YOLOv11-License-Plate Detection
This is a fine-tuned version of YOLOv11 (n, s, m, l, x) specialized for License Plate Detection, using a public dataset from Roboflow Universe:
License Plate Recognition Dataset (10,125 images)
π Use Cases
- Smart Parking Systems
 - Tollgate / Access Control Automation
 - Traffic Surveillance & Enforcement
 - ALPR with OCR Integration
 
ποΈ Training Details
- Base Model: YOLOv11 (
n,s,m,l,x) - Training Epochs: 300
 - Input Size: 640x640
 - Optimizer: SGD (Ultralytics default)
 - Device: NVIDIA A100
 - Data Format: YOLOv5-compatible (images + labels in txt)
 
π Evaluation Metrics (YOLOv11x)
| Metric | Value | 
|---|---|
| Precision | 0.9893 | 
| Recall | 0.9508 | 
| mAP@50 | 0.9813 | 
| mAP@50-95 | 0.7260 | 
For full table across models (n to x), please see the README
π¦ Model Variants
- PyTorch (.pt) β for use with Ultralytics CLI and Python API
 - ONNX (.onnx) β for cross-platform inference
 
π§ How to Use
With Python (Ultralytics API):
from ultralytics import YOLO
model = YOLO('yolov11x-license-plate.pt')
results = model.predict(source='image.jpg')
π License
- Base Model (YOLOv11): AGPLv3 by Ultralytics
 - Dataset: CC BY 4.0 by Roboflow Universe
 - This model: AGPLv3 (due to YOLOv11 license inheritance)
 
β License Compliance Reminder
In accordance with the AGPLv3 license:
- If you use this model in a service or project, you must open source the code that uses it.
 - Please give proper attribution to Roboflow, Ultralytics, and MorseTechLab when using or deploying.
 
For license details, refer to GNU AGPLv3 License
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