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Yolov10s

Developed by jameslahm
YOLOv10 is a real-time end-to-end object detection model proposed by Tsinghua University, with significant improvements in both speed and accuracy.
Downloads 907
Release Time : 6/1/2024

Model Overview

YOLOv10 is an efficient real-time object detection model with an end-to-end design, suitable for various computer vision applications.

Model Features

Real-time end-to-end detection
Adopts an end-to-end design, simplifying the traditional object detection pipeline and improving real-time performance.
High performance
Demonstrates excellent detection accuracy and speed on the COCO dataset.
Easy fine-tuning
Supports fine-tuning based on pre-trained models and can be easily pushed to the model hub.

Model Capabilities

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

Use Cases

Smart surveillance
Real-time monitoring analysis
Used for object detection and recognition in real-time surveillance videos.
Accurately identifies various common objects.
Autonomous driving
Road object detection
Detects vehicles, pedestrians, and other objects on the road.
High-precision real-time detection capability.
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