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Performance Do Not Improve #16
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Hello @AuliaRizky , |
Hallo @lalonderodney , Thanks for your response, Do you have any advice to solve it? Thank you very much |
hello @AuliaRizky |
I have the same problem too. If you have the solution please help me. Thanks in advance! |
Hello, U-net is doing good on the dataset. But Segcapsbasic, is not doing good. The loss isn't decreasing at all. The predictions for all pixels in binary segmentation is same. |
Hello, I'm using segcapsbasic and segnetR3 as the model for stroke segmentation of brain image using ISLES 2017 dataset. I use 25 patient 3D MRI data that I sliced (the total 2D image is 527 image) and adjusted to work with segcaps implementation. The problem is that the training performance never exceed 0.04 out_seg_dice_hard. Here is the latest training process which is stopped because the learning rate already very small:
The stroke lesion region determined based on the intensity. Since I used ADC image the intensity that shows the lesion is the one that hypointense. And it is the task for binary segmentation.
Is there any incompatibility for this algorithm to works on brain MRI?
If not, is there any suggestion to improve the performance?
Thanks
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