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Open-source intelligence for the global theater. Track everything from the corporate/private jets of the wealthy, and spy satellites, to seismic events in one unified interface. The knowledge is available to all but rarely aggregated in the open, until now.
Security reconnaissance and assessment tool for identifying potentially exposed IP cameras by analyzing open ports, service configurations, and common misconfigurations.
Violence recognition in streaming video using Transfer Learning and MoViNets. The project leverages state-of-the-art deep learning techniques to create an efficient and accurate violence detection system.
My main goal is to build an innovative technological solution that could detect sexual harassment in real-time, which is much needed to fill in the gap left void by traditional methods, by which I aim to create a safer work environment, overcome reporting hesitancy, support HR and legal management, reduce psychological and physical stress.
YOLOv8 handles real-time object detection, spotting people, vehicles, and activity around your home. Potential threats are then analyzed and summarized by ChatGPT, turning raw detections into clear security logs. Together, they provide an AI-powered CCTV system that both sees and thinks.
📹 Enhance home security with AI-driven surveillance that detects threats and logs incidents using YOLOv8, OpenAI GPT, and a user-friendly Tkinter interface.
An AI-powered CCTV surveillance system for real-time detection of PPE compliance, including helmet and mask violations, using YOLO and computer vision.
An AI-powered CCTV surveillance system for real-time detection of PPE compliance, including helmet and mask violations, using YOLO and computer vision.
Python application for real-time multi-camera CCTV video ingestion and person detection using TensorFlow's SSD MobileNet V2. Features parallel processing, robust error handling, and saves processed videos in MP4 format.
Detect and capture people from RTSP camera streams using YOLOv4/YOLOv3 with GPU acceleration, multi-stream threading, and configurable snapshot/video recording