2005
DOI: 10.1109/tmi.2005.852050
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Spatio-temporal nonrigid registration for ultrasound cardiac motion estimation

Abstract: Abstract-We propose a new spatio-temporal elastic registration algorithm for motion reconstruction from a series of images. The specific application is to estimate displacement fields from two-dimensional ultrasound sequences of the heart. The basic idea is to find a spatio-temporal deformation field that effectively compensates for the motion by minimizing a difference with respect to a reference frame. The key feature of our method is the use of a semi-local spatio-temporal parametric model for the deformati… Show more

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Cited by 255 publications
(182 citation statements)
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References 55 publications
(75 reference statements)
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“…This transformation aims at correcting probe motion during the acquisition, and adds robustness towards out-of-plane motion, as the assumption ϕ Tj ,Tj+1 = Id generally made in other works [4] is not verified in our database of 2D US sequences.…”
Section: Drift Correctionmentioning
confidence: 95%
See 1 more Smart Citation
“…This transformation aims at correcting probe motion during the acquisition, and adds robustness towards out-of-plane motion, as the assumption ϕ Tj ,Tj+1 = Id generally made in other works [4] is not verified in our database of 2D US sequences.…”
Section: Drift Correctionmentioning
confidence: 95%
“…Recent works used non-rigid registration techniques to build Statistical Atlases of Motion of the heart from magnetic resonance image sequences [3], in which the displacement fields reflect the movement of anatomical structures. The use of 4D transformation models was presented in [4] for motion tracking over sequences of images. Registration is performed between frames at time points t i and t 0 (i = 0).…”
Section: Introductionmentioning
confidence: 99%
“…The transformation model is defined as a linear combination of B-spline basis functions located on a uniform grid. B-spline functions have been widely used to represent deformations (Kybic and Unser, 2003;Ledesma-Carbayo et al, 2005;Oguro et al, 2009;Rueckert et al, 1999;Schnabel et al, 2001), motivated by their compact support, computational simplicity, good approximation properties, and implicit smoothness. We also use B-spline functions for representing continuous images derived from a set of samples (Kybic and Unser, 2003;Thévenaz and Unser, 2000).…”
Section: Problem Definition and Registration Frameworkmentioning
confidence: 99%
“…The main tool in this method is the function "f" which is an isometric map [2,3]. I will be interested to know the structure/ formula or relationship of this isometric function which most probably contains a lot of practical information of the left ventricular function and structure.…”
Section: -An Isomap Fmentioning
confidence: 99%