401 research outputs found

    Variational models for multiplicative noise removal

    Get PDF
    ν•™μœ„λ…Όλ¬Έ (박사)-- μ„œμšΈλŒ€ν•™κ΅ λŒ€ν•™μ› μžμ—°κ³Όν•™λŒ€ν•™ μˆ˜λ¦¬κ³Όν•™λΆ€, 2017. 8. κ°•λͺ…μ£Ό.This dissertation discusses a variational partial differential equation (PDE) models for restoration of images corrupted by multiplicative Gamma noise. The two proposed models are suitable for heavy multiplicative noise which is often seen in applications. First, we propose a total variation (TV) based model with local constraints. The local constraint involves multiple local windows which is related a spatially adaptive regularization parameter (SARP). In addition, convergence analysis such as the existence and uniqueness of a solution is also provided. Second model is an extension of the first one using nonconvex version of the total generalized variation (TGV). The nonconvex TGV regularization enables to efficiently denoise smooth regions, without staircasing artifacts that appear on total variation regularization based models, and to conserve edges and details.1. Introduction 1 2. Previous works 6 2.1 Variational models for image denoising 6 2.2.1 Convex and nonconvex regularizers 6 2.2.2 Variational models for multiplicative noise removal 8 2.2 Proximal linearized alternating direction method of multipliers 10 3. Proposed models 13 3.1 Proposed model 1 :exp TV model with SARP 13 3.1.1 Derivation of our model 13 3.1.2 Proposed TV model with local constraints 16 3.1.3 A SARP algorithm for solving model (3.1.16) 27 3.1.4 Numerical results 32 3.2 Proposed model 2 :exp NTGV model with SARP 51 3.2.1 Proposed NTGV model 51 3.2.2 Updating rule for Ξ»(x)\lambda(x) in (3.2.1) 52 3.2.3 Algorithm for solving the proposed model (3.2.1) 55 3.2.4 Numerical results 62 3.2.5 Selection of parameters 63 3.2.6 Image denoising 65 4. Conclusion 79Docto

    λΉ„κ°€μš°μ‹œμ•ˆ 작음 μ˜μƒ 볡원을 μœ„ν•œ κ·Έλ£Ή ν¬μ†Œ ν‘œν˜„

    Get PDF
    ν•™μœ„λ…Όλ¬Έ(박사)--μ„œμšΈλŒ€ν•™κ΅ λŒ€ν•™μ› :μžμ—°κ³Όν•™λŒ€ν•™ μˆ˜λ¦¬κ³Όν•™λΆ€,2020. 2. κ°•λͺ…μ£Ό.For the image restoration problem, recent variational approaches exploiting nonlocal information of an image have demonstrated significant improvements compared with traditional methods utilizing local features. Hence, we propose two variational models based on the sparse representation of image groups, to recover images with non-Gaussian noise. The proposed models are designed to restore image with Cauchy noise and speckle noise, respectively. To achieve efficient and stable performance, an alternating optimization scheme with a novel initialization technique is used. Experimental results suggest that the proposed methods outperform other methods in terms of both visual perception and numerical indexes.μ˜μƒ 볡원 λ¬Έμ œμ—μ„œ, μ˜μƒμ˜ 비ꡭ지적인 정보λ₯Ό ν™œμš©ν•˜λŠ” 졜근의 λ‹€μ–‘ν•œ μ ‘κ·Ό 방식은 ꡭ지적인 νŠΉμ„±μ„ ν™œμš©ν•˜λŠ” κΈ°μ‘΄ 방법과 λΉ„κ΅ν•˜μ—¬ 크게 κ°œμ„ λ˜μ—ˆλ‹€. λ”°λΌμ„œ, μš°λ¦¬λŠ” λΉ„κ°€μš°μ‹œμ•ˆ 작음 μ˜μƒμ„ λ³΅μ›ν•˜κΈ° μœ„ν•΄ μ˜μƒ κ·Έλ£Ή ν¬μ†Œ ν‘œν˜„μ— κΈ°λ°˜ν•œ 두 가지 변뢄법적 λͺ¨λΈμ„ μ œμ•ˆν•œλ‹€. μ œμ•ˆλœ λͺ¨λΈμ€ 각각 μ½”μ‹œ 작음과 μŠ€νŽ™ν΄ 작음 μ˜μƒμ„ λ³΅μ›ν•˜λ„λ‘ μ„€κ³„λ˜μ—ˆλ‹€. 효율적이고 μ•ˆμ •μ μΈ μ„±λŠ₯을 λ‹¬μ„±ν•˜κΈ° μœ„ν•΄, κ΅λŒ€ λ°©ν–₯ μŠΉμˆ˜λ²•κ³Ό μƒˆλ‘œμš΄ μ΄ˆκΈ°ν™” 기술이 μ‚¬μš©λœλ‹€. μ‹€ν—˜ κ²°κ³ΌλŠ” μ œμ•ˆλœ 방법이 μ‹œκ°μ μΈ 인식과 수치적인 μ§€ν‘œ λͺ¨λ‘μ—μ„œ λ‹€λ₯Έ 방법보닀 μš°μˆ˜ν•¨μ„ λ‚˜νƒ€λ‚Έλ‹€.1 Introduction 1 2 Preliminaries 5 2.1 Cauchy Noise 5 2.1.1 Introduction 6 2.1.2 Literature Review 7 2.2 Speckle Noise 9 2.2.1 Introduction 10 2.2.2 Literature Review 13 2.3 GSR 15 2.3.1 Group Construction 15 2.3.2 GSR Modeling 16 2.4 ADMM 17 3 Proposed Models 19 3.1 Proposed Model 1: GSRC 19 3.1.1 GSRC Modeling via MAP Estimator 20 3.1.2 Patch Distance for Cauchy Noise 22 3.1.3 The ADMM Algorithm for Solving (3.7) 22 3.1.4 Numerical Experiments 28 3.1.5 Discussion 45 3.2 Proposed Model 2: GSRS 48 3.2.1 GSRS Modeling via MAP Estimator 50 3.2.2 Patch Distance for Speckle Noise 52 3.2.3 The ADMM Algorithm for Solving (3.42) 53 3.2.4 Numerical Experiments 56 3.2.5 Discussion 69 4 Conclusion 74 Abstract (in Korean) 84Docto

    The Application of Preconditioned Alternating Direction Method of Multipliers in Depth from Focal Stack

    Get PDF
    Post capture refocusing effect in smartphone cameras is achievable by using focal stacks. However, the accuracy of this effect is totally dependent on the combination of the depth layers in the stack. The accuracy of the extended depth of field effect in this application can be improved significantly by computing an accurate depth map which has been an open issue for decades. To tackle this issue, in this paper, a framework is proposed based on Preconditioned Alternating Direction Method of Multipliers (PADMM) for depth from the focal stack and synthetic defocus application. In addition to its ability to provide high structural accuracy and occlusion handling, the optimization function of the proposed method can, in fact, converge faster and better than state of the art methods. The evaluation has been done on 21 sets of focal stacks and the optimization function has been compared against 5 other methods. Preliminary results indicate that the proposed method has a better performance in terms of structural accuracy and optimization in comparison to the current state of the art methods.Comment: 15 pages, 8 figure
    • …
    corecore