2020
DOI: 10.1137/19m126044x
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Dictionary Learning for Two-Dimensional Kendall Shapes

Abstract: We propose a novel sparse dictionary learning method for planar shapes in the sense of Kendall, namely configurations of landmarks in the plane considered up to similitudes. Our shape dictionary method provides a good trade-off between algorithmic simplicity and faithfulness with respect to the nonlinear geometric structure of Kendall's shape space. Remarkably, it boils down to a classical dictionary learning formulation modified using complex weights. Existing dictionary learning methods extended to nonlinear… Show more

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Cited by 3 publications
(1 citation statement)
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References 44 publications
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“…In spline AC methods, objects are segmented with a spline interpolated curve that deforms in the image following the minimization of a handcrafted energy functional. Beyond segmentation itself, the main advantage of these approaches is to provide a continuously-defined description of the object contour as a parametric curve that can readily be used to, e.g., perform statistical shape analysis [12]. The flexibility of spline curves makes them suitable for a variety of segmentation problems, but their optimization requires domain-expertise, restricting their use in practice.…”
Section: Introductionmentioning
confidence: 99%
“…In spline AC methods, objects are segmented with a spline interpolated curve that deforms in the image following the minimization of a handcrafted energy functional. Beyond segmentation itself, the main advantage of these approaches is to provide a continuously-defined description of the object contour as a parametric curve that can readily be used to, e.g., perform statistical shape analysis [12]. The flexibility of spline curves makes them suitable for a variety of segmentation problems, but their optimization requires domain-expertise, restricting their use in practice.…”
Section: Introductionmentioning
confidence: 99%