YOLOv11-Nano Car Damage Detection
A lightweight YOLOv11-Nano model fine-tuned for automated detection and classification of automobile damage across 14 damage categories.
βοΈ Model Details
- Architecture: YOLOv11-Nano
- Framework: Ultralytics
- Input Size: 640x640
- Format: PyTorch (.pt)
π Model Performance
- [email protected]: 79.7%
- [email protected]:0.95: 55.2%
- Model Size: ~6MB (Nano variant)
- Speed: Real-time inference capable
π― Use Cases
- Insurance claim automation
- Vehicle inspection systems
- Auto repair assessment
- Fleet damage monitoring
π Dataset
Trained on the Automobile Damage Detection Dataset from Roboflow Universe.
- Images: ~6,900 annotated images
- Classes: 14 damage categories
- Annotations: Bounding boxes
Damage Categories
Front-windscreen-damageHeadlight-damageRear-windscreen-DamageRunningboard-DamageSidemirror-DamageTaillight-Damagebonnet-dentboot-dentdoorouter-dentfender-dentfront-bumper-dentquaterpanel-dentrear-bumper-dentroof-dent
π Training Metrics
Results Plot
Confusion Matrix
π Usage
from ultralytics import YOLO
from huggingface_hub import hf_hub_download
model_path = hf_hub_download(
repo_id="vineetsarpal/yolov11n-car-damage",
filename="best.pt"
)
model = YOLO(model_path)
results = model.predict("/path/to/your/image.jpg", save=True)
β οΈ Limitations
- Class imbalance: Reduced accuracy on
boot-dentdetection due to limited training examples - Image quality: Performance degrades on low-resolution (<640px), poorly-lit, or low-contrast images
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Model tree for vineetsarpal/yolov11n-car-damage
Base model
Ultralytics/YOLO11Space using vineetsarpal/yolov11n-car-damage 1
Evaluation results
-
self-reported
0.797
- [email protected]:0.95self-reported0.552

