Comments (2)
Hi, this patch-based is just an experiment, not the approach that produces my published result.
from crack_segmentation.
Interesting since it gives some good results. Is your paper published?
from crack_segmentation.
Related Issues (18)
- the link of pretraind weight of Resnet is invaild, pls resent agina. HOT 2
- Hi HOT 1
- Hello, where can I see the paper of this model? HOT 3
- Have you encountered this problem?Thanks to answer
- Code license HOT 1
- What is this project license?
- Where does the dataset Rissbilder_for_Florian come from? HOT 1
- Bro in the code their is problem HOT 1
- in the utils.py HOT 1
- where is unet_resnet_101 HOT 1
- Which paper can I study the model structure?
- the pretrained weight of resnet is invalid HOT 6
- Mask creation tool HOT 5
- Model not training with resnet101 and resnet34
- where is the joint_transforms HOT 3
- Crack mask is much more wider than the real crack
- 我跑通了您的代码,但是我没有搜到您论文的链接,可以分享您论文的题目和链接吗? HOT 4
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from crack_segmentation.