2019
DOI: 10.1007/978-3-030-22368-7_17
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Total Variation and Mean Curvature PDEs on the Space of Positions and Orientations

Abstract: Total variation regularization and total variation flows (TVF) have been widely applied for image enhancement and denoising. To include a generic preservation of crossing curvilinear structures in TVF we lift images to the homogeneous space M = R d S d−1 of positions and orientations as a Lie group quotient in SE(d). For d = 2 this is called 'total roto-translation variation' by Chambolle & Pock. We extend this to d = 3, by a PDE-approach with a limiting procedure for which we prove convergence. We also includ… Show more

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Cited by 8 publications
(10 citation statements)
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“…Nevertheless, our method can still be used on such data sets, but would not be aware of the relationship between DWIs beyond the angular domain. Other approaches to build the dictionary could be used to inform the algorithm and potentially increase performance on such data sets by explicitly modeling the spatial and angular relationship (Schwab et al, 2018) or using an adaptive weighting considering the b-values in the angular domain (Duits, St-Onge, Portegies, & Smets, 2019) amongst other possible strategies. This weighting strategy could be used for repeated acquisitions or if multishell data sets without an equal repartition of the data across shells needs to be harmonized instead of the strictly angular criterion we used in this manuscript.…”
Section: Limitations Of Our Algorithm and Possible Improvementsmentioning
confidence: 99%
“…Nevertheless, our method can still be used on such data sets, but would not be aware of the relationship between DWIs beyond the angular domain. Other approaches to build the dictionary could be used to inform the algorithm and potentially increase performance on such data sets by explicitly modeling the spatial and angular relationship (Schwab et al, 2018) or using an adaptive weighting considering the b-values in the angular domain (Duits, St-Onge, Portegies, & Smets, 2019) amongst other possible strategies. This weighting strategy could be used for repeated acquisitions or if multishell data sets without an equal repartition of the data across shells needs to be harmonized instead of the strictly angular criterion we used in this manuscript.…”
Section: Limitations Of Our Algorithm and Possible Improvementsmentioning
confidence: 99%
“…-A proof for the theorem of the strong convergence, stability and accuracy of TV flows. This result was announced in [25] but not yet proven.…”
Section: Remark 2 (Additional Content In This Version)mentioning
confidence: 95%
“…This article is an extended version of the authors' SSVM article by the same name [25]. The following content is new:…”
Section: Remark 2 (Additional Content In This Version)mentioning
confidence: 99%
See 1 more Smart Citation
“…Nevertheless, our method can still be used on such datasets, but would not be aware of the relationship between DWIs beyond the angular domain. Other approaches to build the dictionary could be used to inform the algorithm and potentially increase performance on such datasets by explicitly modeling the spatial and angular relationship (Schwab et al, 2018) or using an adaptive weighting considering the b-values in the angular domain (Duits et al, 2019) amongst other possible strategies. Modeling explicitly the angular part of the signal could also be used to sample new gradients directions directly, an aspect we covered in the original CDMRI challenge by using the spherical harmonics basis (Descoteaux et al, 2007).…”
Section: Limitationsmentioning
confidence: 99%