Title of article :
Implicit and Nonparametric Shape Reconstruction from Unorganized Data Using a Variational Level Set Method
Author/Authors :
Zhao، Hong-Kai نويسنده , , Osher، Stanley نويسنده , , Merriman، Barry نويسنده , , Kang، Myungjoo نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Pages :
-294
From page :
295
To page :
0
Abstract :
In this paper we consider a fundamental visualization problem: shape reconstruction from an unorganized data set. A new minimal-surface-like model and its variational and partial differential equation (PDE) formulation are introduced. In our formulation only distance to the data set is used as our input. Moreover, the distance is computed with optimal speed using a new numerical PDE algorithm. The data set can include points, curves, and surface patches. Our model has a natural scaling in the nonlinear regularization that allows flexibility close to the data set while it also minimizes oscillations between data points. To find the final shape, we continuously deform an initial surface following the gradient flow of our energy functional. An offset (an exterior contour) of the distance function to the data set is used as our initial surface. We have developed a new and efficient algorithm to find this initial surface. We use the level set method in our numerical computation in order to capture the deformation of the initial surface and to find an implicit representation (using the signed distance function) of the final shape on a fixed rectangular grid. Our variational/PDE approach using the level set method allows us to handle complicated topologies and noisy or highly nonuniform data sets quite easily. The constructed shape is smoother than any piecewise linear reconstruction. Moreover, our approach is easily scalable for different resolutions and works in any number of space dimensions.
Keywords :
structure from motion , projective methods , invariants , self-calibration , fusing , multi-frame structure from motion , Kalman filtering , trilinear reconstruction , Bayesian methods , experimental evaluation , optimization
Journal title :
COMPUTER VISION & IMAGE UNDERSTANDING
Serial Year :
2000
Journal title :
COMPUTER VISION & IMAGE UNDERSTANDING
Record number :
33977
Link To Document :
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