2011
DOI: 10.1111/j.1467-8659.2011.02023.x
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Deformable 3D Shape Registration Based on Local Similarity Transforms

Abstract: In this paper, a new method for deformable 3D shape registration is proposed. The algorithm computes shape transitions based on local similarity transforms which allows to model not only as-rigid-as-possible deformations but also local and global scale. We formulate an ordinary differential equation (ODE) which describes the transition of a source shape towards a target shape. We assume that both shapes are roughly pre-aligned (e.g., frames of a motion sequence). The ODE consists of two terms. The first one ca… Show more

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Cited by 39 publications
(38 citation statements)
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“…Yamazaki et al [30] extended ARAP energy to as-similar-as-possible (ASAP) energy with spokes discrete cells. The work in [21] is a variation of shape matching [19] called similarity shape matching. Although these techniques utilize similar mapping to enable them to address size difference and shear distortion, they do not consider the smoothness regularization, which shows that they are incapable of handling large changes in pose or shape.…”
Section: Related Workmentioning
confidence: 99%
See 3 more Smart Citations
“…Yamazaki et al [30] extended ARAP energy to as-similar-as-possible (ASAP) energy with spokes discrete cells. The work in [21] is a variation of shape matching [19] called similarity shape matching. Although these techniques utilize similar mapping to enable them to address size difference and shear distortion, they do not consider the smoothness regularization, which shows that they are incapable of handling large changes in pose or shape.…”
Section: Related Workmentioning
confidence: 99%
“…Many works [9,30,32] regard the closest points as goal positions; however, correspondences chosen by these approaches are not quite appropriate as they only consider distances between the closest points of template and target surface. Inspired by [21,22], we concern feature descriptors and smooth factor additionally. Starting from the closest points on the target, we then flood over their neighbors to find out the smallest matching energy points until converge.…”
Section: Correspondence Constraintsmentioning
confidence: 99%
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“…Drawback of this method is that the processing cost increases due to the iterative process. Papazov and Burschka proposed a method for deformable 3-D shape registration by computing shape transitions based on local similarity transforms (Papazov and Burschka, 2011). They formulated an ordinary differential equation which describes the transition of a source shape towards a target shape.…”
Section: -D Deformablementioning
confidence: 99%