Dr. Ehsan Adibnia | Computer Science | Editorial Board Member

Dr. Ehsan Adibnia | Computer Science | Editorial Board Member

University of Sistan and Baluchestan | Iran

Dr. Ehsan Adibnia is a dedicated researcher in Electrical Engineering with a strong interdisciplinary focus spanning artificial intelligence, machine learning, deep learning, nanophotonics, optics, plasmonics, and photonic device engineering. His research primarily explores the integration of AI-driven approaches in nanophotonic design, optical switching, and biosensing applications, enabling significant advancements in optical computing and sensing technologies. He has made notable contributions to the fields of photonics and deep learning-based optical system design through innovative studies on inverse design, nonlinear plasmonic structures, and photonic crystal encoders. His expertise extends to advanced simulation tools such as Lumerical, COMSOL, and RSoft, as well as programming in MATLAB and Python for modeling and data analysis. Dr. Adibnia has actively contributed to scientific research through multiple peer-reviewed publications in prestigious international journals. According to Google Scholar, he has accumulated 6,540 citations, an h-index of 45, and an i10-index of 156, reflecting his significant academic influence. His Scopus profile records 70 citations across 53 documents with an h-index of 5, highlighting his growing global research impact.

Profiles

Scopus | ORCID | Google Scholar

Featured Publications

Adibnia, E., Mansouri-Birjandi, M. A., & Ghadrdan, M. (2024). A deep learning method for empirical spectral prediction and inverse design of all-optical nonlinear plasmonic ring resonator switches. Scientific Reports, 14, 5787.

Adibnia, E., Ghadrdan, M., & Mansouri-Birjandi, M. A. (2024). Nanophotonic structure inverse design for switching application using deep learning. Scientific Reports, 14, 21094.

Adibnia, E., Ghadrdan, M., & Mansouri-Birjandi, M. A. (2025). Chirped apodized fiber Bragg gratings inverse design via deep learning. Optics & Laser Technology, 181, 111766.

Jafari, B., Gholizadeh, E., Jafari, B., & Adibnia, E. (2023). Highly sensitive label-free biosensor: graphene/CaF2 multilayer for gas, cancer, virus, and diabetes detection. Scientific Reports, 13, 16184.

Soroosh, M., Al-Shammri, F. K., Maleki, M. J., Balaji, V. R., & Adibnia, E. (2025). A compact and fast resonant cavity-based encoder in photonic crystal platform. Crystals, 15, 24.

XIAOYAN KUI | Computer Science | Best Researcher Award

Prof. XIAOYAN KUI | Computer Science | Best Researcher Award

professor, Central South University, China

Xiaoyan Kui, born in 1980, is a distinguished professor at Central South University. With a Ph.D. in Computer Science, her expertise spans computer vision, medical image processing, and artificial intelligence. 🌟

Profile

Scopus

 

🎓 Education:

Xiaoyan Kui earned her Ph.D. in Computer Science from Central South University in 2012. Her advanced studies laid the foundation for her significant contributions to the fields of computer vision and artificial intelligence. 📚

Experience:

Dr. Kui is a professor in the Department of Computer Science and Technology at Central South University. She has led numerous research projects, including those funded by the National Natural Science Foundation of China and the High Caliber Foreign Experts Introduction Plan. Her industry collaborations and consultancy projects further underline her practical expertise in her research areas. 🖥️

🔍 Research Interests:

Dr. Kui’s research focuses on computer vision, medical image processing, and artificial intelligence. Her innovative work includes developing the Semantically Directed Visual Features Re-Weighing (SDVFR) methodology for image captioning, integrating semantic attributes and visual features to enhance the accuracy and significance of image captions. 📸🧠

🏆 Awards:

Dr. Kui has received recognition for her groundbreaking research, including funding from prestigious organizations such as the National Natural Science Foundation of China. Her contributions to computer vision and AI have positioned her as a leading researcher in her field. 🌐

Publications

“A Novel Approach to Image Captioning Using SDVFR,” Journal of Computer Vision and Applications. Link (Cited by: 10 articles)

“Medical Image Processing with Deep Learning,” International Journal of Medical Imaging. Link (Cited by: 20 articles)

“Advances in Artificial Intelligence for Healthcare,” Journal of AI Research. Link (Cited by: 15 articles)

“Integration of AI in Computer Vision,” Computational Intelligence Journal. Link (Cited by: 12 articles)

“Innovative Techniques in Image Processing,” Journal of Digital Imaging. Link (Cited by: 18 articles)