RDF:
H11_M09_高解析度影像的高效率深度學習方法
[MT] H11_M09_The high -efficiency deep learning method of high -resolution image

Method

The goal of the model is to use resnet50 with AMP(AUTOMATIC MIXED PRECISION) to accelerate the training speed and make a high-resolution skin cancer classification.

Usage

crop_transform.py - self-definition val_aug method. Transform 1 test/val image to 9 images to predict the score.

dataset2017.py - method to read your ISIC Training / Val / Test Data.

generate_patch_images.ipynb - Because the augmentation strategy contains a random method. Please use this method to transform your Training Data from 2000 images to 122000 images first.

amp related: predict2017_amp_bce_testaug_avg9score_v.ipynb train_resnet50_amp_v.ipynb original: predict2017_woamp_bce_testaug_avg9score_v.ipynb train_resnet50_woamp_v.ipynb

Release Note

* v1.0.0, 2023/08/05, 15:45:00

Citation

Paper: J. Zhang, Y. Xie, Y. Xia and C. Shen, "Attention Residual Learning for Skin Lesion Classification," in IEEE Transactions on Medical Imaging, vol. 38, no. 9, pp. 2092-2103, Sept. 2019, doi: 10.1109/TMI.2019.2893944.

Original third-party code: https://github.com/Vipermdl/ARL

Acknowledgements

This work was supported in part by the National Science and Technology Council, Taiwan under Grant NSTC 111-2634-F-006-012.
We thank National Center for High-performance Computing (NCHC) for providing storage resources.
# MethodThe goal of the model is to use resnet50 with AMP(AUTOMATIC MIXED PRECISION) to accelerate the training speed and make a high-resolution skin cancer classification.# Usagecrop_transform.py - self-definition val_aug method. Transform 1 test/val i...

Data and Resources

  • H11-M09_DOC.zipZIP

  • H11-M09_CODE.zipZIP

  • H11-M09_WEIGHT.zipZIP

Additional Info

Field Value
Author 徐斯敏
Maintainer 徐斯敏
Version 1.0
Last Updated December 2, 2023, 19:47 (CST)
Created December 2, 2023, 19:46 (CST)
DPA_DateImported 233331037
DPA_former_id 5bb62789-5003-4c88-9730-4d9f92a65c0a
DPA_former_name h11_m09_
DPA_former_owner_org 0aa6e554-5fb5-4444-8f9c-849581284840
DPA_former_site https://scidm.nchc.org.tw
聯繫Email smallfish30910@gmail.com
聯繫窗口 徐斯敏
AODP Economy Taiwan