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Safety_Cone_detection

The Safety Cone Detection model is designed to address the critical need for real-time detection of safety cones on roads and construction sites. Safety cones play a pivotal role in ensuring public safety by marking hazardous areas, construction zones, or redirecting traffic. Accurate and swift detection of these cones is essential to prevent accidents and streamline traffic flow.

Key Features

Utilizes the YOLOv8 model for high accuracy and real-time performance. Offers fast frame-per-second (FPS) rates, ensuring swift detection and response. Provides robust detection capabilities, identifying safety cones across various environments.

Optimized Models

In addition to the standard YOLOv8 model, we offer optimized versions in both .onnx and .blob formats. These optimized models are tailored for efficient deployment on a wide range of devices, including the OAK-D camera. They are streamlined for optimal performance and resource utilization.

Usage Instructions

Users can effortlessly deploy the Safety Cone Detection model using the command-line interface (CLI). Here's an example of usage:

yolo predict model=Cone.pt source='path-to-video'

Dependencies

pip install ultralytics

Contact Information

Feel free to Contact me on my linked_in porfile