yolo_finetuned_fruits

This model is a fine-tuned version of hustvl/yolos-tiny on the None dataset. It achieves the following results on the evaluation set:

  • Loss: 0.6527
  • Map: 0.6866
  • Map 50: 0.9268
  • Map 75: 0.8064
  • Map Small: -1.0
  • Map Medium: 0.3032
  • Map Large: 0.7269
  • Mar 1: 0.6841
  • Mar 10: 0.8114
  • Mar 100: 0.8591
  • Mar Small: -1.0
  • Mar Medium: 0.625
  • Mar Large: 0.8825
  • Map Raccoon: 0.6866
  • Mar 100 Raccoon: 0.8591

Model description

More information needed

Intended uses & limitations

More information needed

Training and evaluation data

More information needed

Training procedure

Training hyperparameters

The following hyperparameters were used during training:

  • learning_rate: 5e-05
  • train_batch_size: 4
  • eval_batch_size: 8
  • seed: 42
  • optimizer: Use OptimizerNames.ADAMW_TORCH_FUSED with betas=(0.9,0.999) and epsilon=1e-08 and optimizer_args=No additional optimizer arguments
  • lr_scheduler_type: cosine
  • num_epochs: 30

Training results

Training Loss Epoch Step Validation Loss Map Map 50 Map 75 Map Small Map Medium Map Large Mar 1 Mar 10 Mar 100 Mar Small Mar Medium Mar Large Map Raccoon Mar 100 Raccoon
No log 1.0 40 1.3397 0.1653 0.3096 0.1634 -1.0 0.2203 0.1727 0.4068 0.5932 0.6432 -1.0 0.5 0.6575 0.1653 0.6432
No log 2.0 80 0.9567 0.206 0.3313 0.251 -1.0 0.2506 0.2184 0.4523 0.6432 0.7545 -1.0 0.525 0.7775 0.206 0.7545
No log 3.0 120 0.8981 0.3407 0.5033 0.3996 -1.0 0.2111 0.3644 0.5386 0.6773 0.7795 -1.0 0.575 0.8 0.3407 0.7795
No log 4.0 160 0.8561 0.4313 0.6765 0.5453 -1.0 0.337 0.4552 0.4955 0.7114 0.7955 -1.0 0.55 0.82 0.4313 0.7955
No log 5.0 200 0.8243 0.4946 0.7259 0.5872 -1.0 0.3095 0.5205 0.5727 0.7455 0.7955 -1.0 0.625 0.8125 0.4946 0.7955
No log 6.0 240 0.6946 0.6341 0.8614 0.7492 -1.0 0.437 0.6609 0.6159 0.7909 0.8364 -1.0 0.725 0.8475 0.6341 0.8364
No log 7.0 280 0.7659 0.568 0.8338 0.6552 -1.0 0.3524 0.5952 0.5909 0.7568 0.8568 -1.0 0.675 0.875 0.568 0.8568
No log 8.0 320 0.7453 0.6063 0.8747 0.6842 -1.0 0.3703 0.6374 0.6136 0.7818 0.8295 -1.0 0.6 0.8525 0.6063 0.8295
No log 9.0 360 0.8076 0.6337 0.9109 0.7728 -1.0 0.3426 0.6675 0.6273 0.75 0.7932 -1.0 0.575 0.815 0.6337 0.7932
No log 10.0 400 0.8037 0.6431 0.8962 0.741 -1.0 0.3238 0.6793 0.6477 0.7727 0.8295 -1.0 0.5 0.8625 0.6431 0.8295
No log 11.0 440 0.7562 0.6629 0.9247 0.8388 -1.0 0.3437 0.7 0.6432 0.7909 0.8341 -1.0 0.6 0.8575 0.6629 0.8341
No log 12.0 480 0.6658 0.6829 0.916 0.8145 -1.0 0.4476 0.7113 0.6773 0.8114 0.8591 -1.0 0.7 0.875 0.6829 0.8591
0.7837 13.0 520 0.7645 0.6514 0.9123 0.7653 -1.0 0.398 0.682 0.6386 0.7977 0.8545 -1.0 0.625 0.8775 0.6514 0.8545
0.7837 14.0 560 0.6700 0.6795 0.9287 0.8161 -1.0 0.4489 0.7083 0.675 0.7955 0.8523 -1.0 0.75 0.8625 0.6795 0.8523
0.7837 15.0 600 0.7249 0.6661 0.9175 0.7974 -1.0 0.33 0.705 0.6636 0.7932 0.8386 -1.0 0.575 0.865 0.6661 0.8386
0.7837 16.0 640 0.6520 0.6822 0.9226 0.778 -1.0 0.3635 0.7216 0.6795 0.8182 0.8591 -1.0 0.675 0.8775 0.6822 0.8591
0.7837 17.0 680 0.6738 0.6627 0.9069 0.7566 -1.0 0.3809 0.7031 0.6727 0.8068 0.8477 -1.0 0.625 0.87 0.6627 0.8477
0.7837 18.0 720 0.6502 0.6883 0.925 0.7847 -1.0 0.3661 0.7262 0.6932 0.8091 0.85 -1.0 0.625 0.8725 0.6883 0.85
0.7837 19.0 760 0.7292 0.6509 0.9187 0.7946 -1.0 0.2743 0.6892 0.6636 0.7818 0.8318 -1.0 0.6 0.855 0.6509 0.8318
0.7837 20.0 800 0.6524 0.6792 0.9149 0.7753 -1.0 0.2601 0.7217 0.6909 0.8114 0.8545 -1.0 0.575 0.8825 0.6792 0.8545
0.7837 21.0 840 0.6343 0.671 0.9163 0.7899 -1.0 0.2777 0.7105 0.6886 0.8182 0.8614 -1.0 0.625 0.885 0.671 0.8614
0.7837 22.0 880 0.6931 0.6654 0.9226 0.7917 -1.0 0.3492 0.6981 0.6659 0.7886 0.8364 -1.0 0.675 0.8525 0.6654 0.8364
0.7837 23.0 920 0.6532 0.6747 0.9264 0.8198 -1.0 0.3292 0.7138 0.6795 0.7955 0.8432 -1.0 0.65 0.8625 0.6747 0.8432
0.7837 24.0 960 0.6431 0.6765 0.9232 0.8213 -1.0 0.2775 0.7188 0.6795 0.8136 0.8614 -1.0 0.625 0.885 0.6765 0.8614
0.4689 25.0 1000 0.6492 0.689 0.9264 0.8033 -1.0 0.3039 0.7294 0.6818 0.8091 0.8568 -1.0 0.65 0.8775 0.689 0.8568
0.4689 26.0 1040 0.6594 0.6857 0.9271 0.8051 -1.0 0.3031 0.7257 0.6773 0.7977 0.8477 -1.0 0.625 0.87 0.6857 0.8477
0.4689 27.0 1080 0.6489 0.682 0.9255 0.8053 -1.0 0.3031 0.7218 0.6795 0.8068 0.8545 -1.0 0.625 0.8775 0.682 0.8545
0.4689 28.0 1120 0.6577 0.6788 0.9273 0.8069 -1.0 0.3032 0.7185 0.6773 0.8091 0.8568 -1.0 0.625 0.88 0.6788 0.8568
0.4689 29.0 1160 0.6528 0.6866 0.9268 0.8064 -1.0 0.3032 0.7269 0.6841 0.8114 0.8591 -1.0 0.625 0.8825 0.6866 0.8591
0.4689 30.0 1200 0.6527 0.6866 0.9268 0.8064 -1.0 0.3032 0.7269 0.6841 0.8114 0.8591 -1.0 0.625 0.8825 0.6866 0.8591

Framework versions

  • Transformers 4.57.6
  • Pytorch 2.10.0+cu128
  • Datasets 4.0.0
  • Tokenizers 0.22.2
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