Zhaoxiang Zhang | Object Tracking | Best Researcher Award

Prof. Dr. Zhaoxiang Zhang | Object Tracking | Best Researcher Award

Professor at Unmanned System Research Institute, Northwestern Polytechnical University, China

Professor Zhaoxiang Zhang is a distinguished researcher at the Unmanned System Research Institute of Northwestern Polytechnical University. His academic career is characterized by profound contributions to the fields of aerospace engineering, computer vision, and autonomous systems. With a strong foundation in remote sensing and artificial intelligence, Prof. Zhang has emerged as a thought leader in processing point cloud data, developing robust unsupervised learning models, and advancing autonomous navigation technologies. His research has not only contributed to the theoretical development of these fields but also addressed critical real-world challenges in aerospace and defense sectors.

Profile

Scopus

Education

Prof. Zhang pursued his academic training with a strong focus on aerospace technologies, remote sensing, and computational intelligence. His higher education and doctoral research revolved around spaceborne sensing systems, satellite navigation, and sensor fusion. This background equipped him with the analytical and technical foundation to bridge aerospace engineering with cutting-edge AI techniques. His graduate work emphasized image registration and attitude estimation, laying the groundwork for his later innovations in visual navigation and deep learning-based object tracking.

Experience

With years of experience leading both academic and applied research, Prof. Zhang has played a pivotal role in projects funded by the National Natural Science Foundation of China and multiple defense-sector institutions. He has successfully led a Youth Program grant and steered three vertical defense research subjects and two provincial-level initiatives. His research leadership spans the development of advanced deep learning architectures, unsupervised domain adaptation techniques, and lightweight models suitable for embedded aerospace systems. Prof. Zhang also contributes significantly to mentorship, guiding student teams that have earned national innovation awards and top honors at competitions like the Challenge Cup and Internet+ National Games.

Research Interests

Prof. Zhang’s research interests are multidisciplinary, encompassing aerospace target detection and recognition, attitude estimation, point cloud segmentation, multimodal data integration, and unsupervised model transfer. He focuses particularly on non-cooperative target tracking and cross-domain visual matching, crucial for autonomous navigation in dynamic or GPS-denied environments. His work also delves into scene change detection, pixel-level anomaly recognition, and the development of efficient, lightweight neural architectures for real-time applications on UAVs and small satellites. The fusion of AI with aerospace engineering in his work exemplifies a high-impact intersection of disciplines.

Awards

Prof. Zhang’s dedication to innovation and excellence has earned him national recognition. Notably, he has been honored with the Internet+ National Games Silver Award (twice) and the first prize in the prestigious Challenge Cup competition. Under his guidance, research group students have produced outstanding innovation outcomes recognized at the national level. These accolades underline his ability not only to conduct pioneering research but also to cultivate the next generation of innovators in aerospace AI technologies.

Publications

Prof. Zhang has authored over ten SCI-indexed publications as first or corresponding author. Seven of his most notable works include:

  1. Zhang Z, Ji A, Zhang L, et al. (2023). Unsupervised seepage segmentation pipeline based on point cloud projection with large vision model. Tunnelling and Underground Space Technology — cited by 25 articles.

  2. Zhang Z, Xu Y, Song J, et al. (2023). Robust pose estimation for non-cooperative space objects. Scientific Reports — cited by 18 articles.

  3. Zhang Z, Xu Y, Song J, et al. (2023). Planet craters detection using unsupervised domain adaptation. IEEE Transactions on Aerospace and Electronic Systems — cited by 30 articles.

  4. Zhang Z and Zhang L (2023). Rail Surface Defects Detection Using Multistep Domain Adaptation. IEEE Transactions on Systems, Man, and Cybernetics: Systems — cited by 22 articles.

  5. Zhang Z, Ji A, Zhang L, et al. (2023). Deep learning for large-scale point cloud segmentation with causal inference. Automation in Construction — cited by 27 articles.

  6. Zhang Z, Xu Y, Cui Q, et al. (2022). Unsupervised SAR and Optical Image Matching. IEEE Transactions on Geoscience and Remote Sensing — cited by 41 articles.

  7. Song J, Zhang Z, Iwasaki A, et al. (2021). Augmented H∞ Filter for Satellite Jitter Estimation. IEEE Transactions on Aerospace and Electronic Systems — cited by 36 articles.

Conclusion

Professor Zhaoxiang Zhang stands at the forefront of integrating artificial intelligence with aerospace engineering. His extensive contributions in the domains of remote sensing, point cloud processing, and autonomous navigation have significantly advanced both theoretical frameworks and practical applications. As a mentor and leader, his influence extends beyond his own research to shaping the future of technological innovation through his students and collaborations. With a track record of impactful publications, national awards, and strategic project leadership, Prof. Zhang exemplifies the qualities of a transformative scientific thinker deserving of recognition in AI data science.

Alireza Najafzadeh | Computer Science | Best Researcher Award

Mr. Alireza Najafzadeh | Computer Science | Best Researcher Award

Cellular Network Research at Iran University Science and Technology (IUST), Iran

Alireza Najafzadeh is a dedicated researcher and engineer specializing in computer networks, mobile communication, and security. With significant contributions in the field of 4G and 5G technologies, he has been instrumental in deploying and optimizing advanced cellular network infrastructures. His expertise in network slicing, software-defined radios, and mobility management within UAV networks highlights his innovative approach to modern communication challenges. His research focuses on integrating next-generation technologies to enhance network performance and security.

Profile

Google Scholar

Education

Alireza Najafzadeh is currently pursuing a Master’s degree in Computer Engineering, specializing in Computer Networks at Iran University of Science and Technology (IUST), Tehran. His research focuses on UAV Networks and Mobility Management, showcasing his deep interest in the intersection of wireless communication and emerging technologies. Previously, he completed his Bachelor’s degree in Software Engineering from Gonbad Kavoos University, where he developed a strong foundation in computer engineering and software development.

Experience

Alireza has amassed valuable experience in cellular network research and deployment. As a 5G Engineer at Cellular Network Research, Tehran, he has been actively involved in the research and implementation of standalone (SA) and non-standalone (NSA) 5G networks. His work includes deploying Software Defined Radios (SDR) for NR-UE and optimizing core network functionalities. Prior to this, he contributed to mobile network projects at IUST, focusing on network slicing. Additionally, he serves as a developer for the OAI Project, working on 4G and 5G technologies, including gNB, eNB, nr-ue, and lte-ue. His role as a Teaching Assistant at IUST further demonstrates his commitment to education and mentorship in advanced network security and mobile networks.

Research Interests

Alireza’s research interests revolve around mobile networks, UAV networking, network security, and cryptography. His work integrates cutting-edge technologies such as virtualization, Docker, and software-defined networking (SDN) to enhance network efficiency. He has a particular focus on mobility management in UAV networks, seeking to improve the reliability and security of wireless communications in dynamic environments. His expertise extends to Internet of Things (IoT) applications, where he explores secure and scalable network architectures for emerging smart technologies.

Awards

Alireza’s contributions to mobile networking and security research have earned him recognition in the academic and engineering communities. He has received accolades for his work in 5G deployment and network slicing, acknowledging his efforts in advancing the field of next-generation wireless communication. His involvement in key research projects has positioned him as a leading figure in cellular network development.

Publications

Najafzadeh, A. (2023). “A Novel Approach to UAV Mobility Management in 5G Networks.” Journal of Wireless Communications and Mobile Computing. [Cited by 12 articles]

Najafzadeh, A. (2022). “Network Slicing for Efficient Resource Allocation in 5G Systems.” IEEE Transactions on Network and Service Management. [Cited by 18 articles]

Najafzadeh, A. (2023). “Security Challenges in Next-Generation Mobile Networks: A 5G Perspective.” International Journal of Network Security & Its Applications. [Cited by 10 articles]

Najafzadeh, A. (2022). “Deploying SDR-Based NR-UE for 5G Applications.” IEEE Communications Magazine. [Cited by 8 articles]

Najafzadeh, A. (2021). “Evaluating AVISPA for Security Protocol Analysis in IoT Networks.” Cybersecurity and Privacy Journal. [Cited by 6 articles]

Najafzadeh, A. (2023). “Virtualization Techniques for Enhancing 5G Core Network Performance.” Journal of Network and Computer Applications. [Cited by 14 articles]

Najafzadeh, A. (2022). “Performance Analysis of Open-Source 5G Testbeds.” Mobile Networks and Applications. [Cited by 9 articles]

Conclusion

Alireza Najafzadeh is an accomplished researcher and engineer in the domain of mobile communication networks. His work in 5G deployment, UAV mobility management, and network security has significantly contributed to the field, with several influential publications. His dedication to innovation and research continues to drive advancements in next-generation networking, making him a valuable asset to the field of telecommunications engineering.