Search Results for author: Il Yong Chun

Found 17 papers, 4 papers with code

Self-supervised regression learning using domain knowledge: Applications to improving self-supervised denoising in imaging

no code implementations10 May 2022 Il Yong Chun, Dongwon Park, Xuehang Zheng, Se Young Chun, Yong Long

Regression that predicts continuous quantity is a central part of applications using computational imaging and computer vision technologies.

Image Denoising regression +1

Accelerated MRI With Deep Linear Convolutional Transform Learning

no code implementations17 Apr 2022 Hongyi Gu, Burhaneddin Yaman, Steen Moeller, Il Yong Chun, Mehmet Akçakaya

Recent studies show that deep learning (DL) based MRI reconstruction outperforms conventional methods, such as parallel imaging and compressed sensing (CS), in multiple applications.

MRI Reconstruction Rolling Shutter Correction

Self-supervised regression learning using domain knowledge: Applications to improving self-supervised image denoising

no code implementations29 Sep 2021 Il Yong Chun, Dongwon Park, Xuehang Zheng, Se Young Chun, Yong Long

Regression that predicts continuous quantity is a central part of applications using computational imaging and computer vision technologies.

Image Denoising regression +1

Improved Real-Time Monocular SLAM Using Semantic Segmentation on Selective Frames

no code implementations30 Apr 2021 Jinkyu Lee, Muhyun Back, Sung Soo Hwang, Il Yong Chun

Second, conventional monocular SLAM uses inappropriate mapping factors such as dynamic objects and low-parallax areas in mapping.

Autonomous Driving Segmentation +2

Momentum-Net for Low-Dose CT Image Reconstruction

no code implementations27 Feb 2020 Siqi Ye, Yong Long, Il Yong Chun

We also investigated the spectral normalization technique that applies to image refining NN learning to satisfy the nonexpansive NN property; however, experimental results show that this does not improve the image reconstruction performance of Momentum-Net.

Image Denoising Image Reconstruction

BCD-Net for Low-dose CT Reconstruction: Acceleration, Convergence, and Generalization

no code implementations4 Aug 2019 Il Yong Chun, Xuehang Zheng, Yong Long, Jeffrey A. Fessler

Numerical results with phantom data show that applying faster numerical solvers to model-based image reconstruction (MBIR) modules of BCD-Net leads to faster and more accurate BCD-Net; BCD-Net significantly improves the reconstruction accuracy, compared to the state-of-the-art MBIR method using learned transforms; BCD-Net achieves better image quality, compared to a state-of-the-art iterative NN architecture, ADMM-Net.

Computed Tomography (CT) Image Reconstruction +1

Momentum-Net: Fast and convergent iterative neural network for inverse problems

no code implementations26 Jul 2019 Il Yong Chun, Zhengyu Huang, Hongki Lim, Jeffrey A. Fessler

Iterative neural networks (INN) are rapidly gaining attention for solving inverse problems in imaging, image processing, and computer vision.

Image Reconstruction regression

Improved low-count quantitative PET reconstruction with an iterative neural network

1 code implementation5 Jun 2019 Hongki Lim, Il Yong Chun, Yuni K. Dewaraja, Jeffrey A. Fessler

Image reconstruction in low-count PET is particularly challenging because gammas from natural radioactivity in Lu-based crystals cause high random fractions that lower the measurement signal-to-noise-ratio (SNR).

Image Reconstruction

Convolutional Analysis Operator Learning: Dependence on Training Data

3 code implementations21 Feb 2019 Il Yong Chun, David Hong, Ben Adcock, Jeffrey A. Fessler

Convolutional analysis operator learning (CAOL) enables the unsupervised training of (hierarchical) convolutional sparsifying operators or autoencoders from large datasets.

Open-Ended Question Answering Operator learning

Deep BCD-Net Using Identical Encoding-Decoding CNN Structures for Iterative Image Recovery

no code implementations20 Feb 2018 Il Yong Chun, Jeffrey A. Fessler

In "extreme" computational imaging that collects extremely undersampled or noisy measurements, obtaining an accurate image within a reasonable computing time is challenging.

Denoising

Convolutional Analysis Operator Learning: Acceleration and Convergence

5 code implementations15 Feb 2018 Il Yong Chun, Jeffrey A. Fessler

This paper proposes a new convolutional analysis operator learning (CAOL) framework that learns an analysis sparsifying regularizer with the convolution perspective, and develops a new convergent Block Proximal Extrapolated Gradient method using a Majorizer (BPEG-M) to solve the corresponding block multi-nonconvex problems.

Dictionary Learning Operator learning

Sparse-View X-Ray CT Reconstruction Using $\ell_1$ Prior with Learned Transform

no code implementations2 Nov 2017 Xuehang Zheng, Il Yong Chun, Zhipeng Li, Yong Long, Jeffrey A. Fessler

Our results with the extended cardiac-torso (XCAT) phantom data and clinical chest data show that, for sparse-view 2D fan-beam CT and 3D axial cone-beam CT, PWLS-ST-$\ell_1$ improves the quality of reconstructed images compared to the CT reconstruction methods using edge-preserving regularizer and $\ell_2$ prior with learned ST.

Computed Tomography (CT) Denoising +1

Convolutional Dictionary Learning: Acceleration and Convergence

1 code implementation3 Jul 2017 Il Yong Chun, Jeffrey A. Fessler

However, the parameter tuning process is not trivial due to its data dependence and, in practice, the convergence of AL methods depends on the AL parameters for nonconvex CDL problems.

Dictionary Learning Image Denoising

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