Title :
Support Vectors Learning for Vector Field Reconstruction
Author :
Lage, Marcos ; Castro, Rener ; Petronetto, Fabiano ; Bordignon, Alex ; Tavares, Geovan ; Lewiner, Thomas ; Lopes, Hélio
Author_Institution :
Dept. of Math., PUC-Rio, Rio de Janeiro, Brazil
Abstract :
Sampled vector fields generally appear as measurements of real phenomena. They can be obtained by the use of a particle image velocimetry acquisition device, or as the result of a physical simulation, such as a fluid flow simulation, among many examples. This paper proposes to formulate the unstructured vector field reconstruction and approximation through Machine-Learning. The machine learns from the samples a global vector field estimation function that could be evaluated at arbitrary points from the whole domain. Using an adaptation of the support vector regression method for multi-scale analysis, the proposed method provides a global, analytical expression for the reconstructed vector field through an efficient non-linear optimization. Experiments on artificial and real data show a statistically robust behavior of the proposed technique.
Keywords :
image reconstruction; nonlinear programming; regression analysis; support vector machines; fluid flow simulation; machine learning; multiscale analysis; nonlinear optimization; particle image velocimetry acquisition device; support vector learning; support vector regression; vector field reconstruction; Anisotropic magnetoresistance; Brain modeling; Computer graphics; Diffusion tensor imaging; Image processing; Image segmentation; Level set; Magnetic resonance imaging; Solid modeling; Tensile stress; Support Vector Machine; Vector Field;
Conference_Titel :
Computer Graphics and Image Processing (SIBGRAPI), 2009 XXII Brazilian Symposium on
Conference_Location :
Rio de Janiero
Print_ISBN :
978-1-4244-4978-1
Electronic_ISBN :
1550-1834
DOI :
10.1109/SIBGRAPI.2009.20