Mr. Ivanol Jaurece Djeukeu | Image Processing | Best Researcher Award

Mr. Ivanol Jaurece Djeukeu | Image Processing | Best Researcher Award

Ivanol Jaurece Djeukeu at Albert-Ludwigs-Universität Freiburg, Germany

Profile

Orcid

Summary

Mr. Ivanol Jaurece Djeukeu is a dedicated researcher and engineer with expertise in mechatronics, robotics, and sustainable systems. With a strong academic foundation and professional experience in software and hardware development, he is currently pursuing his Ph.D. in Sustainable Systems Engineering at Albert-Ludwigs-Universität Freiburg. His work focuses on the rapid characterization of Perovskite-Silicon tandem solar cells, contributing to advancements in renewable energy technologies.

Education

  • Ph.D. in Sustainable Systems Engineering (09/2023 – Present)
    Albert-Ludwigs-Universität Freiburg, Germany
  • Master of Science in Mechatronics and Robotics (04/2020 – 04/2022)
    Frankfurt University of Applied Sciences, Germany
    Thesis: Development of a prototype OPC UA server for an Open Edge Computing Platform
    Grade: 1.5
  • Bachelor of Engineering in Mechatronics (10/2015 – 08/2017)
    Frankfurt University of Applied Sciences, Germany
    Thesis: Concept development for intensity regulation of LEDs with different wavelengths (Full Spectrum)
    Grade: 1.8
  • Baccalaureat C (Mathematics and Physics) (09/2007 – 06/2014)
    Collège Ebanda Yaounde, Cameroon

🔬 Research Interests

  • Renewable energy systems and technologies
  • Advanced solar cell characterization
  • Mechatronics and robotics
  • Sustainable systems engineering
  • Edge computing and industrial automation

💼 Professional Experience

  • Scientific Researcher (05/2023 – Present)
    halm elektronik GmbH, Frankfurt am Main, Germany

    • Developing measurement techniques for rapid characterization of Perovskite-Silicon tandem solar cells.
  • Master’s Thesis & Internship in Software Development (C/C++) (09/2021 – 02/2022)
    Hilscher Gesellschaft für Systemautomation mbH, Hattersheim, Germany

    • Developed a prototype OPC UA server for an Open Edge Computing Platform.
  • Hardware Development Intern & Student Assistant (04/2020 – 04/2021)
    halm elektronik GmbH, Frankfurt am Main, Germany

    • Developed electronic circuits for test systems and conducted intensity regulation research for LEDs.
  • Tutor in Mathematics and Physics (11/2017 – 02/2020)
    Frankfurt University of Applied Sciences, Germany

    • Guided students in projects and courses on FPGA, Microcontroller Technology, and Matlab & Simulink.

Publication

Subcell‐Resolved Electroluminescence Imaging of Monolithic Perovskite/Silicon Tandem Solar Cell for High‐Throughput Characterization

  • Authors: Ivanol Jaurece Djeukeu, Jonas Horn, Michael Meixner, Enno Wagner, Stefan W. Glunz, Klaus Ramspeck
  • Journal: Solar RRL
  • Year: 2024

Prof. Zhi Gao | Image Processing | Best Researcher Award

Prof. Zhi Gao, Image Processing, Best Researcher Award

Zhi Gao at Wuhan University, China

Professional Profile

Summary:

Zhi Gao is a highly accomplished Professor and Doctoral Supervisor at the School of Remote Sensing and Information Engineering, Wuhan University. He holds prestigious positions as the National Young Talent Program and Distinguished Professor of Hubei Province, China. With a solid background in engineering and extensive experience in academia and research, he has built strong collaborative networks with renowned universities and institutions worldwide.

👩‍🎓Education:

Zhi Gao received his Bachelor of Engineering (B.Eng.) and Doctor of Philosophy (Ph.D.) degrees from Wuhan University, China, in 2002 and 2007, respectively. His educational background provides him with a strong foundation in his field.

🧬 Work Experience:

Zhi Gao’s professional journey reflects a wealth of experience in both academia and industry. Highlights of his career include:

  • Research Fellow (A) and Project Manager at the Interactive and Digital Media Institute, National University of Singapore (NUS), Singapore, since 2008.
  • Research Scientist (A) at the Temasek Laboratories, NUS, contributing significantly to research endeavors.
  • Building strong collaborative relationships with prestigious institutions globally, including the Temasek Laboratory, National University of Singapore, Carnegie Mellon University Robotics Institute, Robert Gordon University, The Chinese University of Hong Kong, Beijing Normal University, and Beijing Institute of Technology.

Research Interests:

  • Computer Vision
  • Machine Learning
  • Remote Sensing
  • UAV-based Surveillance Research and Applications

Publications Top Noted:

Paper Title: Exploring the relationship between land use change patterns and variation in environmental factors within urban agglomeration
  • Authors: Xiao, R., Yin, H., Liu, R., Liu, L., Jia, T.
  • Journal: Sustainable Cities and Society
  • Volume: 108
  • Pages: 105447
  • Year: 2024
  • Citations: 0
Paper Title: Tracking by Detection: Robust Indoor RGB-D Odometry Leveraging Key Local Manhattan World
  • Authors: Zhou, Z., Gao, Z., Xu, J.
  • Journal: IEEE Robotics and Automation Letters
  • Volume: 9
  • Issue: 6
  • Pages: 4990–4997
  • Year: 2024
Paper Title: How Challenging is a Challenge? CEMS: a Challenge Evaluation Module for SLAM Visual Perception
  • Authors: Zhao, X., Gao, Z., Li, H., Fang, H., Chen, B.M.
  • Journal: Journal of Intelligent and Robotic Systems: Theory and Applications
  • Volume: 110
  • Issue: 1
  • Pages: 42
  • Year: 2024
  • Citations: 0
Paper Title: TJ-FlyingFish: An Unmanned Morphable Aerial–Aquatic Vehicle System
  • Authors: Liu, X., Dou, M., Yan, R., Chen, J., Chen, B.M.
  • Journal: Unmanned Systems
  • Volume: 12
  • Issue: 2
  • Pages: 409–428
  • Year: 2024
  • Citations: 1
Paper Title: WaterFormer: A Global-Local Transformer for Underwater Image Enhancement With Environment Adaptor
  • Authors: Wen, J., Cui, J., Yang, G., Dou, L., Chen, B.M.
  • Journal: IEEE Robotics and Automation Magazine
  • Volume: 31
  • Issue: 1
  • Pages: 29–40
  • Year: 2024
  • Citations: 1

 

Image Processing and Enhancement

Introduction Image Processing and Enhancement:

Image Processing and Enhancement is a pivotal domain within the realm of computer vision and digital imaging. This field is dedicated to the development of algorithms and techniques that improve the quality, clarity, and interpretability of digital images. Whether it's enhancing the visibility of medical scans, restoring historical photographs, or improving image quality in satellite imagery, this research area has widespread applications across various industries.

Subtopics in Image Processing and Enhancement:

  1. Image Denoising and Restoration: Research in this subfield focuses on developing algorithms to remove noise and artifacts from images, making them clearer and more suitable for analysis or presentation.
  2. Image Super-Resolution: This subtopic explores methods to enhance the resolution of images, enabling the generation of high-resolution images from lower-resolution sources. It has applications in medical imaging, surveillance, and entertainment.
  3. Colorization of Black and White Images: Techniques for adding color to black and white images, often used for restoring historical photos and improving the visual appeal of visual content.
  4. Image Enhancement for Medical Imaging: Research in this area is dedicated to developing specialized image processing techniques for improving the quality and diagnostic value of medical images such as X-rays, MRIs, and CT scans.
  5. HDR Imaging (High Dynamic Range): HDR techniques aim to capture and display a wider range of brightness levels in images, improving the visualization of scenes with varying lighting conditions, such as landscapes or architectural photography.
  6. Image Enhancement for Satellite and Remote Sensing: Specialized techniques are developed to enhance satellite and remote sensing imagery for applications in agriculture, environmental monitoring, and disaster management.
  7. Image Compression and Transmission: Research focuses on efficient methods for compressing and transmitting images without significant loss of quality, crucial for applications like video conferencing and image sharing on the internet.
  8. Image Deblurring: Techniques to remove blurriness caused by factors such as camera shake or motion, improving the sharpness and clarity of images.
  9. Image Segmentation and Object Recognition: These techniques involve separating objects from the background in images and recognizing individual objects or regions, vital for various computer vision applications.
  10. Deep Learning-Based Image Enhancement: Utilizing deep learning models for image enhancement tasks, such as generative adversarial networks (GANs) for realistic image synthesis and enhancement.

Image Processing and Enhancement research continues to advance, driven by the increasing demand for high-quality images in diverse fields such as healthcare, entertainment, agriculture, and more. Researchers in this area are constantly developing innovative solutions to enhance the visual content that surrounds us, ultimately improving our ability to interpret and utilize digital imagery in a variety of applications.

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