An online examination monitoring system employing YOLOv8, along with various other deep learning and machine learning approaches, centered around computer vision.
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Updated
Dec 17, 2023 - CSS
An online examination monitoring system employing YOLOv8, along with various other deep learning and machine learning approaches, centered around computer vision.
Animal Detection and Classification using YOLO
Object Detection Web App using YOLOv11 and Flask. Supports RTSP Streams and Video Uploads. A study case for a Fall Detection System for the Elderly.
IndShield is a web application designed to revolutionize industrial safety protocols by leveraging advanced technologies. It empowers organizations to create a safer and more secure work environment for personnel and equipment.
SnapnCook is an AI-powered web app that helps you cook smarter, not harder. Simply upload a photo of your fridge or ingredients, and the app instantly suggests delicious recipes based on what it sees, no typing required!
The Online Exam Proctor System is a computer vision-based project designed to ensure the integrity and fairness of online exams. As the popularity of remote learning and online education grows, the need for a robust proctoring system becomes crucial to prevent cheating and maintain the credibility of the examination process.
Smart cleanliness monitoring using AI for garbage detection, severity scoring, and dashboard-based tracking.
Implementation of YOLOv8 for detection of Baybayin characters, an ancient script from the Philippines.
Apple Detection (Fresh / Stale) With YOLOv8 and Flask
GARUDA is a high-precision surveillance system that leverages the YOLOv8 AI model to detect people in real-time video from drones or other cameras. The system includes a web control panel and instantly sends alerts with images to Telegram.
AI-powered medical diagnostic system combining Computer Vision (YOLOv8) and RAG-based NLP to analyze medical images and generate comprehensive diagnostic reports.
A powerful web-based object detection application built with Python, Flask, and YOLOv8. Upload images to instantly identify and visualize objects with bounding boxes and confidence scores.
The Valorant Object Detection project is a Flask-based web application that allows users to upload images from the game Valorant and detect various in-game objects using a YOLOv8 model. The application provides a simple interface for uploading images and displays the detection results in an intuitive format.
Indonesian license plate recognition using YOLOv8 and OCR via Flask
Data Farm est une application web développée dans le cadre du projet universitaire **Esprit School of Engineering**, visant à digitaliser la gestion agricole intelligente et durable.
This project uses a local YOLOv8 custom PPE model to detect the presence of PPE with a Meraki MV Camera. PPE Zones are defined to specify what a full 'PPE Kit' looks like per camera. If one or more PPE violations are detected, a Microsoft Teams message is sent to a notification space with an attached snapshot.
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