Object Detection
ultralytics
computer-vision
yolov8
vehicle-detection
traffic-analysis
highway-monitoring
Instructions to use vietnguyennn0705/highway-vehicle-detection-code with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- ultralytics
How to use vietnguyennn0705/highway-vehicle-detection-code with ultralytics:
from ultralytics import YOLOvv8 model = YOLOvv8.from_pretrained("vietnguyennn0705/highway-vehicle-detection-code") source = 'http://images.cocodataset.org/val2017/000000039769.jpg' model.predict(source=source, save=True) - Notebooks
- Google Colab
- Kaggle
highway-vehicle-detection-code / finetune_dataset /labels /Screenshot-2-_png.rf.d7d21f84f55d0ec99e482430e99c8159.txt
| 2 0.438232421875 0.4891493055555556 0.02886962890625 0.04443359375 | |
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| 2 0.372314453125 0.7400173611111112 0.07342529296875 0.10899522569444445 | |
| 2 0.406005859375 0.5924479166666666 0.04327392578125 0.06559244791666667 | |
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| 2 0.1822509765625 0.83203125 0.12103271484375 0.15342881944444445 | |
| 2 0.449462890625 0.4505208333333333 0.022979736328125 0.029486762152777776 | |
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| 2 0.5361328125 0.3715277777777778 0.007843017578125 0.013420952690972222 | |