A precise segmentation model trained on the ISIC2016 and 2017 datasets. Throws an accuracy of 98.06% and a Jaccard Index of 90.86. Based on the U-Net architecture with a DenseNet201 backbone.
- Downloads last month
- 0
Inference Providers
NEW
This model is not currently available via any of the supported third-party Inference Providers, and
the HF Inference API does not support keras models with pipeline type image-segmentation
Model tree for DevBhuyan/Skin-Lesion-Segmentation
Base model
Sadiksmart0/unetDatasets used to train DevBhuyan/Skin-Lesion-Segmentation
Evaluation results
- accuracy on isic2016self-reported98.040
- precision on isic2016self-reported97.090
- IoU (jaccard index) on isic2016self-reported90.860
- F1-score (dice coefficient) on isic2016self-reported94.780
- accuracy on isic2017self-reported93.060
- precision on isic2017self-reported98.630
- IoU (jaccard index) on isic2017self-reported89.970
- F1-score (dice coefficient) on isic2017self-reported94.350