Jingcheng Ke | Diffusion Models | Excellence in Research

Jingcheng Ke | Diffusion Models | Excellence in Research

Dr. Jingcheng Ke, Osaka university, Japan.

Jingcheng Ke, Ph.D. πŸŽ“, is a researcher at the Institute for Datability Science, Osaka University πŸ‡―πŸ‡΅. With a Ph.D. from National Tsing Hua University (NTHU) πŸ‡ΉπŸ‡Ό, his research focuses on vision-language matching and diffusion models for image and video analysis πŸ–ΌοΈπŸ“Ή. He has worked as an AI researcher at vivo AI Lab and as an exchange student at Shenzhen Key Laboratory of Visual Object Detection and Recognition. Proficient in multiple languages πŸŒ and programming πŸ–₯️, Dr. Ke’s work bridges cutting-edge AI technologies and innovative computational methods.

Publication Profile

Googlescholar

Education & Experience:

Education

  • πŸŽ“ Ph.D. in Communications Engineering (2019–2024)
    • National Tsing Hua University, Taiwan
    • Thesis: Referring Expression Comprehension in a Graph-based Perspective and Its Generalizations
  • πŸŽ“ M.Sc. in Computer Application (2015–2018)
    • Shaanxi Normal University, China
    • Thesis: Face recognition based on virtual faces and sparse representations
  • πŸŽ“ B.Sc. in Network Engineering (2010–2014)
    • Southwest Minzu University, China
    • Thesis: An improved encryption algorithm based on Data Encryption Standard

Experience

  • πŸ§‘β€πŸ”¬ Researcher (2024–Present)
    • Institute for Datability Science, Osaka University
  • πŸ€– AI Researcher (2018–2019)
    • vivo AI Lab
  • πŸ”¬ Exchange Student (2016–2018)
    • Shenzhen Key Laboratory of Visual Object Detection and Recognition

Suitability for the Award

Dr. Jingcheng Ke is an exceptional candidate for the Excellence in Research Award, demonstrating a profound impact on AI and computational sciences. His Ph.D. research at National Tsing Hua University, focused on graph-based referring expression comprehension, has advanced the fields of vision-language matching and diffusion models for image and video analysis. With professional experience at Osaka University and vivo AI Lab, Dr. Ke has effectively bridged theoretical innovation and practical application. His technical expertise in Python, PyTorch, and C++, coupled with knowledge in matrix theory, stochastic processes, and topology, underscores his interdisciplinary strength. Dr. Ke’s groundbreaking contributions position him as a leader in AI research.

Professional Development

Dr. Jingcheng Ke’s professional journey spans academia and industry, specializing in artificial intelligence πŸ€– and computer vision πŸ‘οΈ. His Ph.D. research at NTHU explored graph-based perspectives for referring expression comprehension, advancing the intersection of vision and language technologies πŸŒ. With hands-on experience in AI innovation at vivo AI Lab and collaboration with top-tier research labs, he has honed his expertise in diffusion models and image/video analysis πŸ“Š. Proficient in coding languages like Python and PyTorch πŸ–₯️, he leverages advanced mathematical concepts like matrix theory and stochastic processes to push AI boundaries πŸš€.

Research Focus

Dr. Ke’s research is centered on the intersection of vision and language πŸ€, with a keen focus on diffusion models for image and video analysis πŸŽ₯. His work addresses challenges in vision-language matching, exploring graph-based approaches to enhance comprehension and generalization capabilities πŸ”. Passionate about advancing AI technologies, he delves into areas like sparse representation and encryption algorithms πŸ”’. By integrating robust coding skills in Python and PyTorch with theoretical foundations, his research contributes to groundbreaking advancements in artificial intelligence and computational methodologies πŸš€.

Awards and Honors

  • πŸ† Best Paper Award β€“ Recognized for excellence in vision-language research.
  • πŸ₯‡ Graduate Fellowship β€“ National Tsing Hua University, Taiwan.
  • πŸ₯‰ Outstanding Thesis Award β€“ Shaanxi Normal University, China.
  • πŸŽ–οΈ Research Excellence Recognition β€“ vivo AI Lab, 2019.
  • 🌟 Academic Merit Scholarship β€“ Southwest Minzu University, China.

Publication Highlights

  • πŸ“„ An improvement to linear regression classification for face recognition β€“ 26 citations, published in International Journal of Machine Learning and Cybernetics, 2019.
  • πŸ“˜ Referring Expression Comprehension via Enhanced Cross-modal Graph Attention Networks β€“ 12 citations, published in ACM TOMM, 2022.
  • πŸ–ΌοΈ Face recognition based on symmetrical virtual image and original training image β€“ 12 citations, published in Journal of Modern Optics, 2018.
  • πŸ“Š Sample partition and grouped sparse representation β€“ 8 citations, published in Journal of Modern Optics, 2017.
  • πŸ€– A novel grouped sparse representation for face recognition β€“ 7 citations, published in Multimedia Tools and Applications, 2019.