a broader scale, the deployment of the Intelligent Campus Community Monitoring and Tracking System profoundly enhances the overall campus atmosphere by supporting safety and security.