Mixed geometry information regularization for image multiplicative denoising
- URL: http://arxiv.org/abs/2412.16445v1
- Date: Sat, 21 Dec 2024 02:24:42 GMT
- Title: Mixed geometry information regularization for image multiplicative denoising
- Authors: Shengkun Yang, Zhichang Guo, Jia Li, Fanghui Song, Wenjuan Yao,
- Abstract summary: This paper focuses on solving the multiplicative gamma denoising problem via a variation model.
To overcome these issues, in this paper we propose a mixed information model, incorporating area geometry term and curvature term as prior knowledge.
- Score: 12.43943610396014
- License:
- Abstract: This paper focuses on solving the multiplicative gamma denoising problem via a variation model. Variation-based regularization models have been extensively employed in a variety of inverse problem tasks in image processing. However, sufficient geometric priors and efficient algorithms are still very difficult problems in the model design process. To overcome these issues, in this paper we propose a mixed geometry information model, incorporating area term and curvature term as prior knowledge. In addition to its ability to effectively remove multiplicative noise, our model is able to preserve edges and prevent staircasing effects. Meanwhile, to address the challenges stemming from the nonlinearity and non-convexity inherent in higher-order regularization, we propose the efficient additive operator splitting algorithm (AOS) and scalar auxiliary variable algorithm (SAV). The unconditional stability possessed by these algorithms enables us to use large time step. And the SAV method shows higher computational accuracy in our model. We employ the second order SAV algorithm to further speed up the calculation while maintaining accuracy. We demonstrate the effectiveness and efficiency of the model and algorithms by a lot of numerical experiments, where the model we proposed has better features texturepreserving properties without generating any false information.
Related papers
- Accelerated zero-order SGD under high-order smoothness and overparameterized regime [79.85163929026146]
We present a novel gradient-free algorithm to solve convex optimization problems.
Such problems are encountered in medicine, physics, and machine learning.
We provide convergence guarantees for the proposed algorithm under both types of noise.
arXiv Detail & Related papers (2024-11-21T10:26:17Z) - Erasing Undesirable Influence in Diffusion Models [51.225365010401006]
Diffusion models are highly effective at generating high-quality images but pose risks, such as the unintentional generation of NSFW (not safe for work) content.
In this work, we introduce EraseDiff, an algorithm designed to preserve the utility of the diffusion model on retained data while removing the unwanted information associated with the data to be forgotten.
arXiv Detail & Related papers (2024-01-11T09:30:36Z) - A Fast Minimization Algorithm for the Euler Elastica Model Based on a
Bilinear Decomposition [5.649764770305694]
We propose a new, fast, hybrid alternating minimization (HALM) algorithm for the Euler Elastica (EE) model.
The HALM algorithm comprises three sub-minimization problems and each is either solved in the closed form or approximated by fast solvers.
A host of numerical experiments are conducted to show that the new algorithm produces good results with much-improved efficiency.
arXiv Detail & Related papers (2023-08-25T16:15:38Z) - Best-Subset Selection in Generalized Linear Models: A Fast and
Consistent Algorithm via Splicing Technique [0.6338047104436422]
Best subset section has been widely regarded as the Holy Grail of problems of this type.
We proposed and illustrated an algorithm for best subset recovery in mild conditions.
Our implementation achieves approximately a fourfold speedup compared to popular variable selection toolkits.
arXiv Detail & Related papers (2023-08-01T03:11:31Z) - An Optimization-based Deep Equilibrium Model for Hyperspectral Image
Deconvolution with Convergence Guarantees [71.57324258813675]
We propose a novel methodology for addressing the hyperspectral image deconvolution problem.
A new optimization problem is formulated, leveraging a learnable regularizer in the form of a neural network.
The derived iterative solver is then expressed as a fixed-point calculation problem within the Deep Equilibrium framework.
arXiv Detail & Related papers (2023-06-10T08:25:16Z) - Optimal Algorithms for the Inhomogeneous Spiked Wigner Model [89.1371983413931]
We derive an approximate message-passing algorithm (AMP) for the inhomogeneous problem.
We identify in particular the existence of a statistical-to-computational gap where known algorithms require a signal-to-noise ratio bigger than the information-theoretic threshold to perform better than random.
arXiv Detail & Related papers (2023-02-13T19:57:17Z) - Dual Optimization for Kolmogorov Model Learning Using Enhanced Gradient
Descent [8.714458129632158]
Kolmogorov model (KM) is an interpretable and predictable representation approach to learning the underlying probabilistic structure of a set of random variables.
We propose a computationally scalable KM learning algorithm, based on the regularized dual optimization combined with enhanced gradient descent (GD) method.
It is shown that the accuracy of logical relation mining for interpretability by using the proposed KM learning algorithm exceeds $80%$.
arXiv Detail & Related papers (2021-07-11T10:33:02Z) - Scalable Derivative-Free Optimization for Nonlinear Least-Squares
Problems [0.6445605125467572]
Derivative-free - or zeroth-order - optimization (DFO) has gained recent attention for its ability to solve problems in a variety of application areas.
We develop a novel model-based DFO method for solving nonlinear-squares problems.
arXiv Detail & Related papers (2020-07-26T23:25:17Z) - Effective Dimension Adaptive Sketching Methods for Faster Regularized
Least-Squares Optimization [56.05635751529922]
We propose a new randomized algorithm for solving L2-regularized least-squares problems based on sketching.
We consider two of the most popular random embeddings, namely, Gaussian embeddings and the Subsampled Randomized Hadamard Transform (SRHT)
arXiv Detail & Related papers (2020-06-10T15:00:09Z) - Active Model Estimation in Markov Decision Processes [108.46146218973189]
We study the problem of efficient exploration in order to learn an accurate model of an environment, modeled as a Markov decision process (MDP)
We show that our Markov-based algorithm outperforms both our original algorithm and the maximum entropy algorithm in the small sample regime.
arXiv Detail & Related papers (2020-03-06T16:17:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.