Sikandar Ali | Artificial Intelligence Award | Best Researcher Award

Dr. Sikandar Ali | Artificial Intelligence Award | Best Researcher Award

Postdoc Fellow, Inje University, South Korea

🎓 Sikandar Ali is a passionate AI researcher and educator specializing in Artificial Intelligence applications in healthcare. Currently pursuing a PhD at Inje University, South Korea, he has a strong academic background and extensive research experience in digital pathology, medical imaging, and machine learning. As a team leader of the digital pathology project, he develops innovative AI algorithms for cancer diagnosis while collaborating with a global team of researchers. Sikandar is a recipient of prestigious scholarships, accolades, and recognition for his contributions to AI and healthcare innovation.

Publication Profile

Google Scholar

Education

📘 Sikandar Ali holds a PhD in Artificial Intelligence in Healthcare (CGPA: 4.46/4.5) from Inje University, South Korea, where his thesis focuses on integrating pathology foundation models with weakly supervised learning for gastric and breast cancer diagnosis. He earned an MS in Computer Science from Chungbuk National University, South Korea (GPA: 4.35/4.5), with research on AI-based clinical decision support systems for cardiovascular diseases. His undergraduate degree is a Bachelor of Engineering in Computer Systems Engineering from Mehran University of Engineering and Technology, Pakistan, with a CGPA of 3.5/4.0.

Experience

💻 Sikandar is an experienced researcher and AI specialist. Currently working as an AI Research Assistant at Inje University, he focuses on cutting-edge projects in digital pathology, cancer detection, and medical imaging. Previously, he worked as a Research Assistant at Chungbuk National University, focusing on cardiovascular disease diagnosis using AI. His industry experience includes roles such as Search Expert at PROGOS Tech Company and Software Developer Intern at Hidaya Institute of Science and Technology.

Awards and Honors

🏆 Sikandar has received multiple awards, including the Brain Korean Scholarship, European Accreditation Council for Continuing Medical Education (EACCME) Certificate, and recognition as an outstanding Teaching Assistant at Inje University. He has also earned full travel grants for international conferences, extra allowances for R&D industry projects, and certificates for reviewing research papers in leading journals. Additionally, he is a Guest Editor at Frontiers in Digital Health.

Research Focus

🔬 Sikandar’s research focuses on developing AI algorithms for medical imaging, with expertise in weakly supervised learning, self-supervised learning, and digital pathology. His projects include designing AI systems for cancer detection, COVID-19 prediction, and IPF severity classification. He also works on object detection applications using YOLO models and wearable sensor-based activity detection for pets. His commitment to explainability and interpretability in AI models ensures their practical utility in healthcare.

Conclusion

🌟 Sikandar Ali is a dedicated AI researcher driving innovation in healthcare through artificial intelligence. With his strong educational foundation, diverse research experience, and impactful contributions, he aims to bridge the gap between AI and medicine, making healthcare more efficient and accessible.

Publications

Detection of COVID-19 in X-ray Images Using DCSCNN
Sensors 2022, IF: 3.4

A Soft Voting Ensemble-Based Model for IPF Severity Prediction
Life 2021, IF: 3.2

Metaverse in Healthcare Integrated with Explainable AI and Blockchain
Sensors 2023, IF: 3.4

Weakly Supervised Learning for Gastric Cancer Classification Using WSIs
Springer 2023

Classifying Gastric Cancer Stages with Deep Semantic and Texture Features
ICACT 2024

Computer Vision-Based Military Tank Recognition Using YOLO Framework
ICAISC 2023

Activity Detection for Dog Well-being Using Wearable Sensors
IEEE Access 2022

Cat Activity Monitoring Using Wearable Sensors
IEEE Sensors Journal 2023, IF: 4.3

Deep Learning for Algae Species Detection Using Microscopic Images
Water 2022, IF: 2.9

Comprehensive Review on Multiple Instance Learning
Electronics 2023

Hybrid Model for Face Shape Classification Using Ensemble Methods
Springer 2021

Cervical Spine Fracture Detection Using Two-Stage Deep Learning
IEEE Access 2024

 

Assoc. Prof. Dr.Pabrício Lopes | Data Science | Best Researcher Award

Assoc. Prof. Dr. Pabrício Lopes | Data Science | Best Researcher Award

Professor, UFRPE, Brazil

🌟 Pabrício Marcos Oliveira Lopes is a dedicated scholar specializing in Remote Sensing, Agrometeorology, and Physical Geography. He is a Professor of Agronomy at the Federal Rural University of Pernambuco (UFRPE) in Recife, Brazil, contributing significantly to the fields of geospatial analysis and climate studies. With over 62 impactful publications, Dr. Lopes is a leader in exploring environmental phenomena, emphasizing sustainability and climate adaptation. 📚🌍

Publication Profile

ORCID

Education

🎓 Dr. Lopes earned his Ph.D. in Remote Sensing from the National Institute for Space Research (INPE) in 2006. He holds an M.Sc. in Agrometeorology from the Federal University of Campina Grande (UFCG, 1999) and dual undergraduate degrees in Meteorology (UFCG, 1997) and Physics (UEPB, 1999). His educational journey showcases a robust interdisciplinary expertise in physical and environmental sciences. 📊🌤️

Experience

🏫 Dr. Lopes serves as a Professor of Agronomy at UFRPE, where he integrates research and teaching to address agricultural and environmental challenges in Brazil’s semi-arid regions. His expertise includes geospatial technologies, climate modeling, and phenological monitoring, making him a valuable contributor to academia and applied science. 🌾🛰️

Research Interests

📖 Dr. Lopes’ research focuses on phenological monitoring, aridity conditions, climate extremes, and desertification, with a particular emphasis on the Brazilian semi-arid region. His work leverages satellite data, GIS modeling, and time-series analysis to develop innovative solutions for environmental monitoring and sustainable agriculture. 🌱📡

Awards

🏆 Dr. Lopes has received recognition for his academic contributions, though specific awards were not listed. His significant impact in climate studies and geospatial research is widely acknowledged in the scientific community. 🌟🎖️

Publications

Phenological Monitoring of Irrigated Sugarcane Using Google Earth Engine, Time Series, and TIMESAT in the Brazilian Semi-Arid
AgriEngineering, 2024-10-18 | DOI: 10.3390/agriengineering6040217
Cited by: Information not available.

Influência de eventos climáticos extremos na ocorrência de queimadas e no poder de regeneração vegetal
Revista Brasileira de Geografia Física, 2024-03-14 | DOI: 10.26848/rbgf.v17.2.p1098-1113
Cited by: Information not available.

Geospatial Insights into Aridity Conditions: MODIS Products and GIS Modeling in Northeast Brazil
Hydrology, 2024-02-26 | DOI: 10.3390/hydrology11030032
Cited by: Information not available.

Assessment of Desertification in the Brazilian Semiarid Region Using Time Series of Climatic and Biophysical Variables
Revista Brasileira de Geografia Física, 2023-12-29 | DOI: 10.26848/rbgf.v16.6.p3424-3444
Cited by: Information not available.

Diego Resende Faria | Multisensory AI | Excellence in Research

Assoc Prof Dr. Diego Resende Faria | Multisensory AI | Excellence in Research

Reader in Robotics and Intelligent Adaptive Systems, University of Hertfordshire, United Kingdom

Dr. Diego Resende Faria is a Reader (Associate Professor) in Robotics and Intelligent Adaptive Systems at the University of Hertfordshire, UK. He has been contributing to the field of robotics and intelligent systems since 2022. With extensive experience in human-centered robotics, he has led and participated in various high-profile research projects across Europe. His work focuses on the integration of artificial intelligence in robotics to enhance human-robot interaction and autonomous systems. 🤖🌟

Publication Profile

Strengths for the Award

  1. Research Contributions:
    • Diverse Expertise: Dr. Faria’s research covers a broad range of topics, including cognitive robotics, affective robotics, artificial perception, and autonomous systems. His work on human manipulation, robotic grasping, and human-robot interaction is notable and demonstrates a significant contribution to his field.
    • Project Coordination and Leadership: He has successfully coordinated significant projects such as the EU CHIST-ERA InDex project and the Sim2Real project, showcasing his leadership and ability to manage high-impact research.
    • High-Quality Publications: His publications in well-regarded journals, such as Complexity and the Journal of Social Robotics, indicate a strong research output with relevance and impact in his field.
  2. Funding and Grants:
    • Secured Funding: Dr. Faria has obtained substantial funding for various projects, including EU Horizon projects and industry collaborations. His ability to attract significant grants demonstrates recognition and trust in his research capabilities.
  3. Academic and Professional Roles:
    • Positions of Influence: His roles as a Reader (Associate Professor) and past positions at prestigious institutions like Aston University and the University of Coimbra highlight his academic leadership and influence in robotics and intelligent systems.
  4. Editorial and Review Activities:
    • Journals and Conferences: Dr. Faria’s involvement as a guest editor for several journals and his role in program committees and conference chairs showcase his active participation in shaping the research community.

Areas for Improvement

  1. Broader Impact and Outreach:
    • Public Engagement: While his research is robust, there could be more emphasis on how his work impacts broader societal challenges or contributes to public understanding of robotics and artificial intelligence.
  2. Collaborative Networks:
    • Interdisciplinary Collaborations: Expanding his research to include interdisciplinary collaborations beyond robotics and AI could enhance the application and visibility of his work in other fields.
  3. Recognition and Awards:
    • Professional Awards: Achieving recognition through more prestigious awards or accolades specific to his research area could further validate his contributions and enhance his profile.

Conclusion

Dr. Diego Resende Faria is highly suitable for the “Research for Excellence in Research” award due to his extensive research contributions, leadership in significant projects, and strong publication record. His ability to secure substantial funding and his active involvement in the academic community further strengthen his candidacy. Addressing areas such as public engagement and expanding interdisciplinary collaborations could enhance his impact and recognition even further. Overall, his profile demonstrates a high level of excellence in research, making him a strong candidate for this award.

Education

Dr. Faria earned his Ph.D. in Electrical and Computer Engineering from the University of Coimbra, Portugal, in 2014. His academic journey continued with a postdoctoral fellowship at the Institute of Systems and Robotics, where he specialized in human-centered robotics. 🎓📚

Experience

Before joining the University of Hertfordshire, Dr. Faria was a Lecturer and Senior Lecturer at Aston University, UK, from 2016 to 2022. His career includes leading the EU CHIST-ERA InDex project, which was funded by EPSRC UK, and serving as PI for the Sim2Real project funded by the Royal Society. He is also involved in several industry-linked projects focusing on autonomous vehicles and multimedia retrieval. 🏛️🔬

Research Focus

Dr. Faria’s research interests include Neuro-Affective Intelligence, Cognitive Robotics (including Affective Robotics, Grasping and Dexterous Manipulation, and Human-Robot Interaction), Artificial Perception, Autonomous Systems, and Applied Machine Learning. His work aims to advance the capabilities of robotics in human-centered applications. 🧠🤖📊

Award and honors

Dr. Faria has received recognition for his contributions to robotics and intelligent systems, including significant project funding and accolades from international research bodies. His innovative work in autonomous systems and human-robot interaction has earned him a prominent place in the field. 🏆🔍

Publications Top Notes

  1. A Study on CNN Transfer Learning for Image Classification
  2. A Study on Mental State Classification using EEG-based Brain-Machine Interface
  3. A Probabilistic Approach for Human Everyday Activities Recognition using Body Motion from RGB-D Images
  4. Mental Emotional Sentiment Classification with an EEG-based Brain-Machine Interface
  5. Cross-domain MLP and CNN Transfer Learning for Biological Signal Processing: EEG and EMG