Shoujun Zhou | Artificial Intelligence | Best Scholar Award

Prof. Shoujun Zhou | Artificial Intelligence | Best Scholar Award

Research Professor at Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, China

Prof. Shoujun Zhou is a distinguished biomedical engineering researcher and a leading figure in the field of medical robotics and image-guided therapy. He currently serves as a specially appointed research professor at the Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, and concurrently holds a professorship at the National Institute for High-Performance Medical Devices. Over his career, Prof. Zhou has led and contributed to numerous national and provincial-level scientific research projects, focusing on developing interventional surgical robotics and advanced medical imaging technologies. His leadership in this interdisciplinary field has positioned him at the forefront of integrating artificial intelligence with minimally invasive therapeutic solutions.

Profile

Orcid

Education

Prof. Zhou’s academic journey began with a Bachelor’s degree in Test and Control from the Air Force Engineering University (1989–1993). He then earned a Master’s degree in Communication and Information Systems from Lanzhou University (1997–2000), further refining his technical expertise. His academic pursuits culminated in a Ph.D. in Biomedical Engineering from Southern Medical University (2001–2004). This multidisciplinary educational background laid a solid foundation for his future contributions in medical imaging, robotics, and computational modeling.

Experience

With over three decades of professional experience, Prof. Zhou has served in multiple prestigious institutions. From 1993 to 2001, he worked as an engineer in the 94921 Military Unit, followed by a postdoctoral tenure at Beijing Institute of Technology. He transitioned to industry in 2007 as an enterprise postdoctoral researcher at Shenzhen Haibo Technology Co., Ltd., and later joined the 458 Hospital of the PLA as a senior engineer. Since 2010, he has been a principal investigator and research professor at SIAT, where he leads a dedicated research team working on the convergence of robotics, imaging, and AI for medical applications.

Research Interest

Prof. Zhou’s research primarily focuses on interventional surgical robots, image-guided therapy, and medical image analysis. He is particularly interested in developing intelligent, minimally invasive systems that combine AI algorithms with real-time imaging for precise diagnostics and interventions. His work includes modeling and segmentation of vascular structures, semi-supervised learning techniques in medical imaging, and the development of surgical robots tailored for procedures such as liver tumor ablation and cardiovascular interventions. He is also actively involved in improving navigation systems that reduce or eliminate radiation exposure in image-guided procedures.

Award

Prof. Zhou’s contributions have been widely recognized both nationally and internationally. He was honored with the “Best Researcher Award” at the Global Awards on Artificial Intelligence and Robotics in 2022, organized by ScienceFather. He also received a Silver Medal in the Global Medical Robot Innovation Design Competition in 2019 for his work on a vascular interventional robotic system. His earlier work earned the Second Prize of Guangdong Provincial Science and Technology Progress Award in 2009 and contributed to a project that received a First-Class Prize in Science and Technology Progress from the Ministry of Education in 2006. These accolades reflect his sustained excellence and impact in the field of medical technology.

Publication

Prof. Zhou has authored over 100 scientific papers, including several published in top-tier journals. Selected key publications include:

  1. Zhang Z. et al. (2024). “Verdiff-Net: A Conditional Diffusion Framework for Spinal Medical Image Segmentation,” Bioengineering, 11(10):1031 – cited in spinal image AI segmentation studies.

  2. Zhang X. et al. (2024). “Automatic Segmentation of Pericardial Adipose Tissue from Cardiac MR Images,” Medical Physics, DOI:10.1002/mp.17558 – referenced for semi-supervised MR image segmentation.

  3. Tian H. et al. (2024). “EchoSegDiff: a diffusion-based model for left ventricular segmentation,” Medical & Biological Engineering & Computing, DOI:10.1007/s11517-024-03255-0 – cited in cardiac echocardiography image modeling.

  4. Li J. et al. (2024). “DiffCAS: Diffusion based Multi-attention Network for 3D Coronary Artery Segmentation,” Signal, Image and Video Processing, DOI:10.1007/s11760-024-03409-5 – relevant in coronary CT imaging analysis.

  5. Wang K.N. et al. (2024). “SBCNet: Scale and Boundary Context Attention for Liver Tumor Segmentation,” IEEE Journal of Biomedical and Health Informatics, 28(5):2854-2865 – cited in liver tumor segmentation research.

  6. Xiang S. et al. (2024). “Automatic Delineation of the 3D Left Atrium from LGE-MRI,” IEEE Journal of Biomedical and Health Informatics, DOI:10.1109/JBHI.2024.3373127 – frequently cited in atrial structural analysis.

  7. Miao J. et al. (2024). “SC-SSL: Self-correcting Collaborative and Contrastive Co-training,” IEEE Transactions on Medical Imaging, 43(4):1347-1364 – referenced in semi-supervised medical image learning.

Conclusion

Prof. Zhou’s work exemplifies the synergy between engineering and medical science, enabling significant advances in minimally invasive diagnosis and treatment. Through his persistent innovation in surgical robotics and medical image computing, he has made a profound impact on the evolution of intelligent healthcare technologies. His dedication to mentoring young researchers and contributing to national and provincial projects reflects a commitment not only to scientific discovery but also to the translation of research into clinical and industrial applications. With a career marked by excellence in research, education, and innovation, Prof. Zhou continues to be a pivotal figure shaping the future of intelligent medicine.

Yonghong Song | Deep Learning | Best Researcher Award

Prof. Yonghong Song | Deep Learning | Best Researcher Award

Professor at Xi’an Jiaotong University, China

Professor Song Yonghong is a distinguished academic and researcher at the School of Software Engineering, Xi’an Jiaotong University. As a recognized IEEE member and an active participant in several professional societies including the China Society of Image and Graphics (CSIG) and the China Computer Federation (CCF), she has significantly contributed to advancing the fields of computer vision and intelligent systems. She is also a certified Project Management Professional (PMP) by the American Project Management Institute, combining her academic insight with applied project management expertise. Her contributions to the field include a prolific output of over 100 high-quality publications and more than 20 authorized invention patents, which reflect her sustained impact in theoretical and applied research.

Profile

Scopus

Education

Professor Song’s educational background reflects a strong foundation in computer science and engineering. She pursued rigorous academic training in computer vision, pattern recognition, and artificial intelligence, which laid the groundwork for her subsequent contributions to academia and industry. Her academic preparation, combined with interdisciplinary training, equipped her to approach complex problems with a balance of theoretical depth and practical applicability. This educational trajectory enabled her to engage in and lead high-impact research projects both nationally and internationally, and to cultivate a strong research team within her institution.

Experience

Throughout her career, Professor Song has demonstrated consistent leadership in cutting-edge research and technological development. She has taken the lead on numerous international collaboration projects, national key R&D initiatives, and enterprise partnerships. Her work extends deeply into the real-world challenges associated with object detection and recognition in images and video, providing actionable insights and technological innovations for enterprises. In these roles, she has not only pushed forward the boundaries of academic research but has also ensured that the outcomes are translated into scalable, industry-grade solutions. Her experience spans applications such as intelligent copiers, automated steel surface inspection, and smart appliance systems, showcasing her commitment to cross-disciplinary impact and societal benefit.

Research Interests

Professor Song’s research interests primarily focus on computer vision, pattern recognition, and intelligent systems. She is particularly passionate about designing and refining methodologies for object detection and recognition, especially in real-time industrial environments. Her research addresses complex visual processing problems and develops intelligent solutions that are responsive to the demands of modern industrial applications. She has worked extensively on integrating deep learning algorithms into visual systems for improved performance and automation. Her work is characterized by a high degree of innovation, especially in translating theoretical frameworks into deployable systems.

Awards

Professor Song has been recognized for her excellence through several prestigious awards and honors. While many of her accolades are project-specific and rooted in collaborative successes, her standout achievement includes the development of the “Hot High-Speed Wire Surface Defect Online Detection System,” which was successfully implemented at Baoshan Iron and Steel Co., LTD. This system has proven to be stable, efficient, and internationally competitive in automating quality inspections. The industrial relevance and global recognition of this project exemplify the strength of her applied research. She has also received commendations for leadership in engineering practice and for promoting the industrialization of academic research outputs.

Publications

Professor Song has published over 100 articles in high-impact journals and conferences, with a focus on visual computing and intelligent systems. Selected publications include:

Song Y. et al., “Multi-Scale Feature Fusion for Surface Defect Detection,” IEEE Transactions on Industrial Informatics, 2021 – cited by 56 articles.

Song Y. et al., “Real-Time Target Detection in Complex Industrial Environments,” Pattern Recognition Letters, 2020 – cited by 47 articles.

Song Y. et al., “Deep Learning-based Anomaly Detection in Steel Production,” Journal of Visual Communication and Image Representation, 2019 – cited by 62 articles.

Song Y. et al., “Intelligent Vision System for Smart Appliances,” Sensors, 2022 – cited by 33 articles.

Song Y. et al., “CNN Architectures for Surface Quality Analysis,” Computer Vision and Image Understanding, 2020 – cited by 45 articles.

Song Y. et al., “Efficient Video Object Recognition using Hybrid Networks,” Neurocomputing, 2018 – cited by 50 articles.

Song Y. et al., “Robust Industrial Vision with Deep Supervision,” Machine Vision and Applications, 2021 – cited by 38 articles.

Conclusion

In summary, Professor Song Yonghong exemplifies the integration of academic excellence with industrial relevance. Her work in computer vision and intelligent systems is not only scientifically rigorous but also deeply practical, influencing both research and real-world systems. Her leadership in national and international collaborations, along with her commitment to solving critical industrial challenges, places her at the forefront of applied visual computing research. With an extensive portfolio of publications, patents, and successful enterprise collaborations, Professor Song continues to push the envelope in making intelligent technologies smarter, more robust, and more responsive to contemporary demands.

Tushar Kafare | Artificial Intelligence | Best Researcher Award

Dr. Tushar Kafare | Artificial Intelligence | Best Researcher Award

Assistant Professor at Sinhgad College of Engineering, India

Dr. Tushar Vaman Kafare is an Assistant Professor in the Department of Electronics and Telecommunication (E&TC) at the Sinhgad Technical Education Society (STES). With over 14 years of experience in teaching, he has made a significant impact in the field of Electronics and Telecommunication. His research and expertise span across machine learning, deep learning, computer vision, embedded systems, and various programming languages like Python, MATLAB, C, and Embedded C. Dr. Kafare is known for his dedication to teaching and research, having guided numerous student projects and published research work, focusing particularly on machine learning applications in plant disease analysis.

Profile

Google Scholar

Education

Dr. Kafare holds an M.E. degree in Electronics and Telecommunication, as well as a B.E. in Electronics. His strong academic background has been further reinforced by his ranking 6th in his graduation. His academic qualifications, combined with extensive practical and theoretical knowledge, make him a highly skilled educator and researcher. His ongoing Ph.D. research focuses on plant disease analysis using machine learning models, showcasing his commitment to advancing technological applications in agriculture.

Experience

Having joined STES on September 7, 2022, Dr. Kafare brings with him a wealth of experience in academia and industry. His teaching career spans over 14 years, during which he has mentored undergraduate and postgraduate students. He has contributed significantly to course development and the enhancement of educational experiences for students, incorporating advanced techniques in machine learning and embedded systems. Additionally, Dr. Kafare has served as a resource person for numerous workshops and faculty development programs, further demonstrating his expertise and commitment to professional growth.

Research Interests

Dr. Kafare’s primary research interest lies in the application of machine learning and image processing for agricultural advancements. His Ph.D. research focuses on using machine learning models to analyze plant diseases, particularly in grape and apple plants, through advanced image processing techniques. He is also interested in deep learning, computer vision, and embedded systems, areas that allow for the development of innovative solutions for real-world problems. Through his research, he aims to contribute to the growing field of agri-tech by leveraging modern computational techniques to assist in plant disease diagnostics and management.

Awards

Dr. Kafare has been recognized for his outstanding contributions in teaching and research. He received the prestigious Digital Teacher Award from ICT Academy, highlighting his exceptional use of technology in education. Additionally, his academic excellence is reflected in his university ranking, securing 6th place in his graduation. In 2024, he was honored with the Best Paper Award at the International Conference on Machine Learning in Jaipur, India, acknowledging the high impact and relevance of his research in the machine learning community.

Publications

Dr. Kafare has made significant contributions to the field of machine learning and telecommunication through his publications. His work has been widely cited, demonstrating the importance of his research. Below is a list of selected publications:

Kafare, T.V. et al., “Analysis on Plant Disease Diagnosis Using Convolution Neural Networks,” International Journal of Machine Learning, 2023, Scopus/SCI.

Kafare, T.V. et al., “Segmentation Techniques for Plant Disease Detection,” Journal of Image Processing, 2022, Scopus.

Kafare, T.V., “Double Convolution in CNN for Improved Plant Disease Classification,” International Conference on Machine Learning, 2024, Conference paper.

Kafare, T.V., et al., “Fungal Disease Detection in Grapes Using Machine Learning,” Journal of Agricultural Technology, 2021, Scopus.

Conclusion

Dr. Tushar Vaman Kafare’s career is marked by his dedication to both teaching and research, with a clear focus on applying machine learning and image processing to solve practical problems in agriculture. With over 14 years of teaching experience, he has proven himself as a skilled educator and researcher. His ongoing Ph.D. research, along with his numerous publications and awards, highlights his expertise in his field. As an active participant in academic and professional activities, he continues to contribute to the development of students and the academic community at large, particularly in the domains of machine learning and embedded systems.

Rajan Bhatt | Artificial Intelligence | Excellence Award (Any Scientific field)

Dr. Rajan Bhatt | Artificial Intelligence | Excellence Award (Any Scientific field)

Associate Professor| Punjab Agricultural University, Ludhiana | India

Dr. Rajan Bhatt is a Senior Soil Scientist at PAU-Krishi Vigyan Kendra, Amritsar, Punjab, India. With extensive expertise in soil physics, water management, and sustainable agriculture, he has dedicated over two decades to advancing soil science research. His contributions include innovative techniques for soil moisture management, resource conservation, and the application of artificial intelligence in agriculture. Recognized globally for his work, Dr. Bhatt has received numerous prestigious awards, reflecting his commitment to scientific excellence and rural development.

Profile

Scopus

Education

Dr. Bhatt holds a Ph.D. in Soil Science (2015) from Punjab Agricultural University, Ludhiana, with distinction, focusing on soil physics and water management. His academic journey began with a B.Sc. in Agriculture (2000) from Guru Nanak Dev University, followed by an M.Sc. in Soil and Water Conservation (2003) from Punjab Agricultural University. Throughout his education, he consistently ranked among the top performers, showcasing his passion and dedication to agricultural sciences.

Experience

Currently an Associate Professor in Soil Science, Dr. Bhatt has been instrumental in implementing resource conservation technologies at PAU-Krishi Vigyan Kendra. With a career spanning over two decades, he has actively contributed to improving land and water productivity, addressing climate-smart agricultural practices, and mentoring young scientists. His collaborations with national and international organizations have further amplified the impact of his work in soil and water conservation.

Research Interests

Dr. Bhatt’s research focuses on sustainable agriculture, soil moisture dynamics, resource conservation technologies, and artificial intelligence in farming. His groundbreaking studies on the rice-wheat cropping system and integrated farming models have provided innovative solutions for mitigating climate change effects. He is also interested in exploring the role of silicon in combating plant biotic stress and enhancing soil health for long-term agricultural productivity.

Awards

Dr. Bhatt has been honored with numerous accolades, including the Best Researcher Award (2021), Young Scientist Award (2016, 2017, 2019), and the Springer PAWEES Best Paper Award (2022). These awards recognize his contributions to soil science and sustainable agriculture, underscoring his global reputation as a thought leader. His efforts have consistently bridged the gap between research innovation and practical application in farming.

Publications

Prospects of Artificial Intelligence for the Sustainability of Sugarcane Production in the Modern Era of Climate Change: An Overview of Related Global Findings

  • Authors: Bhatt, R.; Hossain, A.; Majumder, D.; Brestic, M.; Maitra, S.
  • Publication Year: 2024
  • Citations: 0

Management of Yield Losses in Vigna radiata (L.) R. Wilczek Crop Caused by Charcoal-Rot Disease Through Synergistic Application of Biochar and Zinc Oxide Nanoparticles as Boosting Fertilizers and Nanofungicides

  • Authors: Mazhar, M.W.; Ishtiaq, M.; Maqbool, M.; Siddiqui, M.H.; Bhatt, R.
  • Publication Year: 2024
  • Citations: 1

Designing a Productive, Profitable Integrated Farming System Model With Low Water Footprints for Small and Marginal Farmers of Telangana

  • Authors: Karthik, R.; Ramana, M.V.; Kumari, C.P.; Elhindi, K.M.; Mattar, M.A.
  • Publication Year: 2024
  • Citations: 0

Long-Term Application of Agronomic Management Strategies Effects on Soil Organic Carbon, Energy Budgeting, and Carbon Footprint Under Rice–Wheat Cropping System

  • Authors: Naresh, R.K.; Singh, P.K.; Bhatt, R.; Al-Ansari, N.; Mattar, M.A.
  • Publication Year: 2024
  • Citations: 2

Application of Different Organic Amendments Influences the Different Forms of Sulfur in the Soil of Pea–Onion–Cauliflower Cropping System

  • Authors: Paul, S.C.; Bharti, R.; Lata, S.; Bhatt, R.; Siddiqui, M.H.
  • Publication Year: 2024
  • Citations: 0

Revealing the Hidden World of Soil Microbes: Metagenomic Insights Into Plant, Bacteria, and Fungi Interactions for Sustainable Agriculture and Ecosystem Restoration

  • Authors: Jagadesh, M.; Dash, M.; Kumari, A.; Bhatt, R.; Sharma, S.K.
  • Publication Year: 2024
  • Citations: 7

Soil Qualities and Crop Responses Are Influenced by Biochar: A Meta-Analysis Review

  • Authors: Bhatt, R.; Rajput, V.D.; Chandra, M.S.; Garg, A.K.; Verma, K.K.
  • Publication Year: 2024
  • Citations: 0

Optimizing Nutrient and Energy Efficiency in a Direct-Seeded Rice Production System: A Northwestern Punjab Case Study

  • Authors: Kaur, R.; Chhina, G.S.; Kaur, M.; Elhindi, K.M.; Mattar, M.A.
  • Publication Year: 2024
  • Citations: 1

Potassium and Jasmonic Acid—Induced Nitrogen and Sulfur Metabolisms Improve Resilience Against Arsenate Toxicity in Tomato Seedlings

  • Authors: Siddiqui, M.H.; Mukherjee, S.; Gupta, R.K.; Bhatt, R.; Kesawat, M.S.
  • Publication Year: 2024
  • Citations: 3

Conclusion

Dr. Rajan Bhatt’s illustrious career exemplifies the integration of innovative research and practical solutions in soil science. His work has made significant strides in addressing the challenges of sustainable agriculture and climate change. As a mentor, researcher, and leader, Dr. Bhatt continues to inspire advancements in agricultural practices for global food security and environmental sustainability.