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Featured researches published by Seonhee Park.


international conference on consumer electronics | 2017

Low-light image enhancement using variational optimization-based Retinex model

Seonhee Park; Byeongho Moon; Seungyong Ko; Soohwan Yu; Joonki Paik

This paper presents an optimization-based low-light image enhancement method using spatially adaptive �������� -norm based Retinex model. The proposed method adaptively enforces the regularization parameter using the spatially adaptive weight map, which is generated using the bright channel prior (BCP) and local variance map. Since the proposed weight map assigns the smaller weight value at the bright and edge region, the proposed method can perform weak noise reduction to preserve the edges and textures. In addition, the simplified version of the proposed method is presented using the FFT and quantized weight values for the application to consumer devices. Experimental results show that the proposed method can provide better enhanced result without the ι2 -norm minimization artifacts at the low computational cost.


Signal Processing-image Communication | 2017

Variational framework for low-light image enhancement using optimal transmission map and combined ℓ1 and ℓ2-minimization

Seungyong Ko; Soohwan Yu; Seonhee Park; Byeongho Moon; Wonseok Kang; Joonki Paik

Abstract This paper presents a novel variational framework for low-light image enhancement. The proposed enhancement algorithm simultaneously performs brightness enhancement and noise reduction using a variational optimization. An edge-preserved noise reduction is performed by minimizing the total variation constraint term in the energy function. In addition, the proposed method estimates the optimal transmission map to restore the low-light image by minimizing the l 2 -norm smoothness and data-fidelity terms. To minimize the proposed energy functional, the proposed method splits the l 1 -derivative term under the split Bregman iteration framework. The performance of the proposed method is evaluated using both simulated and natural low-light images. Experimental results show that the proposed enhancement method can significantly improve the quality of the low-light images without noise amplification.


international conference on consumer electronics berlin | 2016

Local self similarity-based super-resolution for asymmetric dual-camera

Byeongho Moon; Soohwan Yu; Seungyong Ko; Seonhee Park; Joonki Paik

This paper presents a super-resolution (SR) method for the asymmetric dual-camera system. The proposed method restores the high-resolution (HR) image using the local self-similarity between two input images as wide- and tele-view images. The proposed method consists of three steps: registration and warping processes to reduce the disparity between the input images, high-frequency patch extraction from the tele-view image, and super-resolution reconstruction using local self-similarity property. Experimental results show that the proposed method can significantly restore the HR image than existing interpolation and SR methods.


international conference on computer graphics and interactive techniques | 2009

Special habitation

Gyuwan Choe; Jin WanPark; Seonhee Park; Eunsun Jang; Hoyeon Jang

A new urban development in the area north of the Han river raises many complex questions. How much living space will be provided for residents? What will happen to the current residents of the area? How does the new development fit into the national housing plan? Who will profit from the development? The residents? The politicians? The real estate developers?


Eurasip Journal on Image and Video Processing | 2017

Low-light image restoration using bright channel prior-based variational Retinex model

Seonhee Park; Byeongho Moon; Seungyong Ko; Soohwan Yu; Joonki Paik


IEEE Transactions on Consumer Electronics | 2017

Low-light image enhancement using variational optimization-based retinex model

Seonhee Park; Soohwan Yu; Byeongho Moon; Seungyong Ko; Joonki Paik


IEIE Transactions on Smart Processing and Computing | 2018

Contrast Enhancement for Low-light Image Enhancement: A Survey

Seonhee Park; Ki-Yeon Kim; Soohwan Yu; Joonki Paik


IEEE Access | 2018

Dual Autoencoder Network for Retinex-Based Low-Light Image Enhancement

Seonhee Park; Soohwan Yu; Minseo Kim; Kwanwoo Park; Joonki Paik


Journal of The Optical Society of America A-optics Image Science and Vision | 2017

Continuous digital zooming using local self-similarity-based super-resolution for an asymmetric dual camera system

Byeongho Moon; Soohwan Yu; Seungyong Ko; Seonhee Park; Joonki Paik


IEEE Transactions on Consumer Electronics | 2018

An Optimal Low Dynamic Range Image Generation Method Using a Neural Network

Kwanwoo Park; Soohwan Yu; Seonhee Park; Sangkeun Lee; Joonki Paik

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