Bin Liu | Computer Science | Research Excellence Award

Prof. Bin Liu | Computer Science | Research Excellence Award

Professor | Northwest A&F University | China

Prof. Bin Liu is a researcher at Northwest A&F University, Yangling, China, with expertise in artificial intelligence, computer vision, agricultural informatics, and large-scale model training. He has published 69 Scopus-indexed documents, receiving approximately 2,949 citations and achieving an h-index of 18, reflecting sustained academic impact. His recent work focuses on multi-source data fusion, multimodal learning, remote sensing change detection, and efficient parallel training pipelines for large models, with publications in reputable venues such as IEEE Transactions on Computers, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, and Applied Sciences. Liu has collaborated with over 140 co-authors, demonstrating strong interdisciplinary and international research engagement. His research contributes to societal needs by advancing intelligent agricultural disease diagnosis, improving crop monitoring, and enhancing the efficiency of large-scale AI systems, supporting sustainable agriculture and data-driven environmental management.

Citation Metrics (Scopus)

2949
2200
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0

Citations

2,949

Documents

69

h-index

18

Citations

Documents

h-index

View Scopus Profile
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Featured Publications


MDS-Net: An image-text enhanced multimodal dual-branch Siamese network for remote sensing change detection


– IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2025

PRT: An efficient pipeline reuse technology for large models training


– IEEE International Conference on Cluster Computing (CLUSTER), 2025

VMF-SSD: A novel V-space based multi-scale feature fusion SSD for apple leaf disease detection


– IEEE/ACM Transactions on Computational Biology and Bioinformatics, 2023

Sathiyandrakumar Srinivasan | Cybersecurity | Editorial Board Member

Mr. Sathiyandrakumar Srinivasan | Cybersecurity | Editorial Board Member

Cheif Technology Officer | V2 Technologies Inc | United States

Dr. Sathiyandrakumar Srinivasan is an emerging researcher in artificial intelligence, cybersecurity, and intelligent systems, currently affiliated with the Kalasalingam Academy of Research and Education, Krishnankoil, India. His work focuses on IoT security, evolutionary computing, intrusion detection systems, and machine learning–driven optimisation, where he integrates computational intelligence with advanced security frameworks to address critical challenges in modern networked environments. He has authored 19 peer-reviewed publications in reputed international journals and conferences, demonstrating a strong interdisciplinary profile and innovative research approach. His scholarship includes the notable 2025 contribution, “Securing IoT Network with Hybrid Evolutionary Lion Intrusion Detection System: A Composite Motion Optimisation Algorithm for Feature Selection and Ensemble Classification,” which highlights his expertise in designing hybrid AI models for enhancing IoT resilience. Dr. Srinivasan has collaborated with more than 30 co-authors, reflecting his active engagement in the global research community and his commitment to collaborative, high-impact scientific inquiry. His work carries significant societal relevance, particularly in strengthening digital trust, securing smart infrastructures, and improving the safety and reliability of intelligent systems domains critical to present and future technological landscapes. Dr. Srinivasan’s academic influence and research productivity are reflected in his metrics 141 citations, 19 documents, and an h-index of 7.

Profile: Scopus

Featured Publication

Srinivasan, S., Author2, A., Author3, B., & Author4, C. (2025). Securing IoT network with hybrid evolutionary lion intrusion detection system: A composite motion optimisation algorithm for feature selection and ensemble classification. Journal of Experimental and Theoretical Artificial Intelligence, xx–xx.