Amna Ikram | Artificial Intelligence | Best Researcher Award

Dr. Amna Ikram | Artificial Intelligence | Best Researcher Award

Senior Lecturer | Government Sadiq College Women University | Pakistan

Dr. Amna Ikram is an accomplished researcher recognized for her pioneering contributions in machine learning, image processing, Internet of Things (IoT), obstacle detection, and smart agriculture. Her work emphasizes the integration of artificial intelligence and data-driven technologies to develop intelligent, efficient, and socially impactful systems. With a citation count exceeding 170, an h-index of 7, and an i10-index of 5, Dr. Ikram’s scholarly record highlights her commitment to addressing modern challenges in automation, healthcare, and sustainable agriculture.Her research focuses on creating AI-enabled frameworks and hybrid computational models that enhance decision-making and predictive accuracy in real-world applications. In agriculture, her widely cited paper, “Crop Yield Maximization Using an IoT-Based Smart Decision System” (Journal of Sensors, 2022), presents a robust model for optimizing crop productivity using sensor data, environmental parameters, and predictive algorithms. This work has significantly influenced the development of precision agriculture and IoT-driven farming systems.Expanding her expertise into healthcare and assistive technologies, Dr. Ikram has contributed to several innovative studies such as “Forensic Radiology: A Robust Approach to Biological Profile Estimation from Bone Image Analysis Using Deep Learning” and “Transformer-Based ECG Classification for Early Detection of Cardiac Arrhythmias.” These contributions showcase her ability to blend AI with biomedical imaging for diagnostic advancements and patient support.Her recent publications, including “A DETR-Based Approach for Enhancing Object Detection in Assistive Technology for the Visually Impaired” and “AI-Enabled Vision Transformer for Automated Weed Detection,” highlight her continuous drive to apply machine learning and computer vision to enhance accessibility and agricultural efficiency. Furthermore, her exploration of fuzzy-optimized hybrid neural networks and IoT sensor integration has resulted in innovative frameworks for yield prediction, crop disease detection, and obstacle recognition.Dr. Ikram’s interdisciplinary approach bridges technology and sustainability. By merging deep learning, IoT infrastructure, and intelligent vision systems, her work supports the creation of smarter, adaptive environments that empower both humans and industries. Her research continues to advance the frontiers of AI-driven automation, smart agriculture, and assistive IoT technologies, contributing profoundly to sustainable innovation and societal betterment.

Profiles: ORCID | Google Scholar

Featured Publications

  1. Ikram, A., Aslam, W., Aziz, R. H. H., Noor, F., Mallah, G. A., Ikram, S., & Ahmad, M. S. (2022). Crop yield maximization using an IoT-based smart decision system. Journal of Sensors, 2022(1), 2022923.
    Citations: 71

  2. Batool, S. N., Yang, J., Gilanie, G., Latif, A., & Ikram, A. (2025). Forensic radiology: A robust approach to biological profile estimation from bone image analysis using deep learning. Biomedical Signal Processing and Control, 105.
    Citations: 19

  3. Malik, M., Ikram, A., Batool, S. N., & Aslam, W. (2018). A performance assessment of rose plant classification using machine learning. In Proceedings of the International Conference on Intelligent Technologies and Applications (pp. 745–756).
    Citations: 15

  4. Hassan, J. U., Missen, M. M. S., Firdous, A., Maham, A., & Ikram, A. (2023). An adaptive M-learning usability model for facilitating M-learning for slow learners. International Journal of Interactive Mobile Technologies, 17(19).
    Citations: 14
  5. Naveed, S., Husnain, M., Alsubaie, N., Samad, A., Ikram, A., Afreen, H., & Gilanie, G. (2024). Drug efficacy recommendation system of glioblastoma (GBM) using deep learning. IEEE Access.
    Citations: 13

Dr. Amna Ikram’s research bridges artificial intelligence, IoT, and data-driven innovation to create intelligent solutions that enhance agriculture, healthcare, and assistive technologies. Her pioneering work advances sustainable development, automation, and societal well-being through smart, human-centered innovations that connect science with real-world impact.

 

Jiafa Mao | Computer Science | Best Researcher Award

Prof. Jiafa Mao | Computer Science | Best Researcher Award

Professor at Zhejiang University College of Computer Science and Technology | China 

Prof. Jiafa Mao is an accomplished scholar and doctoral supervisor at the School of Computer Science and Technology, Zhejiang University of Technology, renowned for his expertise in information security, pattern recognition, computer vision, intelligent systems, and multimedia processing. He earned his Ph.D. in Pattern Recognition and Intelligent Systems from East China University of Science and Technology, followed by postdoctoral research at the Beijing University of Posts and Telecommunications. He has served as a professor, leading impactful research that bridges theory with real-world applications. Prof. Mao has directed and participated in numerous national and provincial-level projects, including the National 973 Program and NSFC initiatives, reflecting his strong research leadership. With over 60 publications in prestigious journals such as Pattern Recognition and IEEE Transactions, he has established an international academic footprint. A dedicated reviewer and active member of ACM, CCF, and CSIG, he continues to advance innovation and mentor future researchers.

Professional Profile

Scopus Profile 

Education

Prof. Jiafa Mao has built a strong academic foundation rooted in advanced computing sciences. He earned his Ph.D. in Pattern Recognition and Intelligent Systems from East China University of Science and Technology, where he focused on computational intelligence and system-level problem-solving. His doctoral journey equipped him with a deep understanding of information security, intelligent algorithms, and multimedia systems. To further enhance his research capabilities, he pursued postdoctoral studies at the Beijing University of Posts and Telecommunications. During this period, he engaged in cutting-edge investigations in computer science and technology, contributing to high-level research projects and collaborations with academic and industrial partners. This combined academic trajectory not only refined his expertise in areas such as pattern recognition and computer vision but also prepared him to become a future leader in the field, capable of addressing both theoretical challenges and practical applications.

Experience

Prof. Jiafa Mao has accumulated extensive academic and research experience, particularly in higher education and large-scale projects. He has served as a Professor and Doctoral Supervisor at the School of Computer Science and Technology, Zhejiang University of Technology. In this role, he has guided doctoral and postgraduate students, fostered innovation, and promoted high-quality research in areas like multimedia fingerprinting and intelligent systems. His professional journey also includes a productive postdoctoral tenure at the Beijing University of Posts and Telecommunications, where he sharpened his expertise in information security and data protection. Beyond academic teaching, he has led or participated in more than six national projects, including the National 973 Program and the National Natural Science Foundation of China, along with multiple ministerial, provincial, and industry-sponsored projects. His career reflects a balance of teaching, research, and leadership, demonstrating both scholarly excellence and real-world impact.

Research Interest

Prof. Jiafa Mao’s research interests span a wide spectrum of computer science disciplines, with a strong emphasis on information security and pattern recognition. He has extensively explored multimedia fingerprinting, information hiding, and intelligent systems, advancing methods that secure digital content in increasingly complex environments. His contributions to computer vision and image processing have supported applications ranging from identity verification to data protection, reinforcing the relevance of his work in both academic and industrial contexts. He is also engaged in the study of intelligent algorithms that integrate machine learning with evolving computational models, addressing challenges in automation and system reliability. Prof. Mao’s research aligns with pressing societal and technological needs, particularly in safeguarding information systems and advancing AI-driven solutions. With over 60 publications in top-tier journals and conferences, his studies not only enrich theoretical frameworks but also offer practical tools that address real-world challenges in computing and communication technologies.

Awards and Honors

Prof. Jiafa Mao’s career is distinguished by his strong record of scholarly recognition and professional service. His work has been featured in internationally respected journals such as Pattern Recognition, IEEE Transactions on Evolutionary Computation, and IEEE Transactions on Industrial Informatics, showcasing the global reach and quality of his contributions. He has served as a peer reviewer for numerous top journals and conferences, including IEEE Transactions on Cybernetics and the IEEE International Workshop on Information Forensics and Security, highlighting his trusted expertise within the academic community. His leadership in major projects funded by the National 973 Program and the National Natural Science Foundation of China reflects not only research excellence but also national recognition of his capabilities. Furthermore, his professional memberships in ACM, CCF, and CSIG demonstrate his active involvement in advancing the computing profession. These honors, alongside his extensive publication record, affirm his status as a highly respected researcher and academic leader.

Publication Top Notes

Title: Point-level feature learning based on vision transformer for occluded person re-identification
Year: 2024
Citation: 8

Title: Multi-granularity feature intersection learning for visible-infrared person re-identification
Year: 2025

Title: Basic theories and methods of target’s height and distance measurement based on monocular vision
Year: 2025
Citation: 1

Title: The 3D tooth model segmentation method based on GAC+PointMLP network
Year: 2025

Title: Feature optimization-guided high-precision and real-time metal surface defect detection network
Year: 2024
Citation: 3

Title: Workflows scheduling powered by execution time prediction model
Year: 2024
Citation: 1

Title: HashNeck is a Boosting Tool for Deep Learning to Hashing
Year: 2024

Conclusion

Prof. Jiafa Mao represents a distinguished scholar whose academic journey, research expertise, and leadership contributions firmly position him as a leading figure in the field of computer science. His work in information security, pattern recognition, multimedia fingerprinting, and intelligent systems has advanced both theoretical understanding and practical applications. With a Ph.D. in Pattern Recognition and Intelligent Systems and a successful postdoctoral tenure, he has established a strong foundation in computational intelligence and security-driven technologies. His role as a professor and doctoral supervisor has allowed him to mentor future researchers, while his involvement in national and industry-driven projects has enhanced his reputation as a solution-oriented innovator. Prof. Mao’s extensive publications, active peer-reviewing, and professional memberships in organizations like ACM and CCF underscore his global recognition and professional influence. With a balance of academic excellence and societal impact, he is a highly deserving candidate for prestigious recognitions such as the Best Researcher Award.