Jingcheng Ke | Diffusion Models | Excellence in Research
Dr. Jingcheng Ke, Osaka university, Japan.
Publication Profile
Googlescholar
Education & Experience:
Education
Β Ph.D. in Communications EngineeringΒ (2019β2024)
- National Tsing Hua University, Taiwan
- Thesis:Β Referring Expression Comprehension in a Graph-based Perspective and Its Generalizations
Β M.Sc. in Computer ApplicationΒ (2015β2018)
- Shaanxi Normal University, China
- Thesis:Β Face recognition based on virtual faces and sparse representations
Β B.Sc. in Network EngineeringΒ (2010β2014)
- Southwest Minzu University, China
- Thesis:Β An improved encryption algorithm based on Data Encryption Standard
Experience
Β ResearcherΒ (2024βPresent)
- Institute for Datability Science, Osaka University
Β AI ResearcherΒ (2018β2019)
- vivo AI Lab
Β Exchange StudentΒ (2016β2018)
- Shenzhen Key Laboratory of Visual Object Detection and Recognition
Suitability for the Award
Professional Development
Dr. Jingcheng Keβs professional journey spans academia and industry, specializing in artificial intelligenceΒ Β and computer visionΒ
. His Ph.D. research at NTHU explored graph-based perspectives for referring expression comprehension, advancing the intersection of vision and language technologiesΒ
. 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 analysisΒ
. Proficient in coding languages like Python and PyTorchΒ
, he leverages advanced mathematical concepts like matrix theory and stochastic processes to push AI boundariesΒ
.
Research Focus
Dr. Keβs research is centered on the intersection of vision and languageΒ , with a keen focus on diffusion models for image and video analysisΒ
. His work addresses challenges in vision-language matching, exploring graph-based approaches to enhance comprehension and generalization capabilitiesΒ
. Passionate about advancing AI technologies, he delves into areas like sparse representation and encryption algorithmsΒ
. By integrating robust coding skills in Python and PyTorch with theoretical foundations, his research contributes to groundbreaking advancements in artificial intelligence and computational methodologiesΒ
.
Awards and Honors
Β Best Paper AwardΒ β Recognized for excellence in vision-language research.
Β Graduate FellowshipΒ β National Tsing Hua University, Taiwan.
Β Outstanding Thesis AwardΒ β Shaanxi Normal University, China.
Β Research Excellence RecognitionΒ β vivo AI Lab, 2019.
Β Academic Merit ScholarshipΒ β Southwest Minzu University, China.
Publication Highlights
Β An improvement to linear regression classification for face recognitionΒ βΒ 26 citations, published inΒ International Journal of Machine Learning and Cybernetics, 2019.
Β Referring Expression Comprehension via Enhanced Cross-modal Graph Attention NetworksΒ βΒ 12 citations, published inΒ ACM TOMM, 2022.
Β Face recognition based on symmetrical virtual image and original training imageΒ βΒ 12 citations, published inΒ Journal of Modern Optics, 2018.
Β Sample partition and grouped sparse representationΒ βΒ 8 citations, published inΒ Journal of Modern Optics, 2017.
Β A novel grouped sparse representation for face recognitionΒ βΒ 7 citations, published inΒ Multimedia Tools and Applications, 2019.