资源论文Algebraic Methods for Direct and Feature Based Registration of Di?usion Tensor Images

Algebraic Methods for Direct and Feature Based Registration of Di?usion Tensor Images

2020-03-27 | |  59 |   39 |   0

Abstract.
We present an algebraic solution to both direct and feature- based registration of diffusion tensor images under various local defor- mation models. In the direct case, we show how to linearly recover a local deformation from the partial derivatives of the tensor using the so-called Diffusion Tensor Constancy Constraint, a generalization of the bright- ness constancy constraint to diffusion tensor data. In the feature-based case, we show that the tensor reorientation map can be found in closed form by exploiting the spectral properties of the rotation group. Given this map, solving for an a?ne deformation becomes a linear problem. We test our approach on synthetic, brain and heart diffusion tensor images.

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