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Introduction to Medical Imaging Theory and Spatial Metadata
Provide an introductory overview of medical imaging formats and spatial metadata.
Explain the fundamental concepts and principles underlying medical imaging.
Give a theoretical overview of functionalities under development, excluding usage examples.
Describe various image transformation functions, including:
Brightness transform
Contrast augmentation transform
Gamma Transform
Gaussian noise transform
Rician noise transform
Mirror transform
Scale transform
Gaussian blur transform
Simulate low-resolution transform
Elastic deformation transform
4.Explain the concept of K-fold cross-validation and its relevance in model evaluation.
Discuss the concept of probabilistic oversampling and its application in image segmentation tasks.
Explain how probabilistic oversampling techniques can enhance the robustness of segmentation models.
Describe the importance of standardizing image spacing, origin, and orientation.
Explain Largest Component Analysis utility in identifying and analyzing the largest connected components within datasets.
Give a brief introduction to hyperparameter tuning techniques.
Explain the usage of the Hyperopt package for automated hyperparameter optimization.
Contact
If you will be intrested contact me on Julia slack (Jakub Mitura) so I can support your effort, explain better what it is about , and clarify any issues :)
The text was updated successfully, but these errors were encountered:
Provide an introductory overview of medical imaging formats and spatial metadata.
Explain the fundamental concepts and principles underlying medical imaging.
Brightness transform
Contrast augmentation transform
Gamma Transform
Gaussian noise transform
Rician noise transform
Mirror transform
Scale transform
Gaussian blur transform
Simulate low-resolution transform
Elastic deformation transform
4.Explain the concept of K-fold cross-validation and its relevance in model evaluation.
Explain how probabilistic oversampling techniques can enhance the robustness of segmentation models.
Explain the usage of the Hyperopt package for automated hyperparameter optimization.
Contact
If you will be intrested contact me on Julia slack (Jakub Mitura) so I can support your effort, explain better what it is about , and clarify any issues :)
The text was updated successfully, but these errors were encountered: