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title: CEA List FrugalAI Challenge | |
emoji: 🔥 | |
colorFrom: red | |
colorTo: yellow | |
sdk: docker | |
pinned: false | |
# YOLO for Early Fire Detection | |
## Team | |
- Renato Sortino | |
- Aboubacar Tuo | |
- Charles Villard | |
- Nicolas Allezard | |
- Nicolas Granger | |
- Angélique Loesch | |
- Quoc-Cuong Pham | |
## Model Description | |
YOLO model for early fire detection in forests, proposed as a solution for the Frugal AI Challenge 2025, image task. | |
### Intended Use | |
- **Primary intended uses**: | |
- **Primary intended users**: | |
- **Out-of-scope use cases**: | |
## Training Data | |
The model uses the pyronear/pyro-sdis dataset: | |
- Size: ~33000 examples | |
- Split: 80% train, 20% test | |
- Images annotated with bounding boxes in correspondence of wildfire instances | |
### Labels | |
0. Smoke | |
## Performance | |
### Metrics | |
- **Accuracy**: ~83% | |
- **Environmental Impact**: | |
- Emissions tracked in gCO2eq | |
- Energy consumption tracked in Wh | |
### Model Architecture | |
The model is a YOLO-based object detection model, that does not depend on NMS in inference. | |
Bypassing this operation allows for further optimization at inference time via tensor decomposition and quantization | |
## Environmental Impact | |
Environmental impact is tracked using CodeCarbon, measuring: | |
- Carbon emissions during inference | |
- Energy consumption during inference | |
This tracking helps establish a baseline for the environmental impact of model deployment and inference. | |
## Limitations | |
- It may fail to generalize to night scenes or foggy settings | |
- It is subject to false detections, especially at low confidence thresholds | |
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