Yanxia Liang | Computer Science | Research Excellence Award

Yanxia Liang | Computer Science | Research Excellence Award

西安邮电大学 | China

Dr. Yanxia Liang is a distinguished researcher and associate professor whose work advances the fields of communication engineering and intelligent information processing. She serves at the Shaanxi Key Laboratory of Information Communication Network and Security and the School of Communication and Information Engineering at Xi’an University of Posts and Telecommunications, where she contributes to both academic research and graduate mentorship. Her expertise spans interference management, radio resource management, and information compression within mobile communication systems, with a particular emphasis on improving the efficiency, reliability, and adaptability of next-generation networks. With a strong background in clustering algorithms, K-means optimization, cluster-head selection, image processing, and advanced compression techniques—including discrete cosine transform, entropy coding, and lossless compression—she has established a diverse research profile bridging theory and practical applications. Her work on imaging data processing, compression ratio optimization, and the design of robust image compression algorithms contributes to the development of faster, more bandwidth-efficient communication technologies. Across her career, she has authored numerous studies that integrate signal processing, resource allocation strategies, and intelligent algorithmic frameworks to address modern challenges in wireless communication environments. She is also engaged in exploring emerging trends in mobile communication systems, aiming to enhance system performance through improved data handling and reduced interference. Her contributions support the broader evolution of smart communication infrastructures, including applications in multimedia transmission, network optimization, and secure information exchange. Recognized for her interdisciplinary approach, Yanxia Liang continues to advance research that connects communication theory with real-world technological demands, making her a vital contributor to the scientific community working toward more efficient and intelligent communication networks.

Profile: Scopus

Featured Publications

Liang, Y., Sun, C., Jiang, J., Liu, X., He, H., & Xie, Y. (2020). An efficiency-improved clustering algorithm based on KNN under ultra-dense network. IEEE Access, 8. IEEE.

Liang, Y., Zhao, S., Liu, X., He, H., Zhao, X., & Wang, H. (2024). A balanced energy-efficient clustering strategy for WSNs. IEEE Sensors Journal, 24(22). IEEE.

He, H., Liang, Y., & Li, S. (2021). Clustering algorithm based on azimuth in mmWave massive MIMO–NOMA system. In 2021 IEEE/CIC International Conference on Communications in China (ICCC Workshops). IEEE.

Liang, Y., Liu, X., Jiang, J., Du, J., Sun, C., & Xie, Y. (2020). A practical dynamic clustering scheme using spectral clustering in ultra-dense network. In 2020 IEEE/CIC International Conference on Communications in China (ICCC Workshops). IEEE.

Liang, Y., Jia, T., Li, N., Liu, X., Jiang, J., Lu, G., & Zhao, M. (2024). Review of static image compression algorithms. In 2024 IEEE 7th Advanced Information Technology, Electronic and Automation Control Conference (IAEAC). IEEE.

Liu, X., & Liang, Y. (2021). A novel Moore–Penrose-inverse-matrix-based data compression method. In 2021 IEEE 3rd International Conference on Civil Aviation Safety and Information Technology (ICCASIT). IEEE.

Muhammad Suleman Memon | Computer Science | Most Cited Article Award

Muhammad Suleman Memon | Computer Science | Most Cited Article Award

University of Sindh,Jamshoro | Pakistan

Dr. Muhammad Suleman Memon is an accomplished academic and researcher in the fields of Artificial Intelligence, Computer Vision, and Deep Learning, currently serving as an Assistant Professor and Incharge of the Department of Information Technology at the University of Sindh, Dadu Campus. With over twelve years of academic and research experience, he has demonstrated a strong commitment to advancing digital innovation and academic excellence. He earned his Ph.D. in Computer Systems Engineering from Quaid-e-Awam University of Science and Technology, where his research focused on cutting-edge developments in AI-driven systems. His earlier academic background includes a Master’s in Information Technology and a Bachelor’s in Computer Systems Engineering from Mehran University of Engineering and Technology, Jamshoro. Dr. Memon’s research primarily explores Artificial Intelligence applications in healthcare and agriculture, deep learning-based image classification and segmentation, explainable AI (XAI), and the Internet of Things (IoT) for smart system development. He has contributed to the design and teaching of diverse courses, including Object-Oriented Programming, Artificial Intelligence, Web Engineering, and Data Science, fostering computational thinking and innovation among students. Beyond teaching and research, he has played key administrative and leadership roles such as Focal Person for national digital initiatives, Quality Enhancement Coordinator, and Web Administrator for the Dadu Campus. His leadership has been pivotal in enhancing academic quality, managing IT infrastructure, and supporting institutional modernization. Dr. Memon’s scholarly output includes publications in reputed journals, and his ongoing work reflects a deep interest in developing sustainable and explainable AI solutions to address real-world problems. His career exemplifies the integration of academic rigor, research innovation, and leadership in shaping the next generation of computing professionals.

Featured Publications

Lakhan, A., Mastoi, Q. U. A., Elhoseny, M., Memon, M. S., & Mohammed, M. A. (2022). Deep neural network-based application partitioning and scheduling for hospitals and medical enterprises using IoT-assisted mobile fog cloud. Enterprise Information Systems, 16(7), 1883122.

Memon, M. S., Kumar, P., & Iqbal, R. (2022). Meta deep learn leaf disease identification model for cotton crop. Computers, 11(7), 102.

Lakhan, A., Memon, M. S., Mastoi, Q. U. A., Elhoseny, M., Mohammed, M. A., Qabulio, M., & Abdel-Basset, M. (2022). Cost-efficient mobility offloading and task scheduling for microservices IoVT applications in container-based fog cloud network. Cluster Computing, 1–23.

Mastoi, Q. U. A., Memon, M. S., Lakhan, A., Mohammed, M. A., Qabulio, M., Al-Turjman, F., & Abdulkareem, K. H. (2021). Machine learning–data mining integrated approach for premature ventricular contraction prediction. Neural Computing and Applications, 33, 11703–11719.

Mirani, A. A., Memon, M. S., Rahu, M. A., Bhatti, M. N., & Shaikh, U. R. (2019). A review of agro-industry in IoT: Applications and challenges. Quaid-E-Awam University Research Journal of Engineering, Science & Technology, Nawabshah, 17(1), 28–33.

Mirani, A., Memon, M. S., Chohan, R., Wagan, A. A., & Qabulio, M. (2021). Machine learning in agriculture: A review. LUME, 10, 5.

Memon, W. A., Mirani, A. A., Memon, M. S., & Sodhar, I. N. (2019). Comparative study of online learning management systems: A survey in Pakistan. Information Sciences Letters, 8(3), 111–120.

Xiaohang Zhao | Computer Science | Best Researcher Award

Xiaohang Zhao | Computer Science | Best Researcher Award

Dr. Xiaohang Zhao, Changchun Institute of Optics, Fine Mechanics and Physics, China

Xiaohang Zhao is a dedicated Ph.D. candidate in Mechatronic Engineering at the University of Chinese Academy of Sciences (UCAS), affiliated with the esteemed Changchun Institute of Optics, Fine Mechanics and Physics. His research emphasizes cutting-edge infrared imaging and remote sensing technologies, particularly for spaceborne applications. Zhao has demonstrated his scientific innovation through multiple first-author publications in high-impact SCI-indexed journals and the successful filing of four patents. His work addresses critical challenges in image quality, including low-light enhancement, stripe noise removal, and blind deblurring. In addition to his academic research, Zhao has contributed to major national defense projects such as the DXX infrared grating camera and the Geological-1 satellite imaging system. With strong expertise in algorithm development, FPGA hardware design, and detector-driven imaging techniques, he actively explores real-time enhancement solutions in space-based imaging. Zhao combines theoretical rigor with practical engineering, aiming to advance China’s capabilities in aerospace and remote sensing.

Publication Profile

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🎓 Education

Xiaohang Zhao earned his Bachelor of Science degree in Electronic Information Science and Technology from Northeast Normal University, where he gained a strong foundation in signal processing, circuit design, and embedded systems. Following his undergraduate studies, he was admitted to the University of Chinese Academy of Sciences (UCAS) for doctoral research in Mechatronic Engineering, joining the prestigious Changchun Institute of Optics, Fine Mechanics and Physics. At UCAS, Zhao has been engaged in advanced courses and research in optical engineering, infrared imaging, sensor data processing, and mechatronic system design. His academic training includes deep exploration of atmospheric scattering models, hardware-software co-design, and scientific programming for large-scale image processing. Under expert supervision, Zhao continues to sharpen his knowledge through national defense-oriented projects and interdisciplinary collaborations, setting a strong foundation for a future in cutting-edge imaging technology, especially focused on spaceborne and defense-related optical systems.

💼 Experience

Xiaohang Zhao is currently a Ph.D. researcher at the Changchun Institute of Optics, Fine Mechanics and Physics, part of the Chinese Academy of Sciences. His professional work spans both algorithm design and hardware implementation for remote sensing applications. He has developed and implemented advanced image processing techniques—including low-light image enhancement, blind deblurring, and stripe noise removal—for real-time space-based imaging systems. Zhao’s experience includes active involvement in defense and aerospace projects such as the DXX infrared grating camera and the Geological-1 satellite imaging mission. He has also contributed to real-world imaging system development using FPGA platforms, ensuring high-efficiency hardware acceleration. His engineering approach combines deep algorithmic insight with system-level design, detector calibration, and embedded optimization. Zhao has collaborated with multidisciplinary teams, integrating sensor data with advanced image enhancement pipelines and ensuring compliance with strict aerospace-grade performance and reliability standards.

🏆 Honors and Awards

Xiaohang Zhao has been recognized for his outstanding research contributions in infrared and remote sensing imaging with several accolades. His innovative work has led to 4 authorized patents in the field of image enhancement and spaceborne imaging algorithms. He is the first author of 5 SCI-indexed journal articles, including publications in high-impact platforms such as IEEE Sensors Journal and Remote Sensing. His academic excellence earned him multiple research scholarships and commendations from the University of Chinese Academy of Sciences. Zhao has also been selected for participation in key national defense projects, highlighting the practical relevance and strategic importance of his research. His commitment to bridging theoretical development with real-world applications has been recognized through internal awards from the Changchun Institute of Optics for innovation in imaging system design and deployment. These honors underscore his growing reputation in the field of high-performance imaging and optical engineering.

🔬 Research Focus

Xiaohang Zhao’s research centers on infrared and remote sensing image enhancement, with a particular focus on spaceborne systems. His work addresses fundamental challenges in low-light image enhancement, blind deblurring, stripe noise removal, and non-uniform illumination compensation, essential for high-precision satellite and defense imaging. He specializes in image quality enhancement algorithms that are tightly coupled with detector characteristics, enabling real-time implementation through FPGA-based hardware acceleration. Zhao also develops atmospheric scattering models to refine image clarity under complex environmental conditions. His technical portfolio includes detector-driven algorithm optimization, real-time enhancement, and noise-resilient imaging techniques suitable for remote and harsh space environments. Zhao’s applied research contributes directly to national defense projects, including the DXX infrared grating camera and Geological-1 satellite imaging, positioning him as a critical contributor to China’s aerospace imaging capabilities. His future goals include advancing autonomous onboard image correction systems for next-generation satellites.

📚 Publications

  • 📄 Low-Light Image Enhancement Based on Retinex and Adaptive Histogram Equalization for Spaceborne Systems

  • 📄 Stripe Noise Removal in Infrared Images via Dual-Domain Sparse Coding

  • 📄 Blind Image Deblurring for Remote Sensing Using Deep Prior and Motion Estimation

  • 📄 Real-Time FPGA Implementation of Image Enhancement Algorithms for Onboard Satellite Processing

  • 📄 Infrared Image Restoration under Atmospheric Scattering Conditions with Physics-Based Modeling