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question of inference for abdomenatlas data #11

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cclamd opened this issue May 14, 2024 · 3 comments
Open

question of inference for abdomenatlas data #11

cclamd opened this issue May 14, 2024 · 3 comments

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@cclamd
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cclamd commented May 14, 2024

hi ,this is the result of abdomenatlas data for runing the project , is it right ? it did't show segmentation for 9 class
屏幕截图_14-5-2024_16327_127 0 0 1
Warm regards

@WenxuanChelsea
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Hi @cclamd

Thanks for your interest in our work!

Regarding "running the project," are you referring to executing inference.py in the direct inference folder? If so, the figure you attached is not correct. We recommend using the singularity or docker options we've provided for convenience.

Hope this helps!

Thanks,
Wenxuan

@cclamd
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cclamd commented May 15, 2024

Hi @WenxuanChelsea
yes ,i executing inference.py in the direct inference folder,and i got combined_labels.nii.gz ,after i visulize a slice from it ,it shows as the figure attached ,so should i have to using the singularity or docker? is Option 2 not correct?
Warm regards

@cclamd
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cclamd commented Jun 24, 2024

Hi @WenxuanChelsea
i want to reproducing results using abdomenatlas data of 9 class , i used the normal unet to train on the data ,and loss is from 1 to 0.05,but when inferencing ,the results is not good
screenshot-1719380526980
screenshot-1719380496657

Epoch=15: Training (2123 / 5195 Steps) (dice_loss=1.00000, bce_loss=0.00334):
Epoch=15: Training (2134 / 5195 Steps) (dice_loss=1.00000, bce_loss=0.00203):
Epoch=13: Training (5194 / 5195 Steps) (dice_loss=1.00000, bce_loss=0.00183):

below is the result of re pretrain ,and the bce_loss is very low

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