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Won Kim

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3 papers
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3

NeurIPS Conference 2012 Conference Paper

Wavelet based multi-scale shape features on arbitrary surfaces for cortical thickness discrimination

  • Won Kim
  • Deepti Pachauri
  • Charles Hatt
  • Moo. Chung
  • Sterling Johnson
  • Vikas Singh

Hypothesis testing on signals defined on surfaces (such as the cortical surface) is a fundamental component of a variety of studies in Neuroscience. The goal here is to identify regions that exhibit changes as a function of the clinical condition under study. As the clinical questions of interest move towards identifying very early signs of diseases, the corresponding statistical differences at the group level invariably become weaker and increasingly hard to identify. Indeed, after a multiple comparisons correction is adopted (to account for correlated statistical tests over all surface points), very few regions may survive. In contrast to hypothesis tests on point-wise measurements, in this paper, we make the case for performing statistical analysis on multi-scale shape descriptors that characterize the local topological context of the signal around each surface vertex. Our descriptors are based on recent results from harmonic analysis, that show how wavelet theory extends to non-Euclidean settings (i. e. , irregular weighted graphs). We provide strong evidence that these descriptors successfully pick up group-wise differences, where traditional methods either fail or yield unsatisfactory results. Other than this primary application, we show how the framework allows performing cortical surface smoothing in the native space without mappint to a unit sphere.

ICRA Conference 2001 Conference Paper

Visual Tracking using Snake for Object's Discrete Motion

  • Won Kim
  • Ju-Jang Lee

An active contour model, Snake, as a useful segmenting and tracking tool for rigid or non-rigid (deformable) objects, was developed by Kass (1987). Snake was designed on the basis of Snake energies. Segmenting and tracking can be executed successfully by the process of energy minimization. Kass' Snake can be applied to the case of small changes between images because its solutions can be achieved on the basis of variational approach. If a somewhat fast moving object exists in successive images, Kass' Snake will operates not well because the moving object may have large differences in its position or form between successive images. Snake's nodes may fall into the local minima in their motion to the new positions of the target object in next image. When the motion is too large to apply image flow energy for tracking, a jump mode is proposed for solving the problem. The vector used to make Snake's nodes jump to a new location can be obtained by processing the image flow. The effectiveness of the proposed Snake is confirmed by simulations.

IROS Conference 1999 Conference Paper

An active contour model using image flow for tracking a moving object

  • Won Kim
  • Sun-Gi Hong
  • Ju-Jang Lee

An active contour model was developed as a useful segmenting and tracking tool for rigid or nonrigid objects. Snake, one of the active contour models (ACMs), is designed on the basis of Snake energies. Segmenting and tracking can be executed successfully by the process of energy minimization. The ability to contract is a important process for segmenting objects from images, but the contraction forces of Kass' Snake are dependent on the object's form. In this research, new contraction energy, independent of the object's form, is proposed for the segmentation. Kass' Snake can be applied to the case of small changes between two images because its solutions can be obtained from the basis of variational approach. Furthermore considering the case that the motion is too large to apply image flow energy to tracking. A jump mode was proposed for solving the problem.