Haiwei Wu | Engineering | Best Researcher Award

Prof. Dr. Haiwei Wu | Engineering | Best Researcher Award

Jilin Agricultural University | China

Prof. Dr. Haiwei Wu is an emerging multidisciplinary researcher whose contributions span energy systems, machine learning, spectroscopy, and intelligent diagnostics. His recent research focuses on advanced computational methods applied to energy storage and electric vehicle systems, including the development of an attention-based multi-feature fusion physics-informed neural network for accurate state-of-health estimation of lithium-ion batteries and the application of queuing-theoretic models for sustainable EV charging infrastructure planning. Beyond energy research, he has contributed significantly to the use of mid-infrared spectroscopy combined with machine learning and support vector machines for the authentication and identification of biological and agricultural products, reflecting strong capabilities in analytical modeling and pattern recognition. His publications from 2022 to 2025 highlight expertise in spectral analysis, counterfeit detection, and quality assessment. In addition, he has explored applications of improved YOLOv8 for mechanical part inspection and contributed to research on task-driven cooperative inquiry learning in education. His innovative work is supported by several patents related to electric vehicle charging technologies, demonstrating a commitment to advancing practical, technology-driven solutions across sectors.

Profile : Scopus | Orcid

Featured Publications

Wu, H., Liu, J., Wang, Z., & Li, X. (2025). An attention-based multi-feature fusion physics-informed neural network for state-of-health estimation of lithium-ion batteries. Energies.

Wang, Z., Zou, J., Tu, J., Li, X., Liu, J., & Wu, H. (2025). Towards sustainable EV infrastructure: Site selection and capacity planning with charger type differentiation and queuing-theoretic modeling. World Electric Vehicle Journal.

He, T., Kaimin, W., & Wu, H. (2025). Research on the construction and implementation of a task-driven cooperative inquiry learning model for postgraduate students majoring in music education. Chinese Music Education, (05), 47–53.

Yang, C.-E., Wu, H., Yuan, Y., et al. (2025). Efficient recognition of plum blossom antler hats and red deer antler hats based on support vector machine and mid-infrared spectroscopy. Journal of Jilin Agricultural University, 1–7.

Yang, C.-E., Su, L., Feng, W.-Z., Zhou, J.-Y., Wu, H.-W., Yuan, Y.-M., & Wang, Q. (2023). Identification of Pleurotus ostreatus from different producing areas based on mid-infrared spectroscopy and machine learning. Spectroscopy and Spectral Analysis.

Yang, C.-E., Su, L., Feng, W., et al. (2023). Identification of Pleurotus ostreatus from different origins by mid-infrared spectroscopy combined with machine learning. Spectroscopy and Spectral Analysis, 43(02), 577–582.

Yang, C.-E., Wu, H.-W., Yang, Y., Su, L., Yuan, Y.-M., Liu, H., Zhang, A.-W., & Song, Z.-Y. (2022). A model for the identification of counterfeited and adulterated Sika deer antler cap powder based on mid-infrared spectroscopy and support vector machines. Spectroscopy and Spectral Analysis.

Yang, C.-E., Wu, H., Yang, Y., et al. (2022). Identification model of counterfeiting and adulteration of plum blossom antler cap powder based on mid-infrared spectroscopy and support vector machine. Spectroscopy and Spectral Analysis, 42(08), 2359–2365.

Leema Nelson | Computer Science | Research Excellence Award

Dr. Leema Nelson | Computer Science | Research Excellence Award

Chitkara University | India 

Dr. Leema Nelson is an accomplished researcher whose scholarly contributions span machine learning, clinical decision support systems, composite materials, signal processing, and intelligent diagnostic frameworks. With a total of 1206 citations, an h-index of 17, and 29 i10-index publications, her research demonstrates both depth and sustained impact across interdisciplinary domains. She has produced numerous high-quality peer-reviewed articles, many in leading Elsevier journals such as Applied Soft Computing and Materials & Design, focusing on neural network optimization, characterization of metal-matrix composites, wear modelling, and advanced computational methods. Her work in clinical data classification, including diabetes and PCOS diagnosis, highlights the integration of artificial intelligence into healthcare decision-making. In recent years, she expanded her research into video smoke detection, cyber-security–based email filtering, audio source separation, and welding parameter optimization using intelligent algorithms. Her studies in deepfake detection, text recognition, and clinical support systems reflect her continuing advancements in data-driven AI models. She has also contributed extensively to IEEE conferences, presenting innovations in masked face detection, ultrasound image analysis, mobile app frameworks, and disease prediction models. Overall, her scientific output reflects strong productivity, interdisciplinary expertise, and meaningful contributions to both computational intelligence and applied engineering research.

Profiles : Scopus | Orcid | Google Scholar

Featured Publications

Jibinsingh, B. R., & Nelson, L. (2025). FL-WOSP: Federated learning with Walrus Optimization for sepsis prediction using MIMIC-III physiological and clinical data. Pattern Recognition. Advance online publication.

Batra, H., & Nelson, L. (2024). ESD: E-mail spam detection using cybersecurity-driven header analysis and machine learning-based content analysis. International Journal of Performability Engineering, 20(4).

Nelson, L. (2024). Data-driven clinical decision support system using neural network topology optimization for PCOS diagnosis. Journal of Soft Computing and Data Mining.

Batra, H., & Nelson, L. (2024). A three-stage deepfake detection framework using deep learning models with multimedia data. International Journal of Intelligent Systems and Applications.

Shanmuga Priya, M., Pavithra, A., & Leema, N. (2024). Character/word modelling: A two-step framework for text recognition in natural scene images. Computer Science.

Batra, H., & Nelson, L. (2023). DCADS: Data-driven computer aided diagnostic system using machine learning techniques for polycystic ovary syndrome. International Journal of Performability Engineering, 19(3).

Kumar, V. A., Rao, C. V. R., & Leema, N. (2023). Audio source separation by estimating the mixing matrix in underdetermined condition using successive projection and volume minimization. International Journal of Information Technology, 15(4), 1831–1844.

Ramesh, A., Sivapragash, M., Ajith Kumar, K. K., & Leema, N. (2023). Investigating the quality of TIG-welded aluminium alloy 5086 using the online acoustic emission and optimization of welding parameters using global best-based modified artificial bee colony algorithm. Transactions of the Indian Institute of Metals, 1–14.

Pranshu Kumar Soni, & Leema, N. (2023). PCP: Profit-driven churn prediction using machine learning techniques in banking sector. International Journal of Performability Engineering, 19(5), 303–311.

Vettum Perumal, S., Suyamburajan, V., Chidambaranathan, V. S., & Nelson, L. (2023). Characterization of microstructure and mechanical behaviour in activated tungsten inert gas welded dissimilar AA joint of AA 5083 and AA 6061 alloys. Journal of the Institution of Engineers (India): Series D, 1–9.

Simy Baby | Engineering | Best Researcher Award

Mrs. Simy Baby | Engineering | Best Researcher Award

National Institute of Technology | India

Mrs. Simy Baby is an emerging researcher whose scholarly contributions center on semantic communications, machine learning, and computer vision, with a strong emphasis on communication-efficient feature extraction for edge inference tasks. She has authored 2 documents, received 2 citations, and holds an h-index of 1, reflecting the growing impact of her research in advanced communication technologies. Her publications in SCI-indexed journals, including Elsevier’s Computers & Electrical Engineering and IEEE Transactions on Cognitive Communications and Networking, demonstrate her commitment to innovation and excellence. Her study, “Complex Chromatic Imaging for Enhanced Radar Face Recognition”, introduced a novel complex-valued representation preserving amplitude and phase information of mmWave radar signals, achieving 99.7% recognition accuracy. Another major contribution, “Complex-Valued Linear Discriminant Analysis on mmWave Radar Face Signatures for Task-Oriented Semantic Communication”, proposed a CLDA-based encoding framework that improved feature interpretability and robustness under varying channel conditions. Her ongoing projects explore Data Fusion Discriminant Analysis (DFDA) for multi-view activity recognition and Semantic Gaussian Process Regression (GPR) for vehicular pose estimation, advancing the integration of semantic communication and computer vision. Mrs. Simy Baby’s research represents a vital step toward the development of intelligent, efficient, and adaptive communication systems for next-generation technologies.

Profiles : Scopus | Orcid | Google Scholar

Featured Publications

Baby, S. M., & Gopi, E. S. (2025). Complex valued linear discriminant analysis on mmWave radar face signatures for task-oriented semantic communication. IEEE Transactions on Cognitive Communications and Networking.

Baby, S. M., & Gopi, E. S. (2025, April). Complex chromatic imaging for enhanced radar face recognition. Computers and Electrical Engineering.

Seunghyun Oh | Computer Science | Best Researcher Award

Mr. Seunghyun Oh | Computer Science | Best Researcher Award

Yonsei University | South Korea

Author Profile

Google Scholar

🎓 Early Academic Pursuits

Mr. Seunghyun Oh began his academic journey at the Global School of Media, Soongsil University, where he earned his Bachelor of Science degree in February 2025. Throughout his undergraduate studies, he demonstrated a strong aptitude for advanced technical subjects, securing A+ grades in key courses such as Image Processing, Computer Vision, and Machine Learning. His early academic record reflects a solid foundation in both theoretical concepts and applied computing.

💼 Professional Endeavors

Mr. Oh’s professional growth was marked by a series of impactful roles and experiences. In 2023, he joined the Reality Lab at Soongsil University, where he later served as Lab Leader and contributed as an undergraduate researcher until April 2025. His commitment extended beyond academia—he spearheaded a web development training initiative for a Cambodian team to build a school website, showcasing leadership and global engagement. Currently, he is working as a research intern at MAI-LAB, Yonsei University, where he continues to push the boundaries of machine intelligence.

🧠 Contributions and Research Focus

Mr. Oh’s research is centered on computer vision and medical artificial intelligence, with a particular focus on optimization and domain generalization. His notable project, Baseball Player Pose Corrector (BPPC), introduces a refined framework for enhancing 2D pose estimation using 3D motion priors. This work, accepted by ICT-Express (SCIE, IF: 4.1), highlights his innovative approach to human pose estimation in dynamic environments. Additionally, he is actively exploring feature-level domain generalization and disentanglement techniques to improve performance in ultrasound image segmentation, addressing efficiency concerns in medical imaging.

🏅 Accolades and Recognition

Mr. Oh’s dedication to research has already gained peer recognition. In 2024, he delivered an oral presentation at the Annual Symposium of KIPS (ASK 2024), showcasing his work on motion-guided pose correction. His accepted publication in a reputed journal further cements his status as a promising researcher in the field of AI-driven vision systems.

🌍 Impact and Influence

Beyond his technical contributions, Mr. Oh has had a tangible social and educational impact. His web training leadership for Cambodian school developers reflects a blend of technological expertise and social responsibility. Within research communities, he is known for his collaborative spirit and his ability to translate complex models into practical, optimized solutions—particularly in environments where precision and efficiency are critical, such as medical AI.

🔭 Legacy and Future Contributions

As he continues his journey in AI research, Mr. Seunghyun Oh is poised to make significant contributions to medical imaging, optimization algorithms, and domain generalization. His forward-thinking mindset, coupled with technical depth and leadership experience, positions him to be a transformative force in both academic and applied artificial intelligence research. With a strong publication record already underway and promising collaborations in progress, the future holds immense potential for this rising star in computer vision and medical AI.

Publications


📝 Accurate Baseball Player Pose Refinement Using Motion Prior Guidance

Authors: Seunghyun Oh, Heewon Kim
Journal: ICT Express
Year: 2025


📝 Motion Prior-Guided Refinement for Accurate Baseball Player Pose Estimation

Authors: Seunghyun Oh, Heewon Kim
Conference: Annual Conference of KIPS
Year: 2024


Bing Cai | Computer Science | Best Researcher Award

Mr. Bing Cai | Computer Science | Best Researcher Award

Anhui Institute of Information Technology | China

Author Profile

Scopus

Orcid

Google Scholar

Early Academic Pursuits 🎓

Mr. Bing Cai embarked on his academic journey with a strong foundation in engineering. He earned his Bachelor of Engineering in Electronics and Information Engineering from Anhui University in 2014, where he developed a keen interest in computing and information systems. His thirst for advanced knowledge led him to pursue a Master of Engineering in Computer Technology at Anhui Polytechnic University, completing his degree in 2024 with a commendable GPA of 3.36. His rigorous academic training laid the groundwork for his expertise in software development and multi-view clustering techniques.

Professional Endeavors 🌟

Mr. Cai has accumulated extensive professional experience in both academia and industry. From 2014 to 2017, he worked as a Software Engineer at iFLYTEK Co., Ltd., where he contributed to the development of Android and iOS applications. His responsibilities included designing app frameworks, optimizing performance, and conducting comprehensive testing for speech synthesis systems. His tenure at iFLYTEK honed his skills in software architecture, application development, and embedded systems testing. Transitioning to academia in 2017, Mr. Cai served as a Corporate Teacher at Anhui Institute of Information Technology. Here, he played a pivotal role in teaching Web Front-End Development, guiding students in research and graduation projects, and mentoring them for competitions. His ability to bridge theoretical knowledge with practical applications made him a valuable asset in the field of computer and software engineering education.

Contributions and Research Focus 📚

Mr. Cai's research primarily focuses on multi-view clustering, tensor subspace clustering, and machine learning methodologies. His scholarly contributions include several high-impact publications in prestigious journals such as IEEE Transactions on Multimedia, Pattern Recognition, and Signal Processing. His research introduces innovative clustering techniques using tensorized and low-rank representations, significantly advancing the field of multi-view learning. Notably, his studies on high-order manifold regularization and tensorized bipartite graph clustering have provided new insights into handling large-scale and incomplete multi-view data. His work is instrumental in improving data representation and clustering efficiency in artificial intelligence applications.

Accolades and Recognition 🏆

Mr. Cai's dedication to excellence has been recognized with several prestigious awards. In 2023, he won the Bronze Prize in the Anhui Province "Internet+" College Student Innovation and Entrepreneurship Competition, highlighting his innovative approach to problem-solving. He also received the Outstanding Paper Award from the Anhui Association for Artificial Intelligence in 2022, further cementing his reputation as a leading researcher in his field. His academic excellence was also acknowledged through the National Scholarship for Postgraduate Students in 2022, a testament to his scholarly contributions.

Impact and Influence 🌍

Mr. Cai's work has had a profound impact on both academia and industry. His contributions to multi-view clustering have influenced the development of more robust and efficient data analysis techniques in AI and machine learning. His research findings are widely cited, reflecting their significance in advancing computational intelligence. Furthermore, his role as an educator has shaped the next generation of computer scientists, inspiring students to engage in research and innovation.

Legacy and Future Contributions 🚀

With a strong foundation in research and industry, Mr. Cai is poised to make even greater contributions to the field of computer technology. His ongoing work in multi-view clustering and tensor-based machine learning will likely lead to more breakthroughs in AI-driven data processing. As he continues to explore innovative clustering methodologies, his research is expected to influence a wide range of applications, from big data analytics to artificial intelligence-driven decision-making systems. His commitment to excellence ensures that he will remain at the forefront of technological advancements in the years to come.

 

Publications


  • 📄 Multi-view subspace clustering with a consensus tensorized scaled simplex representation
    Author(s): Hao He, Bing Cai, Xinyu Wang
    Journal: Information Sciences
    Year: 2025-03


  • 📄 Tensorized Scaled Simplex Representation for Multi-View Clustering
    Author(s): Bing Cai, Gui-Fu Lu, Hua Li, Weihong Song
    Journal: IEEE Transactions on Multimedia
    Year: 2024


  • 📄 Aligned multi-view clustering for unmapped data via weighted tensor nuclear norm and adaptive graph learning
    Author(s): Bing Cai, Gui-Fu Lu, Liang Yao, Jiashan Wan
    Journal: Neurocomputing
    Year: 2024


  • 📄 Complete multi-view subspace clustering via auto-weighted combination of visible and latent views
    Author(s): Bing Cai, Gui-Fu Lu, Guangyan Ji, Weihong Song
    Journal: Information Sciences
    Year: 2024


  • 📄 Auto-weighted multi-view clustering with the use of an augmented view
    Author(s): Bing Cai, Gui-Fu Lu, Jiashan Wan, Yangfan Du
    Journal: Signal Processing
    Year: 2024