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Palabra: IMAGE RESTORATION (Palabras)
2 registros cumplieron la condición especificada en la base de información BIBCYT. ()
Registro 1 de 2, Base de información BIBCYT
Publicación seriada
Referencias AnalíticasReferencias Analíticas
Autor: Fornasier , Massimo ; Rauhut, Holger
Título: Recovery Algorithms for Vector-Valued Data with Joint Sparsity Constraints
Páginas/Colación: pp. 577-613
Fecha: Volume 46, Issue 2
Url: Ir a http://siamdl.aip.org/getabs/servlet/GetabsServlet?prog=normal&id=SJNAAM000046000002000577000001&idtype=cvips&gifs=Yeshttp://siamdl.aip.org/getabs/servlet/GetabsServlet?prog=normal&id=SJNAAM000046000002000577000001&idtype=cvips&gifs=Yes
Siam Journal on Numerical Analysis Vol. 44, no. 2 March/April. 2006
Información de existenciaInformación de existencia

Resumen
Vector-valued data appearing in concrete applications often possess sparse expansions with respect to a preassigned frame for each vector component individually. Additionally, different components may also exhibit common sparsity patterns. Recently, there were introduced sparsity measures that take into account such joint sparsity patterns, promoting coupling of nonvanishing components. These measures are typically constructed as weighted $\ell_1$ norms of componentwise $\ell_q$ norms of frame coefficients. We show how to compute solutions of linear inverse problems with such joint sparsity regularization constraints by fast thresholded Landweber algorithms. Next we discuss the adaptive choice of suitable weights appearing in the definition of sparsity measures. The weights are interpreted as indicators of the sparsity pattern and are iteratively updated after each new application of the thresholded Landweber algorithm. The resulting two-step algorithm is interpreted as a double-minimization scheme for a suitable target functional. We show its $\ell_2$-norm convergence. An implementable version of the algorithm is also formulated, and its norm convergence is proven. Numerical experiments in color image restoration are presented.

Registro 2 de 2, Base de información BIBCYT
Publicación seriada
Referencias AnalíticasReferencias Analíticas
Autor: Chen, Yunmei ; Levine, Stacey ; Rao, Murali
Título: Variable Exponent, Linear Growth Functionals in Image Restoration
Páginas/Colación: 1383-1406 p.
Url: Ir a http://siamdl.aip.org/getabs/servlet/GetabsServlet?prog=normal&id=SMJMAP000066000004001383000001&idtype=cvips&gifs=Yeshttp://siamdl.aip.org/getabs/servlet/GetabsServlet?prog=normal&id=SMJMAP000066000004001383000001&idtype=cvips&gifs=Yes
SIAM Journal on Applied Mathematics Vol. 66, no. 4 Mar./May 2006
Información de existenciaInformación de existencia

Palabras Claves: Palabras: BV-SPACE BV-SPACE, Palabras: IMAGE RESTORATION IMAGE RESTORATION, Palabras: LINEAR GROWTH FUNCTIONALS LINEAR GROWTH FUNCTIONALS, Palabras: VARIABLE EXPONENT VARIABLE EXPONENT

Resumen
RESUMEN

RESUMEN

 

We study a functional with variable exponent, $1\leq p(x)\leq 2$, which provides a model for image denoising, enhancement, and restoration. The diffusion resulting from the proposed model is a combination of total variation (TV)-based regularization and Gaussian smoothing. The existence, uniqueness, and long-time behavior of the proposed model are established. Experimental results illustrate the effectiveness of the model in image restoration

 

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UCLA - Biblioteca de Ciencias y Tecnologia Felix Morales Bueno

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