-
Notifications
You must be signed in to change notification settings - Fork 2
templeblock/deep
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
### DEMO website ### http://dx.medicalphoto.org (ResNet-152 trained with 100(typical)Asan dataset) ### How to install Classifier ### 1) Download All files from links as shown below or GitHub repo. OneDrive : https://1drv.ms/u/s!AsgJ-NdXPSPKhXdfJLT7JZY4WKwC Mirror #1 : http://medicalphoto.org/deep.zip Mirror #2 : http://sshan.dynu.com/file/deep.zip Mirror #3 : http://daoc.dynu.com/file/deep.zip cf) DO NOT DIRECTLY DOWNLOAD FROM DOWNLOAD-ZIP ICON FROM GITHUB; Due to LFS issues of github, caffemodel files will not be downloaded correctly. If you want to download via Github, you must use GitHub Desktop(https://desktop.github.com/) 2) Run .bat files 100(typical)-hallym;caffenet.bat 100(typical)-hallym;resnet.bat 100(typical)-web;caffenet.bat 100(typical)-web;resnet.bat 100(typical+atypical)-hallym;caffenet.bat 100(typical+atypical)-hallym;resnet.bat 100(typical+atypical)-web;caffenet.bat 100(typical+atypical)-web;resnet.bat # About /dist/predict/predict.exe - It requires 64 bit Windows. - It requires MSVC 2013 redistribution libraries(/dist/vcredist_x64.exe). It will be silently installed by DOS batch scripts. - Examples of predict.exe usage predict.exe 227 caffe_deploy.prototxt caffe.caffemodel test_folder mean_label_folder "Memo" predict.exe 224 resnet152_deploy.prototxt resnet152.caffemodel test_folder mean_label_folder "Memo" - The outputs will be saved in Report.txt. - predict.exe compare the output of CNN and the directory name of test_folder. - mean_label_folder should contains label.txt and meanOOOxOOO.binaryproto file. # About /src/predict.py - Python source code of Predict.exe - PyCaffe should be installed first. (http://caffe.berkeleyvision.org/installation.html)
About
Skin diseases(basal cell carcinoma, seborrheic keratosis, lentigo, wart) classifier using deep learning (windows 64bit version;BVLC Caffe;Microsoft ResNet-152)
Resources
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published