Skip to content
View Seokju-Cho's full-sized avatar

Highlights

  • Pro
Block or Report

Block or report Seokju-Cho

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
Seokju-Cho/README.md

Research Interest

Visual Correspondence and its applications. e.g., Semantic Correspondence, Few-shot Segmentation, 3D Reconstruction, Novel View Synthesis, etc. Specifically, I am interested in effective model architecture for transformers or designing efficient methods for correspondence.
Generative Models. e.g., Diffusion Models, Image-to-Image Translation, etc.
Multimodal Learning. e.g., Zero-shot Segmentation, Text-guided Image Manipulation, etc.

Also, I'm always trying to study various fields not stated above for interdisciplinary research.

Education

  • Korea University, Seoul, Korea

    • M.S./Ph.D. Integrated Student in Computer Science and Engineering
    • Mar. 2022 - Present
  • Yonsei University, Seoul, Korea

    • B.S. in Computer Science
    • Mar. 2018 - Feb. 2022

Experience

  • Undergraduate Intern (Korea University CVLAB, Seoul, Korea)
    • Jan. 2021 - Feb. 2022
    • Advisor: Prof. Seungryong Kim

Publications

International Journal

CATs++: Boosting Cost Aggregation with Convolutions and Transformers

Seokju Cho*, Sunghwan Hong*, and Seungryong Kim
IEEE Trans. on Pattern Analysis and Machine Intelligence (TPAMI),
To be appeared (Impact Factor: 24.314).
[Project Page] [arXiv]

International Conference

Neural Matching Fields: Implicit Representation of Matching Fields for Visual Correspondence

Sunghwan Hong, Jisu Nam, Seokju Cho, Susung Hong, Sangryul Jeon, Dongbo Min, and Seungryong Kim
Neural Information Processing Systems (NeurIPS), 2022.
[Project Page] [arXiv]

MIDMs: Matching Interleaved Diffusion Models for Exemplar-based Image Translation

Junyoung Seo*, Gyuseong Lee*, Seokju Cho, Jiyoung Lee, Seungryong Kim
ArXiv Preprint, 2022.
[Project Page] [arXiv]

Integrative Feature and Cost Aggregation with Transformers for Dense Correspondence

Sunghwan Hong*, Seokju Cho*, Seungryong Kim, Stephen Lin
ArXiv Preprint, 2022.
[arXiv]

Cost Aggregation with 4D Convolutional Swin Transformer for Few-Shot Segmentation

Sunghwan Hong*, Seokju Cho*, Jisu Nam, Stephen Lin, and Seungryong Kim
European Conference on Computer Vision (ECCV), 2022.
[Project Page] [arXiv]

AggMatch: Aggregating Pseudo Labels for Semi-Supervised Learning

Jiwon Kim*, Kwangrok Ryoo*, Gyuseong Lee, Seokju Cho, Junyoung Seo, Daehwan Kim, Hansang Cho, and Seungryong Kim (Under Review)
ArXiv Preprint, 2021.
[arXiv]

CATs: Cost Aggregation Transformers for Visual Correspondence

Seokju Cho*, Sunghwan Hong*, Sangryul Jeon, Yunsung Lee, Kwanghoon Sohn, and Seungryong Kim
Neural Information Processing Systems (NeurIPS), 2021.
[Project Page] [arXiv] [Github]

Pinned

  1. KU-CVLAB/CAT-Seg KU-CVLAB/CAT-Seg Public

    Official Implementation of "CAT-Seg🐱: Cost Aggregation for Open-Vocabulary Semantic Segmentation"

    Python 204 18

  2. SunghwanHong/Cost-Aggregation-transformers SunghwanHong/Cost-Aggregation-transformers Public

    Official implementation of CATs

    Python 132 11

  3. Volumetric-Aggregation-Transformer Volumetric-Aggregation-Transformer Public

    Official Implementation of VAT

    Python 145 14

  4. KU-CVLAB/NeMF KU-CVLAB/NeMF Public

    Official code implementation of NeMF (NeurIPS'22)

    Python 82 2

  5. KU-CVLAB/CATs-PlusPlus KU-CVLAB/CATs-PlusPlus Public

    Official repository for CATs++: Boosting Cost Aggregation with Convolutions and Transformers (TPAMI'22)

    Python 39