Traffic Sign Detection and Warning System in real time with Custom Dataset & YOLOV8.
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Updated
Feb 20, 2024 - Python
Traffic Sign Detection and Warning System in real time with Custom Dataset & YOLOV8.
Fire detection using YOLOv8 involves utilizing a state-of-the-art object detection model to accurately identify fire in images or video feeds in real-time, leveraging its advanced capabilities to enhance early warning systems.
Machine Learning model
Detect football players in videos using YOLOv5 for training and YOLOv8 for inference. The dataset is sourced from Roboflow and includes 663 annotated images. The project involves pre-processing, augmentation, and model training for accurate player detection.
From a selection of data from the Roboflow file https://universe.roboflow.com/landy-aw2jb/fracture-ov5p1/dataset/1, which represents a reduced but homogeneous version of that file, a model is obtained based on yolov10 with that custom dataset to indicate fractures in x-rays.
This project focuses on leveraging the YOLO-NAS model for Smoke Detection.
This project implements a YOLOv8 model to detect and classify various skin diseases from images. The model is trained on a dataset of labeled images and can identify different types of skin conditions in real-time.
Custom Yolov8x-cls edge model deployment and training to classify trash vs recycling.
The road sign recognition system of the Russian Federation, which uses an already prepared model for object detection and image segmentation in real time to improve road safety
Use machine learning to identify players, refs and football field markings.
A football analysis system built using YOLOv5, Supervision, OpenCV in Python.
Contribution for Traffic Sign Detection and Warning System in real time with Custom Dataset & YOLOv8.
From dataset https://universe.roboflow.com/drone-detection-pexej/drone-detection-data-set-yolov7/dataset/1# a model is obtained, based on ML (SVR), with that custom dataset, to indicate drones detection
A computer Vision project for avoiding potholes on road.
This research work introduced various aspects from dataset preparation techniques to image pre-processing, model comparison, and performance analysis on the detection & instance segmentation of three microalgae class namely Chlorella vulgaris FSP-E, Chlamydomonas reinhardtii, and Spirulina platensis.
Soccer analysis using YOLOv8 & Supervision ByteTrack
Detection of fractures in radiographs by obtaining the X and Y coordinates of the center of the fracture applying ML (SVR) to obtain the values of these coordinates separately. It is applied to a selection of data from the Roboflow file https://universe.roboflow.com/landy-aw2jb/fracture-ov5p1/dataset/1
How to Train YOLOv8 Instance Segmentation on a Custom Dataset
Repository documenting YOLOv5 training on Gazebo-simulated marine markers, with detailed Jupyter notebooks and stored model weights for enhanced object detection.
From dataset https://universe.roboflow.com/drone-detection-pexej/drone-detection-data-set-yolov7/dataset/1 a model is obtained, based on yolov10 to detect drones in images. Predictions from several models are used in cascade to obtain the optimal result.
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