AirLab: Autograd Image Registration Laboratory
Robin Sandk\"uhler, Christoph Jud, Simon Andermatt, Philippe C. Cattin

TL;DR
AIRLab is an open, flexible Python-based environment that simplifies medical image registration by automating gradient computation and supporting rapid prototyping on CPU and GPU.
Contribution
It introduces an open laboratory platform that automates gradient calculations and facilitates reproducible, rapid development of image registration methods using PyTorch and SimpleITK.
Findings
Automates gradient computation for registration tasks
Supports CPU and GPU for large images and complex models
Enables rapid prototyping and reproducibility
Abstract
Medical image registration is an active research topic and forms a basis for many medical image analysis tasks. Although image registration is a rather general concept specialized methods are usually required to target a specific registration problem. The development and implementation of such methods has been tough so far as the gradient of the objective has to be computed. Also, its evaluation has to be performed preferably on a GPU for larger images and for more complex transformation models and regularization terms. This hinders researchers from rapid prototyping and poses hurdles to reproduce research results. There is a clear need for an environment which hides this complexity to put the modeling and the experimental exploration of registration methods into the foreground. With the "Autograd Image Registration Laboratory" (AIRLab), we introduce an open laboratory for image…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Advanced Neural Network Applications · Medical Imaging Techniques and Applications
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