Prof. Suk Chan Kim | Computer Vision Awards | Best Researcher Award

Prof. Suk Chan Kim | Computer Vision Awards | Best Researcher Award 

Prof. Suk Chan Kim, Pusan National University, South Korea

Suk Chan Kim is a distinguished scholar in the field of Electrical and Electronics Engineering, specializing in wireless mobile communications, signal processing, mesh networks, IoT, underwater communications, and artificial intelligence. He currently serves as an Assistant Professor in the Department of Electronics Engineering at Pusan National University (PNU), Korea, where he has been contributing to academia since 2002. Dr. Kim earned his Ph.D. (2000) and M.S.E. (1995) in Electrical Engineering from the Korea Advanced Institute of Science & Technology (KAIST), following a B.S.E. degree with summa cum laude honors from PNU in 1993. His postdoctoral research at Princeton University (2000–2001) further honed his expertise in advanced engineering topics. He has also worked as a researcher at the Electronics and Telecommunications Research Institute (ETRI) in Korea and as a teaching and research assistant at KAIST.

Professional Profile:

SCOPUS

Summary of Suitability for Best Researcher Award – Suk Chan Kim

Dr. Suk Chan Kim is a highly accomplished researcher with significant contributions in wireless mobile communications, signal processing, IoT, underwater communications, and artificial intelligence. Based on his profile, here are the key highlights supporting his candidacy for the “Research for Best Researcher Award”:

Education 🎓

  • Ph.D. in Electrical Engineering
    Korea Advanced Institute of Science & Technology (KAIST), Daejeon, Korea, 2000
  • M.S.E. in Electrical Engineering
    KAIST, Daejeon, Korea, 1995
  • B.S.E. (Summa Cum Laude) in Electronics Engineering
    Pusan National University (PNU), Pusan, Korea, 1993

Work Experience 💼

  • Assistant Professor
    Dept. of Electronics Engineering, Pusan National University, Korea (March 2002 – Present)
  • Postdoctoral Researcher
    Dept. of Electrical Engineering, Princeton University, USA (August 2000 – July 2001)
  • Researcher
    Electronics and Telecommunications Research Institute (ETRI), Daejeon, Korea (March 2000 – July 2000)
  • Teaching and Research Assistant
    Dept. of Electrical Engineering, KAIST, Daejeon, Korea (March 1993 – February 2000)

Awards & Honors 🏆

  • Grants for Postdoctoral Study Abroad
    Korea Science and Engineering Foundation (KOSEF), 2000 🌍
  • Grants for Young Scientists
    Korea Research Foundation (KRF), 1998 🧑‍🔬
  • Summa Cum Laude
    Pusan National University, Pusan, Korea, 1993 🎖️
  • Hyundai Asan Foundation Scholarship
    1992 🎓

Publication Top Notes:

ESFD-YOLOv8n: Early Smoke and Fire Detection Method Based on an Improved YOLOv8n Model

Enhancing automated strabismus classification with limited data: Data augmentation using StyleGAN2-ADA

Ultrasonic Based Outdoor Localization Using Threshold Crossing

DBPN-Based Uplink Channel Estimation for Multi-User MISO RIS System

Low-Complexity RIS Phase Error Estimation Method for RIS-Aided OFDM Systems

Spectrum Allocation Based on Deep Reinforcement Learning in mmWave Integrated Access and Backhaul Network

Dr. Jinxin Cao | Computer Vision Award | Best Researcher Award

Dr. Jinxin Cao | Computer Vision Award | Best Researcher Award 

Dr. Jinxin Cao, China University of Petroluem, Beijing, China

Jinxin Cao is a Doctor of Engineering and a PhD student at the China University of Petroleum, Beijing. Since joining the institution in August 2018, he has focused on the integration of artificial intelligence with energy and mining, specializing in computer vision in microfluidics, signal processing, and time series analysis. His research covers a broad spectrum, including tight oil development, microfluidics, interfacial mechanisms, and numerical simulation. Cao has led over 15 major projects, including special projects, joint fund integrations, and comprehensive scientific research initiatives. He has achieved significant breakthroughs in microfluidic image processing, elucidating interface evolution laws and mechanical mechanisms, which are pivotal for advancing “Lab on a Chip” technologies. Additionally, he has applied signal processing techniques to petroleum engineering, utilizing empirical mode decomposition and Hilbert-Huang transforms to analyze and predict oil well production. His contributions include 11 published papers (8 indexed by SCI/EI), 5 granted patents, and 6 accepted articles. Cao has also earned 20 awards in science, technology, and competitions, highlighting his impact in his field

Professional Profile:

 

Summary of Suitability for Best Researcher Award:

Jinxin Cao is currently pursuing a PhD at China University of Petroleum, Beijing (CUPB) and has been a part of the institution since August 2018. His research focuses on artificial intelligence applications in petroleum engineering, including computer vision in microfluidics, signal processing, and time series analysis. With a total experience of 6 years at CUPB, he has made significant contributions to various interdisciplinary fields.

Education:

  • Doctor of Engineering
    Institution: China University of Petroleum, Beijing
    Specialization: Energy and Mining
    Research Focus: Computer Vision in Microfluidics

Work Experience:

  • Position: Doctor of Engineering
    Department: College of Petroleum Engineering
    Institution: China University of Petroleum, Beijing
    Duration: August 2018 – Present
    Experience: Jinxin Cao has been engaged in artificial intelligence with a focus on computer vision in microchips, signal processing, time series processing, tight oil development, microfluidics, and interfacial mechanisms. He has been involved in over 15 major projects, including special projects, joint fund integration projects, and comprehensive scientific research endeavors. His work has led to significant breakthroughs in microfluidic image processing, uncovering interface evolution laws and mechanical mechanisms in microfluidic processes using computer vision methods. Additionally, Cao has applied signal processing techniques to petroleum engineering, utilizing empirical mode decomposition and Hilbert-Huang transform to analyze oil well production and predict future production using artificial intelligence methods.

Academic Achievements:

  • Publications: 11 academic papers, 8 indexed by SCI/EI
  • Patents: 5 invention patents
  • Accepted Articles: 6
  • Awards: 20 science and technology or competition awards at various levels

Publication top Notes:

 

Microscopic experiment on efficient construction of underground gas storages converted from water-invaded gas reservoirs

Identification of Polymer Flooding Flow Channels and Characterization of Oil Recovery Factor Based On U-Net

Experimental investigation on the effect of interfacial properties of chemical flooding for enhanced heavy oil recovery

Study on reservoir damage characteristics of tight oil oxygen reduction air huff and puff development

Adaptability and enhanced oil recovery performance of surfactant-polymer flooding in inverted seven-spot well pattern

Research on the Adaptability of SP Flooding in Sand-Gravel Mixture Reservoir Based on the Inverted Seven-Spot Well Pattern