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Yolov9 C

Developed by Xenova
YOLOv9-C is an object detection model based on the YOLOv9 architecture, suitable for real-time detection of multiple objects in images.
Downloads 82
Release Time : 2/23/2024

Model Overview

YOLOv9-C is an efficient object detection model capable of quickly and accurately identifying objects in images, suitable for real-time applications.

Model Features

Efficient real-time detection
YOLOv9-C can efficiently detect multiple objects in real-time scenarios, suitable for applications requiring rapid responses.
High-precision detection
The model demonstrates high-precision detection capabilities in various scenarios, accurately identifying object positions and categories.
ONNX format support
The model is provided in ONNX format, facilitating deployment and usage across different platforms.

Model Capabilities

Image object detection
Real-time object recognition
Multi-class object detection

Use Cases

Smart surveillance
Traffic monitoring
Used to detect vehicles, pedestrians, and traffic signals on roads.
High-precision detection of various traffic-related objects, improving monitoring efficiency.
Autonomous driving
Environmental perception
Used for environmental perception in autonomous vehicles to detect surrounding objects.
Real-time detection of vehicles, pedestrians, and obstacles, enhancing driving safety.
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