Jae Young Lee
9 Papers
Jae Young Lee is an academic researcher. The author has contributed to research in topics: Computer science & Engineering. The author has an hindex of 1, co-authored 3 publications.
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Papers
Few-Shot Anomaly Detection with Adversarial Loss for Robust Feature Representations
Jae Young Lee,Won-Sang Lee,Jae-Young Choi,Yongkwi Lee,Young Seog Yoon +4 more
- 04 Dec 2023
TL;DR: A few-shot anomaly detection method that integrates adversarial training loss to obtain more robust and generalized feature representations and hypothesize that adversarial loss is effective when applied to features that should have similar characteristics, such as those from the same layer in a Siamese network's parallel branches or input-output pairs of reconstruction-based methods.
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Fix the Noise: Disentangling Source Feature for Controllable Domain Translation
TL;DR: The authors propose to preserve source features within a disentangled subspace of a target feature space, which allows the model to smoothly control the degree to which it preserves source features while generating images from an entirely new domain using only a single model.
Lightweight Monocular Depth Estimation via Token-Sharing Transformer
Dong-Jae Lee,Jae Young Lee,Hyo-Jung Shon,Eojindl Yi,Yeong-Hun Park,Sung-Jin Cho,Junmo Kim +6 more
- 29 May 2023
TL;DR: In this paper , a Token-Sharing Transformer (TST) was proposed for monocular depth estimation, which utilizes global token sharing to obtain an accurate depth prediction with high throughput in embedded devices.
Fix the Noise: Disentangling Source Feature for Transfer Learning of StyleGAN
TL;DR: Wang et al. as mentioned in this paper introduced a simple feature matching loss to improve generation quality and control the degree of source features, and trained a target model with the proposed strategy, FixNoise, to preserve the source features only in a disentangled subspace of a target feature space.
Modeling Stereo-Confidence Out of the End-to-End Stereo-Matching Network via Disparity Plane Sweep
Jae Young Lee,Woonghyun Ka,Jaehyun Choi,Junmo Kim +3 more
TL;DR: A novel stereo-confidence method that measures stereo-confidence externally to stereo-matching networks, based on the disparity plane sweep concept.
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