Browse "School of Computing(전산학부)" by Author Tompkin, James

Showing results 1 to 8 of 8

1
Differentiable Appearance Acquisition from a Flash/No-flash RGB-D Pair

Ku, Hyun Jin; Ha, Hyunho; Lee, Joo Ho; Kang, Dahyun; Tompkin, James; Kim, Min Hyuk, International Conference on Computational Photography, ICCP 2022, IEEE, 2022-08-03

2
Differentiable Diffusion for Dense Depth Estimation from Multi-view Images

Khan, Numair; Kim, Min Hyuk; Tompkin, James, IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp.8908 - 8917, IEEE, 2021-06-23

3
Edge-aware Bi-directional Diffusion for Dense Depth Estimation from Light Fields

Khan, Numair; Kim, Min Hyuk; Tompkin, James, The 32nd British Machine Vision Conference, BMVC 2021, The British Machine Vision Association, 2021-11-22

4
Efficient Learning of Image Super-Resolution and Compression Artifact Removal with Semi-Local Gaussian Processes

Kwon, Younghee; Kim, Kwang In; Tompkin, James; Kim, Jin Hyung; Theobalt, Christian, IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, v.37, no.9, pp.1792 - 1805, 2015-09

5
FloatingFusion: Depth from ToF and Image-stabilized Stereo Cameras

Meuleman, Andreas; Kim, Ha Kyeong; Tompkin, James; Kim, Min Hyuk, European Conference on Computer Vision, ECCV 2022, pp.602 - 618, Springer Science, 2022-10-25

6
Preference and Artifact Analysis for Video Transitions of Places

Tompkin, James; Kim, Min-Hyuk; Kim, Kwang-In; Kautz, Jan; Theobalt, Christian, ACM TRANSACTIONS ON APPLIED PERCEPTION, v.10, no.3, 2013-08

7
View-consistent 4D Light Field Depth Estimation

Khan, Numair; Kim, Min Hyuk; Tompkin, James, British Machine Vision Conference (BMVC 2020), British Machine Vision Association (BMVA), 2020-09-10

8
View-consistent 4D Light Field Superpixel Segmentation

Khan, Numair; Zhang, Qian; Kasser, Lucas; Stone, Henry; Kim, Min Hyuk; Tompkin, James, IEEE/CVF International Conference on Computer Vision (ICCV), pp.7810 - 7818, IEEE, 2019-11-01

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