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Implement more loss functions #28

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pesekon2 opened this issue Dec 29, 2021 · 0 comments
Open
3 of 5 tasks

Implement more loss functions #28

pesekon2 opened this issue Dec 29, 2021 · 0 comments
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code enhancement New feature or request

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@pesekon2
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It would be nice to compare results also for trainings done using different types of loss functions. It is also being stated that boundary-based losses or compound losses could be valuable for imbalanced data.

  • distribution-based losses:
    • cross entropy
  • compound losses:
    • DiceFocal
  • region-based losses:
    • Dice
    • Tversky
  • boundary-based losses:
    • Hausdorff Distance

For more, exempli gratia: https://jeune-research.tistory.com/entry/Loss-Functions-for-Image-Segmentation-Distance-Based-Losses

@pesekon2 pesekon2 self-assigned this Dec 29, 2021
@pesekon2 pesekon2 added code enhancement New feature or request labels Jan 30, 2022
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