465 research outputs found

    Noises Removal for Images in Nakagami Fading Channels by Wavelet-Based Bayesian Estimator

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    Image Multi-Noise Removal by Wavelet-Based Bayesian Estimator

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    Image Noise Removal in Nakagami Fading Channels via Bayesian Estimator

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    Image and Its Noise Removal in Nakagami Fading Channels

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    Image reconstruction under non-Gaussian noise

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    Effective SAR image despeckling based on bandlet and SRAD

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    Despeckling of a SAR image without losing features of the image is a daring task as it is intrinsically affected by multiplicative noise called speckle. This thesis proposes a novel technique to efficiently despeckle SAR images. Using an SRAD filter, a Bandlet transform based filter and a Guided filter, the speckle noise in SAR images is removed without losing the features in it. Here a SAR image input is given parallel to both SRAD and Bandlet transform based filters. The SRAD filter despeckles the SAR image and the despeckled output image is used as a reference image for the guided filter. In the Bandlet transform based despeckling scheme, the input SAR image is first decomposed using the bandlet transform. Then the coefficients obtained are thresholded using a soft thresholding rule. All coefficients other than the low-frequency ones are so adjusted. The generalized cross-validation (GCV) technique is employed here to find the most favorable threshold for each subband. The bandlet transform is able to extract edges and fine features in the image because it finds the direction where the function gives maximum value and in the same direction it builds extended orthogonal vectors. Simple soft thresholding using an optimum threshold despeckles the input SAR image. The guided filter with the help of a reference image removes the remaining speckle from the bandlet transform output. In terms of numerical and visual quality, the proposed filtering scheme surpasses the available despeckling schemes

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

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    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

    Contourlet Domain Image Modeling and its Applications in Watermarking and Denoising

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    Statistical image modeling in sparse domain has recently attracted a great deal of research interest. Contourlet transform as a two-dimensional transform with multiscale and multi-directional properties is known to effectively capture the smooth contours and geometrical structures in images. The objective of this thesis is to study the statistical properties of the contourlet coefficients of images and develop statistically-based image denoising and watermarking schemes. Through an experimental investigation, it is first established that the distributions of the contourlet subband coefficients of natural images are significantly non-Gaussian with heavy-tails and they can be best described by the heavy-tailed statistical distributions, such as the alpha-stable family of distributions. It is shown that the univariate members of this family are capable of accurately fitting the marginal distributions of the empirical data and that the bivariate members can accurately characterize the inter-scale dependencies of the contourlet coefficients of an image. Based on the modeling results, a new method in image denoising in the contourlet domain is proposed. The Bayesian maximum a posteriori and minimum mean absolute error estimators are developed to determine the noise-free contourlet coefficients of grayscale and color images. Extensive experiments are conducted using a wide variety of images from a number of databases to evaluate the performance of the proposed image denoising scheme and to compare it with that of other existing schemes. It is shown that the proposed denoising scheme based on the alpha-stable distributions outperforms these other methods in terms of the peak signal-to-noise ratio and mean structural similarity index, as well as in terms of visual quality of the denoised images. The alpha-stable model is also used in developing new multiplicative watermark schemes for grayscale and color images. Closed-form expressions are derived for the log-likelihood-based multiplicative watermark detection algorithm for grayscale images using the univariate and bivariate Cauchy members of the alpha-stable family. A multiplicative multichannel watermark detector is also designed for color images using the multivariate Cauchy distribution. Simulation results demonstrate not only the effectiveness of the proposed image watermarking schemes in terms of the invisibility of the watermark, but also the superiority of the watermark detectors in providing detection rates higher than that of the state-of-the-art schemes even for the watermarked images undergone various kinds of attacks
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