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Dive into the research topics where Myeongmin Kang is active.

Publication


Featured researches published by Myeongmin Kang.


Journal of Scientific Computing | 2014

Variational Image Segmentation Models Involving Non-smooth Data-Fidelity Terms

Miyoun Jung; Myeongmin Kang; Myungjoo Kang

This article introduces a class of piecewise-constant image segmentation models that involves


Journal of Scientific Computing | 2013

Accelerated Bregman Method for Linearly Constrained \ell _1–\ell _2 Minimization

Myeongmin Kang; Sangwoon Yun; Hyenkyun Woo; Myungjoo Kang


Computational Optimization and Applications | 2015

Inexact accelerated augmented Lagrangian methods

Myeongmin Kang; Myungjoo Kang; Miyoun Jung

L^1


Journal of Scientific Computing | 2017

Total Generalized Variation Based Denoising Models for Ultrasound Images

Myeongmin Kang; Myungjoo Kang; Miyoun Jung


Journal of Visual Communication and Image Representation | 2015

Nonconvex higher-order regularization based Rician noise removal with spatially adaptive parameters

Myeongmin Kang; Myungjoo Kang; Miyoun Jung

L1 norms as data fidelity measures. The


Journal of Visual Communication and Image Representation | 2018

Rician denoising and deblurring using sparse representation prior and nonconvex total variation

Myeongmin Kang; Miyoun Jung; Myungjoo Kang


Journal of Scientific Computing | 2018

Image Colorization Based on a Generalization of the Low Dimensional Manifold Model

Myeongmin Kang; Myungjoo Kang; Miyoun Jung

L^1


Computers & Mathematics With Applications | 2018

Higher-order regularization based image restoration with automatic regularization parameter selection

Myeongmin Kang; Miyoun Jung; Myungjoo Kang


Communications in Mathematical Sciences | 2013

Exponential synchronization of finite-dimensional Kuramoto model at critical coupling strength

Young-Pil Choi; Seung-Yeal Ha; Myeongmin Kang; Myungjoo Kang

L1 norms enable to segment images with low contrast or outliers such as impulsive noise. The regions to be segmented are represented as smooth functions instead of the Heaviside expression of level set functions as in the level set method. In order to deal with both non-smooth data-fitting and regularization terms, we use the variable splitting scheme to obtain constrained optimization problems, and apply an augmented Lagrangian method to solve the problems. This results in fast and efficient iterative algorithms for piecewise-constant image segmentation. The segmentation framework is extended to vector-valued images as well as to a multi-phase model to deal with arbitrary number of regions. We show comparisons with Chan-Vese models that use


Multidimensional Systems and Signal Processing | 2018

Sparse representation based image deblurring model under random-valued impulse noise

Myeongmin Kang; Myungjoo Kang; Miyoun Jung

Collaboration


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Myungjoo Kang

Seoul National University

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Miyoun Jung

Hankuk University of Foreign Studies

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Hanwool Na

Seoul National University

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Sangwoon Yun

Sungkyunkwan University

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Seung-Yeal Ha

Korea Institute for Advanced Study

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Hyenkyun Woo

Georgia Institute of Technology

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