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Yolov10m

Developed by onnx-community
YOLOv10 is a real-time end-to-end object detection model developed by Tsinghua University's MIG Lab, offering efficient detection performance and lightweight deployment capabilities.
Downloads 169
Release Time : 5/24/2024

Model Overview

YOLOv10 is an ONNX-format object detection model suitable for real-time object detection tasks, featuring high accuracy and low latency.

Model Features

Real-time end-to-end detection
Supports real-time object detection, ideal for applications requiring rapid response.
High accuracy
Delivers high-precision object detection across various scenarios.
Lightweight deployment
Based on ONNX format, facilitating deployment and execution on diverse platforms.

Model Capabilities

Real-time object detection
Multi-category object recognition
High-precision localization

Use Cases

Smart surveillance
Traffic monitoring
Used to detect vehicles and pedestrians on roads, assisting traffic management.
Accurately identifies vehicles and pedestrians with confidence scores exceeding 0.9.
Autonomous driving
Obstacle detection
Real-time detection of road obstacles to ensure driving safety.
Rapidly identifies and locates obstacles with short response times.
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