Dr. Linhui Wang | Remote Sensing | Research Excellence Award

Dr. Linhui Wang | Remote Sensing | Research Excellence Award

University of Chinese Academy of Sciences | China

Dr. Linhui Wang is a doctoral researcher specializing in satellite image registration, on-board processing, and remote sensing algorithms, with strong expertise in lightweight feature databases, precise geometric rectification, and near real-time registration for spaceborne systems. His research integrates digital image processing, SAR imaging, machine learning, and GPU-accelerated computing, including CUDA-based implementations, to improve accuracy and efficiency under strict storage and computational constraints. He has published in leading journals and conferences in geoscience and remote sensing. According to Scopus and Google Scholar records, his work has received 16 citations across 15 documents, with an h-index of 3, reflecting growing academic impact in satellite imaging and signal processing research.

Citation Metrics (Scopus)

20

16

12

8

4

0

Citations
16

Documents
4

h-index
3

          🟦 Citations   🟥 Documents   🟩 h-index

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Mr. Thyago Lima | Remote Sensing | Research Excellence Award

Mr. Thyago Lima | Remote Sensing | Research Excellence Award

São Paulo State University | Brazil

Mr. Thyago Anthony Soares Lima is a geographer and disaster-risk analyst specializing in remote sensing, InSAR, and multi-hazard urban risk assessment. His research focuses on characterizing ground deformation, identifying subsidence typologies, and integrating geological, geomorphological, and geospatial data to strengthen urban resilience. He develops workflows that link land subsidence with flooding, erosion, and slope-instability risks, enabling evidence-based planning for hazard-prone regions. His work bridges geoscience and public decision-making by producing operational subsidence and hazard maps used by civil-defense agencies, planners, and environmental managers. His contributions advance sustainable territorial management and innovative methodologies in geoinformatics and environmental hazard analysis.

Citation Metrics (Google Scholar)

100

75

50

25

10

0

 

Citations
8

Documents
20

h-index
2

Citations
Documents
h-index


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Dr. Nabil Bachagha | Remote Sensing | Best Researcher Award

Dr. Nabil Bachagha | Remote Sensing | Best Researcher Award

University of Leeds | United Kingdom

Dr. Nabil Bachagha is a distinguished Research Fellow and global expert in remote sensing, GIS, and deep learning, with significant contributions to digital heritage preservation and archaeological landscape documentation. His interdisciplinary research integrates advanced geospatial technologies, including UAV photogrammetry, terrestrial 3D laser scanning, and machine learning models, to enhance the detection, classification, and conservation of archaeological and cultural heritage sites. A UK Global Talent Visa holder under the Exceptional Talent Route, Dr. Bachagha’s work bridges technology and heritage, focusing on data-driven approaches to protect endangered sites and reconstruct ancient civilizations through digital innovation. His expertise spans ENVI, ArcGIS, QGIS, and Earth Engine applications, combined with proficiency in Python, R, MATLAB, and JavaScript for geospatial analytics and automated system development. With over 430 citations from 374 documents in Scopus (h-index: 6) and 675 citations in Google Scholar (h-index: 8, i10-index: 7), Dr. Bachagha’s research demonstrates strong academic influence and global recognition. His projects, such as the “One Belt, One Road Heritage Protection” and “Endangered Wooden Architecture Programme,” exemplify his commitment to integrating AI, remote sensing, and geospatial intelligence in cultural heritage management.

Profile

Scopus | ORCID | Google Scholar

Featured Publications

Bachagha, N., Wang, X., Lasaponara, R., Luo, L., & Khatteli, H. (2020). Remote sensing and GIS techniques for reconstructing the military fort system of Roman boundary (Tunisia section) and identifying archaeological sites. Remote Sensing of Environment.

Bachagha, N., Luo, L., Wang, X., Masini, N., Tababi, M., Khatteli, H., & Lasaponara, R. (2020). Mapping the Roman water supply system of the Wadi el Melah Valley in Gafsa, Tunisia, using remote sensing. Sustainability.

Luo, L., Wang, X., Guo, H., Lasaponara, R., Zong, X., Masini, N., & Bachagha, N. (2019). Airborne and spaceborne remote sensing for archaeological and cultural heritage applications: A review of the century (1907–2017). Remote Sensing of Environment.

Bachagha, N., Xu, W., Luo, X., Brahmi, M., Wang, X., Souei, F., & Lasaponara, R. (2022). On the discovery of a Roman fortified site in Gafsa, southern Tunisia, based on high-resolution X-band satellite radar data. Remote Sensing.

Bachagha, N., Tababi, M., Selim, G., Shao, W., Xue, Y., Li, W., Bennour, A., Luo, L., Lasaponara, R., & Lao, Y. (2025). Facilitating archaeological discoveries through deep learning and space-based observations: A case study in southern Tunisia. Nature Communications.

Prof. Theodore Tsiligiridis | Remote Sensing | Best Researcher Award

Prof. Theodore Tsiligiridis | Remote Sensing | Best Researcher Award

Professor, Agricultural University of Athens, Greece

Professor Theodore A. Tsiligiridis is a distinguished academic and researcher in telecommunications, computer science, and agricultural informatics. With a strong background in mathematics, probability, and statistics, he has contributed extensively to mobile cellular systems, performance evaluation of networks, and the integration of digital technologies in rural development. His work in European projects like RACE, DELTA, ORA, and GoDigital has significantly influenced ICT applications in agriculture and food security. His contributions to sensor network technologies and intelligent systems for pest management further highlight his interdisciplinary expertise.

Publication Profile

🎓 Education

Professor Tsiligiridis holds a B.Sc. in Mathematics from the University of Athens, Greece. He later pursued an M.Sc. in Probability and Statistics at Manchester University, UK, followed by a Ph.D. in Telecommunications from the Department of Electronic and Electrical Engineering at the University of Strathclyde, Scotland, UK. His educational background provided a strong foundation for his pioneering research in digital communications and agricultural data analytics.

💼 Experience

Following his academic journey, Professor Tsiligiridis joined the Computer Science, Mathematics, and Statistical Division at the Agricultural University of Athens (AUA). Throughout his career, he has taken on various academic and public sector roles, coordinating multiple European research projects. His involvement in projects such as RACE I/II (Advanced Telecommunications), DELTA (Distance Learning), and EUROFARM (Farm Structure Survey) reflects his commitment to bridging ICT and agriculture. Additionally, his leadership in the GoDigital/EU project facilitated internet services and e-commerce practices in thousands of SMEs in rural Greece.

🏆 Awards and Honors

Professor Tsiligiridis’ research contributions have been widely recognized in academia and industry. He has played a pivotal role in multiple EU-funded initiatives, earning commendations for his efforts in advancing telecommunications, rural ICT integration, and agricultural informatics. His pioneering work in wireless sensor networks, artificial intelligence in pest control, and food security has been cited extensively, showcasing his impact in these fields.

🔬 Research Focus

His research spans mobile telecommunications, sensor networks, smart agriculture, and artificial intelligence applications in environmental monitoring. He has extensively worked on electronic trapping systems for pest management, the integration of statistical and geospatial data in small farming systems, and the development of AI-driven solutions for food security. His interdisciplinary approach has led to practical solutions that enhance agricultural sustainability and efficiency.

📝 Conclusion

Professor Theodore A. Tsiligiridis is a visionary academic whose contributions have significantly shaped the intersection of ICT, telecommunications, and agricultural data science. His extensive research, leadership in EU-funded projects, and innovative applications in environmental informatics make him a key figure in advancing digital transformations in rural and agricultural sectors. His impactful work continues to inspire future generations in computer science, engineering, and agritech innovation.

📚 Publications

Supporting the Role of Small Farms in the European Regional Food Systems: What Role for the Science-Policy Interface? (2021) – Global Food Security
🔗 Read Here | Cited by 12

Typology and Distribution of Small Farms in Europe: Towards a Better Picture (2018) – Land Use Policy
🔗 Read Here | Cited by 123

Electronic Traps for Detection and Population Monitoring of Adult Fruit Flies (Diptera: Tephritidae) (2018) – Journal of Applied Entomology
🔗 Read Here | Cited by 71

A Sentiment Lexicon-Based Analysis for Food and Beverage Industry Reviews: The Greek Language Paradigm (2020) – International Journal on Natural Language Computing
🔗 Read Here | Cited by 14

A Location-Aware System for Integrated Management of Rhynchophorus Ferrugineus in Urban Systems (2015) – Computers, Environment and Urban Systems
🔗 Read Here | Cited by 50

Pest Management Control of Olive Fruit Fly (Bactrocera Oleae) Based on a Location-Aware Agro-Environmental System (2012) – Computers and Electronics in Agriculture
🔗 Read Here | Cited by 53

Location-Aware System for Olive Fruit Fly Spray Control (2010) – Computers and Electronics in Agriculture
🔗 Read Here | Cited by 43

Plant Virus Identification Based on Neural Networks with Evolutionary Preprocessing (2010) – Computers and Electronics in Agriculture
🔗 Read Here | Cited by 37

A Memetic Algorithm for Optimal Dynamic Design of Wireless Sensor Networks (2010) – Computer Communications
🔗 Read Here | Cited by 30

Feature Extraction for Time-Series Data: An Artificial Neural Network Evolutionary Training Model for the Management of Mountainous Watersheds (2010) – Computers and Electronics in Agriculture
🔗 Read Here