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Jisoo Jeong
Jisoo Jeong
Qualcomm AI research
Verified email at qti.qualcomm.com - Homepage
Title
Cited by
Cited by
Year
Enhancement of SSD by concatenating feature maps for object detection
J Jeong, H Park, N Kwak
BMVC 2017, 2017
447*2017
Consistency-based Semi-supervised Learning for Object detection
J Jeong, S Lee, J Kim, N Kwak
Advances in Neural Information Processing Systems, 10758-10767, 2019
4452019
Interpolation-based semi-supervised learning for object detection
J Jeong, V Verma, M Hyun, J Kannala, N Kwak
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2021
802021
Class-Imbalanced Semi-Supervised Learning
M Hyun, J Jeong, N Kwak
ICLRW 2021 (RobustML Workshop), 2020
612020
MUM: Mix Image Tiles and UnMix Feature Tiles for Semi-Supervised Object Detection
JM Kim, J Jang, S Seo, J Jeong, J Na, N Kwak
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2022
432022
Imposing Consistency for Optical Flow Estimation
J Jeong, JM Lin, F Porikli, N Kwak
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2022
422022
Two-layer Residual Feature Fusion for Object Detection
J Choi, K Lee, J Jeong, N Kwak
ICPRAM 2019, 2017
33*2017
Tell Me What They're Holding: Weakly-supervised Object Detection with Transferable Knowledge from Human-object Interaction
D Kim, G Lee, J Jeong, N Kwak
AAAI 2020, 2019
222019
Structural Similarity Index for Image Assessment Using Pixel Difference and Saturation Awareness
J Jeong, YJ Kim
Journal of KIISE 41 (10), 847-858, 2014
122014
Distractflow: Improving optical flow estimation via realistic distractions and pseudo-labeling
J Jeong, H Cai, R Garrepalli, F Porikli
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2023
92023
Self-Training using selection network for Semi-Supervised Learning
J Jeong, S Lee, N Kwak
ICPRAM 2020, 2020
8*2020
Superpixel-based semantic segmentation trained by statistical process control
H Park, J Jeong, Y Yoo, N Kwak
BMVC 2017, 2017
72017
Mamo: Leveraging memory and attention for monocular video depth estimation
R Yasarla, H Cai, J Jeong, Y Shi, R Garrepalli, F Porikli
Proceedings of the IEEE/CVF International Conference on Computer Vision …, 2023
62023
Dift: Dynamic iterative field transforms for memory efficient optical flow
R Garrepalli, J Jeong, RC Ravindran, JM Lin, F Porikli
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2023
52023
Futuredepth: Learning to predict the future improves video depth estimation
R Yasarla, MK Singh, H Cai, Y Shi, J Jeong, Y Zhu, S Han, R Garrepalli, ...
arXiv preprint arXiv:2403.12953, 2024
32024
Supervised learning and occlusion masking for optical flow estimation
JM Lin, J Jeong, FM Porikli
US Patent 12,039,742, 2024
12024
Ocai: Improving optical flow estimation by occlusion and consistency aware interpolation
J Jeong, H Cai, R Garrepalli, JM Lin, M Hayat, F Porikli
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern …, 2024
12024
Monocular image depth estimation with attention
R Yasarla, H Cai, J Jeong, R Garrepalli, SHI Yunxiao, FM Porikli
US Patent App. 18/538,869, 2024
2024
Scaling for depth estimation
H Cai, ZHU Yinhao, J Jeong, SHI Yunxiao, FM Porikli
US Patent App. 18/481,050, 2024
2024
Realistic distraction and pseudo-labeling regularization for optical flow estimation
J Jeong, R Garrepalli, H Cai, FM Porikli
US Patent App. 18/477,493, 2024
2024
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