The Role of Data and Models for Deep-Learning Based Image Reconstruction

The Role of Data and Models for Deep-Learning Based Image Reconstruction

Institute for Pure & Applied Mathematics (IPAM) via YouTube Direct link

Intro

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1 of 18

Intro

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The Role of Data and Models for Deep-Learning Based Image Reconstruction

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  1. 1 Intro
  2. 2 Scaling language models
  3. 3 Data set sizes in imaging tasks are small
  4. 4 Expected performance behavior
  5. 5 U-net-based denoising
  6. 6 U-net-based accelerated MRI
  7. 7 Swin transformer based denoising
  8. 8 Reconstruction methods
  9. 9 What we might expect
  10. 10 Dataset shift
  11. 11 Adversarially filtered shift
  12. 12 Goal: improve performance unter distribution shifts
  13. 13 For classification problems, "natural distribution shifts are an open research problem"
  14. 14 Improving performance for 11-minimization is easy
  15. 15 Test time training
  16. 16 Closing the distribution shift performance gap for anatomy shift
  17. 17 Closing the distribution shift performance gap with test-time-training
  18. 18 References

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