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Progressive DeepSSM - Python Usecase #2302

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zahidemon opened this issue Aug 6, 2024 · 0 comments
Open

Progressive DeepSSM - Python Usecase #2302

zahidemon opened this issue Aug 6, 2024 · 0 comments
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DeepSSM Use Cases Example of functionality, such as a Use Case
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@zahidemon
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Add a new Python use case based on this paper that would include the following components:

  1. Preprocessing: Data preprocessing steps (e.g., ground truth particles, augmentation) for multiple levels of correspondence points i.e. scales.
  2. Model Architecture: Adding Different backbones mentioned in the paper (Base Backbone, Unet Backbone).
  3. Loss function: Adding deep supervision and shallow supervision loss function variants.
@zahidemon zahidemon self-assigned this Aug 6, 2024
@zahidemon zahidemon added Use Cases Example of functionality, such as a Use Case DeepSSM labels Aug 6, 2024
@akenmorris akenmorris added this to the 6.6 milestone Aug 12, 2024
@akenmorris akenmorris modified the milestones: 6.6, 6.7 Oct 24, 2024
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