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开源软件名称(OpenSource Name):thtang/CheXNet-with-localization开源软件地址(OpenSource Url):https://github.com/thtang/CheXNet-with-localization开源编程语言(OpenSource Language):Python 100.0%开源软件介绍(OpenSource Introduction):CheXNet-with-localizationADLxMLDS 2017 fall final Team:XD 黃晴 (R06922014), 王思傑 (R06922019), 曹爗文 (R06922022), 傅敏桓 (R06922030), 湯忠憲 (R06946003) Weakly supervised localization :In this task, we have to plot bounding boxes for each disease finding in a single chest X-ray without goundtruth (X, Y, width, height) in training set. The workflow is shown below: Workflow : 1) Predict findings 2) Use the classifier to plot heatmap (Grad-CAM) 3) Plot the bounding box base on Grad-CAM ### Package : `Pytorch==0.2.0` `torchvision==0.2.0` ` matplotlib` ` scikit-image==0.13.1` ` opencv_python==3.4.0.12` ` numpy==1.13.3` `matplotlib==2.1.1` `scipy==1.0.0` `sklearn==0.19.1`Environment:
Experiments process:
For DeepQ platform testing: upload deepQ_25.zip to the platform. Then use following command:
Note :In our .py script, I used the following script to assign the task running on GPU 0.
Model : * Image is modified from Ref [2].Result :Prediction Bounding Box per patient Visualization of some images with its ground-truth label (red) and its prediction (blue) selected from each disease class. Refers to the report for more experiment results. Reference:
Contact:Feel free to contact me ([email protected]) if you have any problem. |
2023-10-27
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