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Yolov10b

Developed by jameslahm
YOLOv10 is a real-time end-to-end object detection model developed by the Tsinghua University team, representing the latest improvement in the YOLO series.
Downloads 97
Release Time : 6/1/2024

Model Overview

YOLOv10 is an efficient object detection model focused on real-time performance and end-to-end detection capabilities. Based on the YOLO series architecture, it achieves higher detection accuracy and speed through improvements.

Model Features

Real-Time End-to-End Detection
Supports real-time object detection without post-processing steps, enabling efficient end-to-end detection.
High Performance
Delivers outstanding performance on the COCO dataset, balancing detection accuracy and speed.
Easy to Use
Provides a simple API interface for quick deployment and inference.

Model Capabilities

Object Detection
Real-Time Inference
Image Analysis

Use Cases

Computer Vision
Object Detection
Detects objects in images and labels their positions and categories.
Performs excellently on the COCO dataset.
Video Analysis
Analyzes objects in video streams in real-time, suitable for surveillance and security scenarios.
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