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Autor: Shen, Jianhong (Comienzo)
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: Shen, Jianhong
Título: Bayesian Video Dejittering by the BV Image Model
Páginas/Colación: pp. 1691 -1708
Url: Ir a http://epubs.siam.org/sam-bin/dbq/article/41869http://epubs.siam.org/sam-bin/dbq/article/41869
SIAM Journal on Applied Mathematics Vol. 64, no. 5 June/July 2004
Información de existenciaInformación de existencia

Palabras Claves: Palabras: BAYESIAN BAYESIAN, Palabras: BOUNDED VARIATION BOUNDED VARIATION, Palabras: LINE JITTERING LINE JITTERING, Palabras: PARTIAL DIFFERENTIAL EQUATIONS PARTIAL DIFFERENTIAL EQUATIONS, Palabras: VARIATIONAL VARIATIONAL, Palabras: VIDEO VIDEO

Resumen
Line jittering, or random horizontal displacement in video images, occurs when the synchronization signals are corrupted in video storage media, or by electromagnetic interference in wireless video transmission. The goal of intrinsic video dejittering is to recover the ideal video directly from the observed jittered and often noisy frames. The existing approaches in the literature are mostly based on local or semilocal filtering techniques and autoregressive image models and are complemented by various image processing tools. In this paper, based on the statistical rationale of Bayesian inference, we propose the first variational dejittering model based on the bounded variation (BV) image model, which is global, clean and self-contained, and intrinsically combines dejittering with denoising. The mathematical properties of the model are studied based on the direct method of calculus of variations. We design one effective algorithm and present its computational implementation based on techniques from numerical partial differential equations (PDEs) and nonlinear optimizations.

Registro 2 de 2, Base de información BIBCYT
Publicación seriada
Referencias AnalíticasReferencias Analíticas
Autor: Shen, Jianhong ; Jung, Yoon-Mo
Título: Weberized Mumford-Shah Model with Bose-Einstein Photon Noise
Páginas/Colación: pp. 331-358
Url: Ir a http://www.springerlink.com/content/172467181w543245/?p=09c89a50a12a446c87787f281c26727c&pi=3http://www.springerlink.com/content/172467181w543245/?p=09c89a50a12a446c87787f281c26727c&pi=3
Applied Mathematics & Optimization: An International Journal with Applcations to Stochastics Vol. 53 no. 3 May/June 2006
Información de existenciaInformación de existencia

Palabras Claves: Palabras: BAYESIAN BAYESIAN, Palabras: BOSE-EINSTEIN DISTRIBUTION BOSE-EINSTEIN DISTRIBUTION, Palabras: COMPUTATIONAL PDE COMPUTATIONAL PDE, Palabras: CONVERGENCE CONVERGENCE, Palabras: FREE BOUNDARY FREE BOUNDARY, Palabras: LIGHT ADAPTIVITY LIGHT ADAPTIVITY, Palabras: MUMFORD MUMFORD, Palabras: MUMFORD-SHAH SEGMENTATION MUMFORD-SHAH SEGMENTATION, Palabras: NOISE NOISE, Palabras: RETINA RETINA, Palabras: VARIATIONAL VARIATIONAL, Palabras: WEBER'S LAW WEBER'S LAW

Resumen
RESUMEN

RESUMEN

 

Human vision works equally well in a large dynamic range of light intensities, from only a few photons to typical midday sunlight. Contributing to such remarkable flexibility is a famous law in perceptual (both visual and aural) psychology and psychophysics known as Weber's Law. The current paper develops a new segmentation model based on the integration of Weber's Law and the celebrated Mumford-Shah segmentation model (Comm. Pure Appl. Math., vol. 42, pp. 577-685, 1989). Explained in detail are issues concerning why the classical Mumford-Shah model lacks light adaptivity, and why its "weberized" version can more faithfully reflect human vision's superior segmentation capability in a variety of illuminance conditions from dawn to dusk. It is also argued that the popular Gaussian noise model is physically inappropriate for the weberization procedure. As a result, the intrinsic thermal noise of photon ensembles is introduced based on Bose and Einstein's distributions in quantum statistics, which turns out to be compatible with weberization both analytically and computationally. The current paper focuses on both the theory and computation of the weberized Mumford-Shah model with Bose-Einstein noise. In particular, Ambrosio-Tortorelli's Γ-convergence approximation theory is adapted (Boll. Un. Mat. Ital. B, vol. 6, pp. 105-123, 1992), and stable numerical algorithms are developed for the associated pair of nonlinear Euler-Lagrange PDEs.

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

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