Model Card for TrafficSurveillance
This model card provides documentation for a YOLOv11m-based object detection model designed to identify pedestrians and vehicles in bird's-eye (aerial) images at 640px resolution.
Model Details
Model Description
- Developed by: Muhammed Sezer and Şevval Dikkaya
- Model type: Object Detection (YOLOv11m backbone)
- License: MIT
- Finetuned from model: Ultralytics/YOLO11m
Model Sources
- Repository: https://github.com/sezer-muhammed/Teknofest-Ulasimda-Yapay-Zeka-Veri-Seti
- Demo: https://huggingface.co/spaces/sezer-muhammed/Traffic-Object-Detection
Uses
Direct Use
This model is intended for use in surveillance, traffic monitoring, smart city applications, and public safety analysis from drone or aerial views.
Downstream Use
This model can be fine-tuned for:
- Domain-specific pedestrian tracking
Out-of-Scope Use
- Real-time ground-based pedestrian detection
- Medical, military, or privacy-invasive applications without ethical oversight
Bias, Risks, and Limitations
This model is trained on publicly sourced aerial data and may underperform in different altitudes, lighting conditions, or non-urban settings. It is also limited to detecting only two classes: pedestrian and vehicle.
Recommendations
- Apply caution in non-aerial or oblique-angle views.
- Bias due to limited diversity in dataset origin may affect generalization.
- This model should not be used in high-stakes applications without human validation.
How to Get Started with the Model
Load the model with Ultralytics framework and inference on a 640x640 aerial image.
from ultralytics import YOLO
model = YOLO('path/to/yolov11m.pt')
results = model('your_aerial_image.jpg')
Training Details
Training Data
- Dataset: Teknofest AI in Transportation Dataset
- Classes:
0 = vehicle,1 = pedestrian - 25,000+ images and 300,000+ labels
Training Procedure
Preprocessing
- Images resized to 640x640
- Data split into
train/,test/anddataset.yaml
Training Hyperparameters
- Mixed precision (fp16)
- Epochs: 110
- Optimizer: Adam
Summary
The model shows promise for aerial pedestrian and vehicle detection. Additional tuning recommended for deployment in non-standard aerial views.
Citation
@misc{EflatunDataset,
author = {Dikkaya, Şvval Belkıs and Sezer, Muhammed İzzet},
title = {Eflatun Takımı Teknofest Ulaşımda Yapay Zeka Yarışması Veri Seti},
year = {2021},
publisher = {GitHub},
journal = {GitHub repository},
howpublished = {\url{https://github.com/sezer-muhammed/Teknofest-Ulasimda-Yapay-Zeka-Veri-Seti}},
}
Model tree for sezer-muhammed/TrafficSurveillanceModelYolo
Base model
Ultralytics/YOLO11