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Dive into the research topics where Sunghyun Cho is active.

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Featured researches published by Sunghyun Cho.


international conference on computer graphics and interactive techniques | 2009

Fast motion deblurring

Sunghyun Cho; Seungyong Lee

This paper presents a fast deblurring method that produces a deblurring result from a single image of moderate size in a few seconds. We accelerate both latent image estimation and kernel estimation in an iterative deblurring process by introducing a novel prediction step and working with image derivatives rather than pixel values. In the prediction step, we use simple image processing techniques to predict strong edges from an estimated latent image, which will be solely used for kernel estimation. With this approach, a computationally efficient Gaussian prior becomes sufficient for deconvolution to estimate the latent image, as small deconvolution artifacts can be suppressed in the prediction. For kernel estimation, we formulate the optimization function using image derivatives, and accelerate the numerical process by reducing the number of Fourier transforms needed for a conjugate gradient method. We also show that the formulation results in a smaller condition number of the numerical system than the use of pixel values, which gives faster convergence. Experimental results demonstrate that our method runs an order of magnitude faster than previous work, while the deblurring quality is comparable. GPU implementation facilitates further speed-up, making our method fast enough for practical use.


international conference on computational photography | 2013

Edge-based blur kernel estimation using patch priors

Libin Sun; Sunghyun Cho; Jue Wang; James Hays

Blind image deconvolution, i.e., estimating a blur kernel k and a latent image x from an input blurred image y, is a severely ill-posed problem. In this paper we introduce a new patch-based strategy for kernel estimation in blind deconvolution. Our approach estimates a “trusted” subset of x by imposing a patch prior specifically tailored towards modeling the appearance of image edge and corner primitives. To choose proper patch priors we examine both statistical priors learned from a natural image dataset and a simple patch prior from synthetic structures. Based on the patch priors, we iteratively recover the partial latent image x and the blur kernel k. A comprehensive evaluation shows that our approach achieves state-of-the-art results for uniformly blurred images.


international conference on computer vision | 2007

Removing Non-Uniform Motion Blur from Images

Sunghyun Cho; Yasuyuki Matsushita; Seungyong Lee

We propose a method for removing non-uniform motion blur from multiple blurry images. Traditional methods focus on estimating a single motion blur kernel for the entire image. In contrast, we aim to restore images blurred by unknown, spatially varying motion blur kernels caused by different relative motions between the camera and the scene. Our algorithm simultaneously estimates multiple motions, motion blur kernels, and the associated image segments. We formulate the problem as a regularized energy function and solve it using an alternating optimization technique. Real- world experiments demonstrate the effectiveness of the proposed method.


international conference on computer graphics and interactive techniques | 2012

Video deblurring for hand-held cameras using patch-based synthesis

Sunghyun Cho; Jue Wang; Seungyong Lee

Videos captured by hand-held Cameras often contain significant camera shake, causing many frames to be blurry. Restoring shaky videos not only requires smoothing the camera motion and stabilizing the content, but also demands removing blur from video frames. However, video blur is hard to remove using existing single or multiple image deblurring techniques, as the blur kernel is both spatially and temporally varying. This paper presents a video deblurring method that can effectively restore sharp frames from blurry ones caused by camera shake. Our method is built upon the observation that due to the nature of camera shake, not all video frames are equally blurry. The same object may appear sharp on some frames while blurry on others. Our method detects sharp regions in the video, and uses them to restore blurry regions of the same content in nearby frames. Our method also ensures that the deblurred frames are both spatially and temporally coherent using patch-based synthesis. Experimental results show that our method can effectively remove complex video blur under the presence of moving objects and other outliers, which cannot be achieved using previous deconvolution-based approaches.


computer vision and pattern recognition | 2013

Handling Noise in Single Image Deblurring Using Directional Filters

Lin Zhong; Sunghyun Cho; Dimitris N. Metaxas; Sylvain Paris; Jue Wang

State-of-the-art single image deblurring techniques are sensitive to image noise. Even a small amount of noise, which is inevitable in low-light conditions, can degrade the quality of blur kernel estimation dramatically. The recent approach of Tai and Lin [17] tries to iteratively denoise and deblur a blurry and noisy image. However, as we show in this work, directly applying image denoising methods often partially damages the blur information that is extracted from the input image, leading to biased kernel estimation. We propose a new method for handling noise in blind image deconvolution based on new theoretical and practical insights. Our key observation is that applying a directional low-pass filter to the input image greatly reduces the noise level, while preserving the blur information in the orthogonal direction to the filter. Based on this observation, our method applies a series of directional filters at different orientations to the input image, and estimates an accurate Radon transform of the blur kernel from each filtered image. Finally, we reconstruct the blur kernel using inverse Radon transform. Experimental results on synthetic and real data show that our algorithm achieves higher quality results than previous approaches on blurry and noisy images.


international conference on computer vision | 2011

Handling outliers in non-blind image deconvolution

Sunghyun Cho; Jue Wang; Seungyong Lee

Non-blind deconvolution is a key component in image deblurring systems. Previous deconvolution methods assume a linear blur model where the blurred image is generated by a linear convolution of the latent image and the blur kernel. This assumption often does not hold in practice due to various types of outliers in the imaging process. Without proper outlier handling, previous methods may generate results with severe ringing artifacts even when the kernel is estimated accurately. In this paper we analyze a few common types of outliers that cause previous methods to fail, such as pixel saturation and non-Gaussian noise. We propose a novel blur model that explicitly takes these outliers into account, and build a robust non-blind deconvolution method upon it, which can effectively reduce the visual artifacts caused by outliers. The effectiveness of our method is demonstrated by experimental results on both synthetic and real-world examples.


international conference on image processing | 2009

Image retargeting using importance diffusion

Sunghyun Cho; Hanul Choi; Yasuyuki Matsushita; Seungyong Lee

This paper presents a simple and effective image retargeting method that preserves visually important parts while reducing unwanted distortions of an image. Our approach is based on a novel importance diffusion scheme, which propagates importance of removed pixels to their neighbors for preserving visual contexts and avoiding over-shrinkage of unimportant parts. Importance diffusion enables even a simple row/column removal method, which removes the least important rows/columns repeatedly, to produce visually pleasant results. It also provides control over the trade-off between uniform and non-uniform sampling for the row/column removal and seam carving methods. Experimental result demonstrates that importance diffusion successfully improves the retargeting results of row/column removal and seam carving.


international conference on computer graphics and interactive techniques | 2013

A no-reference metric for evaluating the quality of motion deblurring

Yiming Liu; Jue Wang; Sunghyun Cho; Adam Finkelstein; Szymon Rusinkiewicz

Methods to undo the effects of motion blur are the subject of intense research, but evaluating and tuning these algorithms has traditionally required either user input or the availability of ground-truth images. We instead develop a metric for automatically predicting the perceptual quality of images produced by state-of-the-art deblurring algorithms. The metric is learned based on a massive user study, incorporates features that capture common deblurring artifacts, and does not require access to the original images (i.e., is noreference). We show that it better matches user-supplied rankings than previous approaches to measuring quality, and that in most cases it outperforms conventional full-reference image-similarity measures. We demonstrate applications of this metric to automatic selection of optimal algorithms and parameters, and to generation of fused images that combine multiple deblurring results.


Biomaterials | 2010

Amyloid hydrogel derived from curly protein fibrils of α-synuclein

Ghibom Bhak; Soonkoo Lee; Jae Woo Park; Sunghyun Cho; Seung R. Paik

Elucidation of molecular assembly mechanism of protein-based suprastructure formation is pivotal to develop biomaterials. A single amyloidogenic protein of alpha-synuclein turned into two morphologically distinctive amyloid fibrils - curly (CAF) vs. straight (SAF) - depending on its fibrillation processes. Mutually exclusive production of CAF and SAF was achieved with either centrifugal membrane filtration of the preformed oligomeric species of alpha-synuclein or agitated incubation of its monomeric form, representing amyloidogeneses via double-concerted and nucleation-dependent fibrillation model, respectively. Differences in secondary structures of CAF and SAF have been suggested to be responsible for their morphological uniqueness with structural flexibility and mechanical strength. Both polymorphs exerted the self-propagation property, demonstrating that their characteristic morphologies were inherited for two consecutive generations to daughter and granddaughter fibrils through the seed-dependent fibrillation procedure. Accumulation of CAF produced amyloid hydrogel composed of fine nano-scaled three-dimensional protein fibrillar network. The hydrogel made of daughter CAF was demonstrated to be a suitable nanomatrix for enzyme entrapment, which protected the entrapped enzyme of horseradish peroxidase from loss of activity due to multiple catalyses and heat treatment. The nano-scaled fibrillar network of CAF, therefore, could exhibit a full potential to be further applied in the promising areas of nanobiotechnology including tissue engineering, drug delivery, nanofiltration and biosensor development.


Computer Graphics Forum | 2012

Registration Based Non-uniform Motion Deblurring

Sunghyun Cho; Hojin Cho; Yu-Wing Tai; Seungyong Lee

This paper proposes an algorithm which uses image registration to estimate a non‐uniform motion blur point spread function (PSF) caused by camera shake. Our study is based on a motion blur model which models blur effects of camera shakes using a set of planar perspective projections (i.e., homographies). This representation can fully describe motions of camera shakes in 3D which cause non‐uniform motion blurs. We transform the non‐uniform PSF estimation problem into a set of image registration problems which estimate homographies of the motion blur model one‐by‐one through the Lucas‐Kanade algorithm. We demonstrate the performance of our algorithm using both synthetic and real world examples. We also discuss the effectiveness and limitations of our algorithm for non‐uniform deblurring.

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Seungyong Lee

Pohang University of Science and Technology

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Hojin Cho

Pohang University of Science and Technology

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James Hays

Georgia Institute of Technology

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