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Image registration plays a vital role in understanding changes that occur in 2D and 3D scientific imaging datasets. Registration involves finding a spatial transformation that aligns one image to another by optimizing relevant image similarity metrics. In this paper, we introduce itk-elastix, a userfriendly Python wrapping of the mature elastix registration toolbox. The open-source tool supports rigid, affine, and B-spline deformable registration, making it versatile for various imaging datasets. By utilizing the modular design of itk-elastix, users can efficiently configure and compare different registration methods, and embed these in image analysis workflows. The current poster is presented in SciPy 2023 conference.
medical imaging, image analysis, registration, elastix, ITK, wrapping, Python
medical imaging, image analysis, registration, elastix, ITK, wrapping, Python
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