Difference between revisions of "Inseop Chung"

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<li> Jaeyoung Yoo, Hojun Lee, Seunghyeon Seo, '''Inseop Chung''', Nojun Kwak, "End-to-End Multi-Object Detection with a Regularized Mixture Model", Fortieth International Conference on Machine Learning (ICML 2023), July 2023  
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<li> Jaeyoung Yoo, Hojun Lee, Seunghyeon Seo, '''Inseop Chung''', Nojun Kwak, "End-to-End Multi-Object Detection with a Regularized Mixture Model", Fortieth International Conference on Machine Learning ('''ICML 2023'''), July 2023  
 
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Revision as of 14:31, 25 April 2023

Inseop.png Inseop Chung (정인섭)

서울대학교 융합과학부 석박통합과정 (2019.03 ~ )
연세대학교 창의기술경영/컴퓨터과학 학사 졸업 (2019.02)


Tel: +82-31-888-9579
e-mail: jis3613@snu.ac.kr
Google Scholar Linkedin

Research Interests

Deep Learning, Computer Vision, Knowledge Distillation, Domain Adaptation

Work Experience

  • January 2022 ~ July 2022:
    Research Intern at Qualcomm AI Research, Korea.
  • June 2020 ~ December 2020:
    Research Intern at Naver Webtoons Corporation, Korea.

Education

  • Mar. 2019 ~ Present:
    M.S./Ph.D. Student in Graduate School of Convergence Science and Technology, Seoul National University, Korea.
  • Feb. 2019:
    B.S. in Computer Science / Creative Technology Management (Double Major), Yonsei University, Korea.
  • Oct. 2016 ~ Aug. 2017:
    Exchange Student at Informatik (Computer Science) Department of Technische Universität München (Technical University of Munich), Germany.

Publications

International Conferences


Domestic Conferences
  • Hojun Lee, Inseop Chung, Nojun Kwak, "Multi-modal sensor based framework for object detection", The 16th Korea Robotics Society Annual Conference (KRoC 2021), May. 2021


International Journal
  • DongKi Noh, Chang Ki Sung, Taeyoung Uhm, Wooju Lee, Hyungtae Lim, Jaeseok Choi, Kyuewang Lee, Dasol Hong, Daeho Um, Inseop Chung, Hochul Shin, Min-Jung Kim, Hyoung-Rock Kim, Seung-Min Baek, Hyun Myung, "X-MAS: Extremely Large-Scale Multi-Modal Sensor Dataset for Outdoor Surveillance in Real Environments", IEEE Robotics and Automation Letters (RA-L), Jan. 2023

Projects

  • Development of multimodal sensor-based intelligent systems for outdoor surveillance robots, 2019.3 ~ 2021.12