Dr. Teng Huang | Blockchain | Best Researcher Award

Dr. Teng Huang | Blockchain | Best Researcher Award

Dr. Teng Huang, Guangzhou University, China

Dr. Teng Huang is a distinguished researcher at Guangzhou University, China, specializing in Blockchain, Smart Contracts, and Medical Image Analysis. His contributions span diverse areas, including Comprehensive Transformer Integration Networks (CTIN), endoscopic disease segmentation, and intelligent 3D tumor segmentation. His expertise extends to remote sensing image change detection, privacy-preserving AI, and recommender systems. Dr. Huang has authored numerous high-impact IEEE and Springer publications, advancing cutting-edge AI applications. His research focuses on developing efficient and scalable AI solutions for medical imaging, security, and remote sensing, positioning him as a leading innovator in computational intelligence.

Professional Profile 🌍 

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Suitability for Best Researcher Award πŸ†

Dr. Teng Huang is an exceptional candidate for the Best Researcher Award, given his groundbreaking contributions in blockchain technology, smart contracts, and AI-driven medical imaging. His highly cited research in medical segmentation, secure AI architectures, and remote sensing innovations underscores his impact on academia and industry. Dr. Huang’s work in privacy-preserving AI and adversarial learning is transforming cybersecurity and healthcare analytics. With an extensive publication record in IEEE Transactions and Springer, he has significantly advanced computational efficiency, security, and AI-powered medical diagnostics, making him a standout nominee for this prestigious recognition.

Professional Experience πŸ‘¨β€πŸ«

Dr. Teng Huang is a senior researcher and faculty member at Guangzhou University, where he leads projects on medical AI, blockchain security, and computational intelligence. He has collaborated on multinational research initiatives, developing advanced AI frameworks for ultrasound and MRI analysis, tumor segmentation, and privacy-preserving recommender systems. Dr. Huang has served as a principal investigator for high-profile studies in remote sensing, adversarial AI, and federated learning. His work has been instrumental in advancing medical diagnostics, cybersecurity protocols, and AI-driven automation, making him a sought-after expert in intelligent computing and blockchain research.

Awards & Honors πŸ…

Dr. Teng Huang has received multiple accolades for his contributions to artificial intelligence, medical imaging, and cybersecurity. He has been honored with the Best Paper Award at IEEE conferences for his work on efficient breast lesion segmentation and smart contract security. He was recognized among the Top AI Researchers in China for his pioneering work on transformer-based medical diagnostics. Dr. Huang also received the Outstanding Researcher Award from Guangzhou University for his breakthroughs in blockchain and AI-driven healthcare solutions. His contributions to privacy-preserving AI and cybersecurity have earned him international recognition.

Research Focus πŸ”¬

Dr. Teng Huang’s research is centered on Blockchain, Smart Contracts, Medical AI, and Privacy-Preserving AI. His expertise includes 3D tumor segmentation, ultrasound imaging, federated learning, adversarial AI, and remote sensing. He specializes in transformer-based architectures for medical diagnostics, lightweight AI models for resource-limited platforms, and privacy-enhanced encryption techniques for IoT security. His work on self-sovereign identity management and subgraph matching algorithms has significantly advanced blockchain security and data protection. Dr. Huang’s interdisciplinary approach integrates deep learning, AI-driven medical analysis, and secure computing, positioning him at the forefront of intelligent healthcare innovations.

Publication Top NotesΒ πŸ“–

  1. Comprehensive Transformer Integration Network (CTIN): Advancing Endoscopic Disease Segmentation with Hybrid Transformer Architecture

  2. Efficient Breast Lesion Segmentation From Ultrasound Videos Across Multiple Source-Limited Platforms

  3. IPM: An Intelligent Component for 3D Brain Tumor Segmentation Integrating Semantic Extractor and Pixel Refiner

  4. Online Self-distillation and Self-modeling for 3D Brain Tumor Segmentation

  5. Optimized Breast Lesion Segmentation in Ultrasound Videos Across Varied Resource-Scant Environments

  1. SFFAFormer: A Semantic Fusion and Feature Accumulation Approach for Remote Sensing Image Change Detection

 

 

Dr. Vimal Kumar Dwivedi | Blockchain and Digital Twin | Best Researcher Award

Dr. Vimal Kumar Dwivedi : Blockchain and Digital Twin

Dr. Vimal Kumar Dwivedi, Queen’s University Belfast, United Kingdom

Dr. Vimal Dwivedi received his PhD in Computer Science and Engineering from the Tallinn University of Technology, Tallinn, Estonia. His PhD project was partially sponsored by Qtum Foundation, Singapore. As a part of Ph.D. research, he has developed a XML-based smart contract language that allows non-IT blockchain practitioners to write smart contracts for business use cases. He is working as a Research Fellow in the School of Electronics, Electrical Engineering and Computer Science (EEECS) at the Queen’s University Belfast (QUB), Northern Ireland, United Kingdom, with Prof. Karen and Assistant Professor Vishal Sharma, under a project entitled, Digital twin and blockchain for business decision modeling. Before coming to QUB, he was a lecturer in the Institute of Computer Science at the University of Tartu, Tartu, Estonia. Prior to this, he was an early-stage researcher with the Information Systems Group at TalTech. He serves as an Guest Editor for Mathematics and Computer Science.

πŸŽ“ Education :

Dr. Vimal Kumar Dwivedi holds a distinguished educational background, having earned his Doctor of Philosophy (Ph.D.) from TalTech – Tallinn University of Technology. Prior to his doctoral studies, he obtained his Master of Technology degree from Guru Gobind Singh Indraprastha University. πŸŽ“πŸ”¬ His academic journey showcases a commitment to excellence and a depth of knowledge in his chosen field. Dr. Dwivedi’s achievements reflect a combination of research prowess and advanced technical skills, positioning him as a notable figure in the academic realm. 🌐✨

🌐 Professional Profiles : 

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πŸ† Award and Honors :

Dr. Vimal Kumar Dwivedi’s notable contribution to the field of intelligent computing was recognized with an award for his presentation on “Auto-Generation of Smart Contracts from a Domain-Specific XML-Based Language” at the 9th International Conference on Frontiers in Intelligent Computing: Theory and Applications (FICTA 2021). πŸ†πŸ€– His innovative work in the development and application of domain-specific XML-based languages for smart contract generation highlights his expertise and dedication to advancing the intersection of technology and computational intelligence. Dr. Dwivedi’s achievement at FICTA 2021 underscores his impact on the cutting-edge advancements within the intelligent computing community. πŸ‘πŸŒ

🧠 Research Interests πŸ”¬πŸŒ :

Dr. Vimal Kumar Dwivedi’s research interests encompass a dynamic intersection of emerging technologies. His focus spans across Distributed Ledger Technology (DLT), Blockchain systems, Digital twins, and Ontology engineering. πŸ”¬πŸŒ With a keen eye on the future of digital transformation, Dr. Dwivedi delves into the intricacies of DLT and Blockchain, exploring their potential applications and impact on diverse domains. The realm of Digital twins captures his attention, reflecting a dedication to the advancement of virtual representations and their real-world applications. πŸ”„ Additionally, his interest in Ontology engineering underscores a commitment to shaping structured knowledge representations for enhanced information processing. Dr. Dwivedi’s research pursuits reflect a forward-looking perspective, contributing to the ever-evolving landscape of technology and its multifaceted implications. πŸš€πŸ”

πŸ”„ Scopus Metrics:

  • πŸ“Β Publications: 15 documents indexed in Scopus.
  • πŸ“ŠΒ Citations: A total of 97 citations for his publications, reflecting the widespread impact and recognition of Dr. Hany Hassan’s research within the academic community.
Publications ( Top Note ) :

1.Β  A Lightweight and Efficient Scheme for e-Health Care System using Blockchain Technology

Published Year: 2023

Journal/Conference: 6th International Conference on Information Systems and Computer Networks (ISCON 2023)

2.Β  Comparative Analysis of Speech Emotion Recognition Models and Technique

Published Year: 2023

3.Β  Legally Enforceable Smart-Contract Languages

Published Year: 2022-06-30

Journal: ACM Computing Surveys

4.Β  Driver Dozy Discernment Using Neural Networks with SVM Variants

Published Year: 2023

5.Β  Privacy-Conflict Resolution for Integrating Personal- and Electronic Health Records in Blockchain-Based Systems

Published Year: 2023-12-15

Journal: Blockchain in Healthcare Today

6.Β  Blockchain-based ontology driven reference framework for security risk management

Published Year: 2023-12-08

Journal: Data & Knowledge Engineering

7.Β  Evaluation of a Legally Binding Smart-Contract Language for Blockchain Applications

Published Year: 2023-07-28

Journal: JUCS – Journal of Universal Computer Science

8.Β  Auto-generation of Smart Contracts from a Domain-Specific XML-Based Language

Published Year: 2022

9.Β  Security Issues and Application of Blockchain

Published Year: 2022

10.Β  A Blockchain Implementation for Configurable Multi-Factor Challenge-Set Self-Sovereign Identity Authentication

Published Year: 2022-08