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Rtdetr R101vd Coco O365

Developed by PekingU
The first real-time end-to-end object detector based on Transformer architecture, eliminating the need for non-maximum suppression, surpassing YOLO series in speed and accuracy
Downloads 106.81k
Release Time : 6/5/2024

Model Overview

RT-DETR is a Transformer-based real-time object detection model that achieves efficient detection through hybrid encoders and query selection mechanisms, supporting COCO and Objects365 datasets

Model Features

Real-time end-to-end detection
Eliminates the non-maximum suppression step in traditional object detection, achieving true end-to-end processing
Hybrid encoder design
Combines attention mechanisms with CNN for efficient multi-scale feature processing
Query selection optimization
Uncertainty minimization mechanism improves initial query quality
Flexible adaptation
Can adapt to different scenario requirements by adjusting decoder layers without retraining

Model Capabilities

Real-time object detection
Multi-scale object recognition
High-precision localization
Complex scene analysis

Use Cases

Intelligent surveillance
Airport security
Real-time detection of luggage, personnel, and other targets
Achieves 56.2% AP on the COCO dataset
Sports analysis
Football match tracking
Real-time tracking of players and ball positions
108 FPS processing speed
Wildlife monitoring
Grassland animal identification
Identification and counting of wildlife
Lightweight variant performs excellently on mobile devices
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