Amine Bechar | Artificiel Intelligence | Research Excellence Award

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Maikel Leon | Artificial Intelligence | Research Excellence Award

Assoc. Prof. Dr. Maikel Leon | Artificial Intelligence | Research Excellence Award

University of Miami, United States

Assoc. Prof. Dr. Maikel Leon is an accomplished academic and AI specialist with a Ph.D. in Computer Science focused on artificial intelligence applied to transportation from Hasselt University, Belgium, and summa cum laude degrees from the Central University of Las Villas, Cuba. Since 2015, he has been a faculty member at the Department of Business Technology, Miami Herbert Business School, University of Miami, teaching and coordinating a wide range of courses in business analytics, programming, machine learning, databases, and artificial intelligence for business. His academic career spans institutions in the United States and Cuba, reflecting strong international teaching and research experience. Dr. Leon is an active reviewer and program committee member for leading journals and conferences, including IEEE Transactions on Fuzzy Systems and FLAIRS. He has received prestigious honors such as the Best Paper Award at the IEEE ICTAI Conference and the Cuban National Academy of Sciences Award for outstanding research. Beyond academia, he is a frequent media commentator on AI, a certified professional in generative AI and cloud technologies, and a leader in innovative teaching, entrepreneurship, and international collaboration initiatives.

Citation Metrics (Scopus)

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Citations
355

Documents
38

h-index
11

Citations

Documents

h-index

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Featured Publications

 

Konstantinos Diamantaras | Machine Learning | Best Researcher Award 

Prof. Konstantinos Diamantaras | Machine Learning | Best Researcher Award 

Prof. Konstantinos Diamantaras | International Hellenic University | Greece

Prof. Konstantinos Diamantaras is a Professor at the International Hellenic University, Department of Information & Electronic Engineering, and Vice Rector since 2023, holding a Beng from NTUA, Greece, and an MSc and PhD in Electrical Engineering from Princeton University. His research focuses on machine learning, signal processing, and augmented/virtual reality, with over 230 scientific publications and 79 journal articles indexed in SCI and Scopus, accumulating more than 7,300 citations on Google Scholar (h-index 30) and 3,027 citations on Scopus (h-index 23). He has authored four books, including Principal Component Neural Networks (1996) and Artificial Neural Networks (2007), and received the IEEE Best Paper Award in 1997 for Adaptive Principal Component Extraction (APEX). He leads multiple EU- and university-funded projects, such as Kids Radio Europe, METACHEF, Digital4all, and AI-based food recognition. His collaborations include Prof. S. Y. Kung (Princeton), Prof. Athina Petropulu (Rutgers), Prof. Tomas McKelvey (Chalmers), and partnerships with Alzheimer Hellas and the University of Alicante on NLP applications. He serves on editorial boards of Journal of Signal Processing Systems and Applied Sciences, contributing to advancements in deep learning, pattern recognition, biomedical informatics, adaptive signal processing, and educational technology. His work spans practical AI applications in health, digital learning, and immersive experiences, influencing both academic research and societal impact. He is an active IEEE member and IEEE Signal Processing Society participant, advancing knowledge in neural networks, computational intelligence, and multilingual natural language generation.

Profiles: Scopus | Orcid | Google Scholar | Staff Page

Featured Publications

Diamantaras, K. I., & Kung, S. Y. (1996). Principal component neural networks: Theory and applications. In Adaptive and learning systems for signal processing, communications, and control (p. 1694). Springer.

Vafeiadis, T., Diamantaras, K. I., Sarigiannidis, G., & Chatzisavvas, K. C. (2015). A comparison of machine learning techniques for customer churn prediction. Simulation Modelling Practice and Theory, 55, 1–9

Giatsoglou, M., Vozalis, M. G., Diamantaras, K., Vakali, A., & Sarigiannidis, G. (2017). Sentiment analysis leveraging emotions and word embeddings. Expert Systems with Applications, 69, 214–224.

Lampropoulos, G., Keramopoulos, E., Diamantaras, K., & Evangelidis, G. (2022). Augmented reality and gamification in education: A systematic literature review of research, applications, and empirical studies. Applied Sciences, 12(13), 6809.

Maglaveras, N., Stamkopoulos, T., Diamantaras, K., Pappas, C., & Strintzis, M. (1998). ECG pattern recognition and classification using non-linear transformations and neural networks: A review. International Journal of Medical Informatics, 52(1–3), 191–208.

Gravanis, G., Vakali, A., Diamantaras, K., & Karadais, P. (2019). Behind the cues: A benchmarking study for fake news detection. Expert Systems with Applications, 124, 292–303.

Kung, S. Y., & Diamantaras, K. I. (1990). A neural network learning algorithm for adaptive principal component extraction (APEX). In ICASSP-90. Acoustics, Speech, and Signal Processing (pp. 256–259).

Kung, S. Y., Diamantaras, K. I., & Taur, J. S. (1994). Adaptive principal component extraction (APEX) and applications. IEEE Transactions on Signal Processing, 42(5), 1202–1217.

Stamkopoulos, T., Diamantaras, K., Maglaveras, N., & Strintzis, M. (1998). ECG analysis using nonlinear PCA neural networks for ischemia detection. IEEE Transactions on Signal Processing, 46(11), 3058–3067.

Jinkai Zheng | Computer Vision | Best Researcher Award 

Prof. Jinkai Zheng | Computer Vision | Best Researcher Award 

Hangzhou Dianzi University, China

Prof. Jinkai Zheng is a Distinguished Associate Researcher at Hangzhou Dianzi University, Director of the Scientific Research Management Department at the Hangzhou Dianzi University Lishui Research Institute, and an active member of the Multimedia and Biometric Recognition Professional Committees of the China Society of Image and Graphics. His research focuses on artificial intelligence, computer vision, and multimedia analysis, with a particular emphasis on gait recognition and human-centered intelligent analysis. He has published over 40 academic documents, including multiple first-author and corresponding-author papers in top-tier venues such as CVPR, ACM Multimedia, and IEEE Transactions on Multimedia, accumulating more than 900 citations with an h-index of 16 (Google Scholar, 2025). His contributions include the Gait3D dataset, now a widely adopted benchmark by over 300 prestigious institutions worldwide, including Columbia University, University of Pennsylvania, Johns Hopkins University, and NUS. He has received notable accolades, such as the Special Prize of the 2024 Wu Wenjun Artificial Intelligence Science and Technology Progress Award, the Outstanding Paper Award at the 2023 CSIG Youth Scientists Conference, and the Best Paper Award-Honorable Mention at IEEE ISCAS 2021. With four authorized invention patents, long-term service as a reviewer for leading journals and conferences, and significant participation in national R&D projects, Prof. Zheng has become a recognized young leader in advancing AI-driven multimedia understanding.

Profiles: Scopus Orcid | Google Scholar

Featured Publications

Zheng, J., Liu, X., Gu, X., Sun, Y., Gan, C., Zhang, J., Liu, W., & Yan, C. (2022). Gait recognition in the wild with multi-hop temporal switch. Proceedings of the 30th ACM International Conference on Multimedia, 6136–6145.

Zheng, J., Liu, X., Wang, S., Wang, L., Yan, C., & Liu, W. (2023). Parsing is all you need for accurate gait recognition in the wild. Proceedings of the 31st ACM International Conference on Multimedia, 116–124.

Zheng, J., Liu, X., Yan, C., Zhang, J., Liu, W., Zhang, X., & Mei, T. (2021). Trand: Transferable neighborhood discovery for unsupervised cross-domain gait recognition. 2021 IEEE International Symposium on Circuits and Systems (ISCAS), 1–5. IEEE.

Zheng, J., Liu, X., Zhang, B., Yan, C., Zhang, J., Liu, W., & Zhang, Y. (2024). It takes two: Accurate gait recognition in the wild via cross-granularity alignment. Proceedings of the 32nd ACM International Conference on Multimedia, 8786–8794.

Yuan, S., Zheng, J., Li, X., Sun, Y., Li, W., Gao, R., Omar, M. H., & Zhang, J. (2025). Noisy label learning for gait recognition in the wild. Electronics, 14(19), 3752.

Zhang, S., Zheng, J., Zhu, S., & Yan, C. (2025). TrackletGait: A robust framework for gait recognition in the wild. arXiv preprint arXiv:2508.02143.

Zheng, J., Liu, X., Liu, W., He, L., Yan, C., & Mei, T. (n.d.). Supplementary material for “Gait recognition in the wild with dense 3D representations and a benchmark.”