Hierarchical adaptive local affine registration for fast and robust respiratory motion estimation

[Display omitted] ► Non-rigid image registrations are computationally complex. ► Ongoing research in alternative approaches like multiple locally affine components. ► We consider a hierarchical affine block registration scheme with regular splitting. ► A novel adaptive splitting reduces registration...

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Veröffentlicht in:Medical image analysis 2011-08, Vol.15 (4), p.551-564
Hauptverfasser: Buerger, Christian, Schaeffter, Tobias, King, Andrew P.
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Sprache:eng
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Zusammenfassung:[Display omitted] ► Non-rigid image registrations are computationally complex. ► Ongoing research in alternative approaches like multiple locally affine components. ► We consider a hierarchical affine block registration scheme with regular splitting. ► A novel adaptive splitting reduces registration error by 49.1%. Non-rigid image registration techniques are commonly used to estimate complex tissue deformations in medical imaging. A range of non-rigid registration algorithms have been proposed, but they typically have high computational complexity. To reduce this complexity, combinations of multiple less complex deformations have been proposed such as hierarchical techniques which successively split the non-rigid registration problem into multiple locally rigid or affine components. However, to date the splitting has been regular and the underlying image content has not been considered in the splitting process. This can lead to errors and artefacts in the resulting motion fields. In this paper, we propose three novel adaptive splitting techniques, an image-based, a similarity-based, and a motion-based technique within a hierarchical framework which attempt to process regions of similar motion and/or image structure in single registration components. We evaluate our technique on free-breathing whole-chest 3D MRI data from 10 volunteers and two publicly available CT datasets. We demonstrate a reduction in registration error of up to 49.1% over a non-adaptive technique and compare our results with a commonly used free-form registration algorithm.
ISSN:1361-8415
1361-8423
DOI:10.1016/j.media.2011.02.009