detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2407.02794

Tema
Computer Science - Computer Vision... 68U10, 94A08, 65D18
Autor
He, Roy Y. Liu, Hao
Categoría

Computer Science

Año

2024

fecha de cotización

11/12/2024

Métrico

Resumen

We propose a novel model for decomposing grayscale images into three distinct components: the structural part, representing sharp boundaries and regions with strong light-to-dark transitions; the smooth part, capturing soft shadows and shades; and the oscillatory part, characterizing textures and noise.

To capture the homogeneous structures, we introduce a combination of $L^0$-gradient and curvature regularization on level lines.

This new regularization term enforces strong sparsity on the image gradient while reducing the undesirable staircase effects as well as preserving the geometry of contours.

For the smoothly varying component, we utilize the $L^2$-norm of the Laplacian that favors isotropic smoothness.

To capture the oscillation, we use the inverse Sobolev seminorm.

To solve the associated minimization problem, we design an efficient operator-splitting algorithm.

Our algorithm effectively addresses the challenging non-convex non-smooth problem by separating it into sub-problems.

Each sub-problem can be solved either directly using closed-form solutions or efficiently using the Fast Fourier Transform (FFT).

We provide systematic experiments, including ablation and comparison studies, to analyze our model's behaviors and demonstrate its effectiveness as well as efficiency.

He, Roy Y.,Liu, Hao, 2024, Euler's Elastica Based Cartoon-Smooth-Texture Image Decomposition

Documento

Abrir

Compartir

Fuente

Artículos recomendados por ES/IODE IA