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  1. .gitattributes +2 -0
  2. lavado_mantencion_v2-2/runs/detect/train/F1_curve.png +3 -0
  3. lavado_mantencion_v2-2/runs/detect/train/PR_curve.png +0 -0
  4. lavado_mantencion_v2-2/runs/detect/train/P_curve.png +0 -0
  5. lavado_mantencion_v2-2/runs/detect/train/R_curve.png +3 -0
  6. lavado_mantencion_v2-2/runs/detect/train/args.yaml +98 -0
  7. lavado_mantencion_v2-2/runs/detect/train/confusion_matrix.png +0 -0
  8. lavado_mantencion_v2-2/runs/detect/train/confusion_matrix_normalized.png +0 -0
  9. lavado_mantencion_v2-2/runs/detect/train/events.out.tfevents.1703106470.0a9fff39fb84.4030.0 +3 -0
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  11. lavado_mantencion_v2-2/runs/detect/train/labels_correlogram.jpg +0 -0
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  14. lavado_mantencion_v2-2/runs/detect/train/train_batch0.jpg +0 -0
  15. lavado_mantencion_v2-2/runs/detect/train/train_batch1.jpg +0 -0
  16. lavado_mantencion_v2-2/runs/detect/train/train_batch2.jpg +0 -0
  17. lavado_mantencion_v2-2/runs/detect/train/val_batch0_labels.jpg +0 -0
  18. lavado_mantencion_v2-2/runs/detect/train/val_batch0_pred.jpg +0 -0
  19. lavado_mantencion_v2-2/runs/detect/train/val_batch1_labels.jpg +0 -0
  20. lavado_mantencion_v2-2/runs/detect/train/val_batch1_pred.jpg +0 -0
  21. lavado_mantencion_v2-2/runs/detect/train/val_batch2_labels.jpg +0 -0
  22. lavado_mantencion_v2-2/runs/detect/train/val_batch2_pred.jpg +0 -0
  23. lavado_mantencion_v2-2/runs/detect/train/weights/best.pt +3 -0
  24. lavado_mantencion_v2-2/runs/detect/train/weights/last.pt +3 -0
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