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Eunju Cha

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DeepPhaseCut: Deep Relaxation in Phase for Unsupervised Fourier Phase Retrieval

Nov 20, 2020
Eunju Cha, Chanseok Lee, Mooseok Jang, Jong Chul Ye

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Two-Stage Deep Learning for Accelerated 3D Time-of-Flight MRA without Matched Training Data

Aug 04, 2020
Hyungjin Chung, Eunju Cha, Leonard Sunwoo, Jong Chul Ye

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Unsupervised Deep Learning for MR Angiography with Flexible Temporal Resolution

Mar 29, 2020
Eunju Cha, Hyungjin Chung, Eung Yeop Kim, Jong Chul Ye

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Geometric Approaches to Increase the Expressivity of Deep Neural Networks for MR Reconstruction

Mar 17, 2020
Eunju Cha, Gyutaek Oh, Jong Chul Ye

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Boosting CNN beyond Label in Inverse Problems

Jun 18, 2019
Eunju Cha, Jaeduck Jang, Junho Lee, Eunha Lee, Jong Chul Ye

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k-Space Deep Learning for Parallel MRI: Application to Time-Resolved MR Angiography

Jun 10, 2018
Eunju Cha, Eung Yeop Kim, Jong Chul Ye

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Deep Convolutional Framelets: A General Deep Learning Framework for Inverse Problems

Jan 25, 2018
Jong Chul Ye, Yoseob Han, Eunju Cha

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