Diogo Santiago | Computer Science | Best Researcher Award

Mr. Diogo Santiago | Computer Science | Best Researcher Award

Oracle | Brazil

Mr. Diogo Santiago is a highly accomplished technology professional with extensive experience spanning software engineering, big data, and artificial intelligence. Beginning his career in 2009 as a software engineer developing major e-commerce platforms in Brazil, he transitioned into data engineering and science, mastering technologies like Hadoop, Spark, Hive, and Sqoop for large-scale data processing and migration. Since 2018, he has specialized in data science and AI, contributing to diverse projects in computer vision, anomaly detection, logistics optimization, and generative AI, including GAN and diffusion model applications for virtual try-on systems. As an AI Architect at Oracle for LATAM, he designs advanced AI architectures, supports clients with resource planning, and enhances model deployment efficiency through GPU optimization and large language model serving using vLLM and SGLang. His prior roles at Lambda3, Tivit, and Qintess involved developing ML models, data pipelines, and automation systems using cloud technologies such as GCP, AWS, and OCI. With multiple postgraduate qualifications in Big Data and Machine Learning for Finance, along with a Master’s in Medical Texture Imaging, he exemplifies innovation and leadership in merging AI research with scalable enterprise solutions.

Profile : Orcid

Featured Publication

Adorno, P. L. V., Jasenovski, I. M., Santiago, D. F. D. M., & Bergamasco, L. (2023, May 29). Automatic detection of people with reduced mobility using YOLOv5 and data reduction strategy. Conference paper.

 

Vaggelis Lamprou | Computer Science | Best Researcher Award

Mr. Vaggelis Lamprou | Computer Science | Best Researcher Award

National Technical University of Athens | Greece

Author Profile

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Google Scholar 

Early Academic Pursuits

Mr. Vaggelis Lamprou began his academic journey with a strong foundation in mathematics, earning his Bachelor’s degree from the National and Kapodistrian University of Athens, where he developed a deep interest in calculus, probability theory, and statistics. His passion for analytical reasoning and theoretical problem-solving led him to pursue a Master’s degree in Mathematics at the University of Bonn, Germany, where he focused on probability theory and its applications, culminating in a thesis on large deviations in mean field theory. This early academic phase not only honed his mathematical rigor but also laid the groundwork for his transition into the emerging domains of artificial intelligence and machine learning.

Professional Endeavors

Building upon his academic background, Mr. Lamprou advanced into roles that blended research with real-world applications. As a Data Analyst at Harbor Lab, he utilized statistical and computational tools to optimize platform usability and collaborated in developing innovative cost estimation tools for the maritime industry. His transition into machine learning engineering at Infili Technologies SA and later at the DSS Lab, EPU-NTUA, marked a shift toward high-impact AI-driven research and development, particularly within European-funded projects focusing on federated learning, generative AI, anomaly detection, and privacy-preserving technologies.

Contributions and Research Focus

Mr. Lamprou’s research is rooted in the intersection of mathematics, computer science, and artificial intelligence, with a strong emphasis on interpretable AI, deep learning, and probabilistic modeling. His work spans applications in medical imaging, cybersecurity, and large-scale distributed learning systems. In his Master’s thesis in Artificial Intelligence, he explored the evaluation of interpretability methods for deep learning models in medical imaging, underlining his dedication to developing transparent and trustworthy AI solutions. His contributions also extend to federated learning frameworks, enhancing data security and performance in next-generation communication networks.

Publications and Scholarly Engagement

His scholarly output reflects a commitment to both theoretical innovation and practical problem-solving. Notable works include a study on interpretability in deep learning for medical images published in Computer Methods and Programs in Biomedicine, and a comprehensive survey on federated learning for cybersecurity and trustworthiness in 5G and 6G networks in the IEEE Open Journal of the Communications Society. He actively participates in academic discourse, presenting at international conferences such as the International Conference on Information Intelligence Systems and Applications, further contributing to the global exchange of ideas in AI research.

Accolades and Recognition

Mr. Lamprou’s academic excellence is evident in his high academic distinctions throughout his studies, including top GPAs in his advanced degrees. His recognition extends beyond academic grades, with his selection to contribute to high-profile European R&D initiatives—a testament to his expertise and reliability in cutting-edge technological research. His invited participation in prestigious conferences and collaborations with leading research institutions reflects the respect he commands within the AI and machine learning community.

Impact and Influence

Through his research and professional activities, Mr. Lamprou has contributed to advancing AI methodologies in fields of societal importance, such as healthcare and cybersecurity. His work in interpretable AI has the potential to bridge the gap between complex machine learning models and human understanding, fostering trust in AI-assisted decision-making. In the realm of federated learning, his contributions support data sovereignty and privacy, addressing critical challenges in the deployment of AI at scale across sensitive domains.

Legacy and Future Contributions

As a PhD candidate at the National Technical University of Athens, Mr. Lamprou is poised to further deepen his contributions to the AI research landscape. His ongoing work aims to push the boundaries of interpretable and probabilistic AI models, with a vision to create transparent, reliable, and secure machine learning systems. His trajectory suggests a lasting influence on both the academic and industrial sectors, with the potential to inspire future researchers to prioritize ethical and explainable AI solutions.

Publications


Article: Federated Learning for Enhanced Cybersecurity and Trustworthiness in 5G and 6G Networks: A Comprehensive Survey
Authors: Afroditi Blika, Stefanos Palmos, George Doukas, Vangelis Lamprou, Sotiris Pelekis, Michael Kontoulis, Christos Ntanos, Dimitris Askounis
Journal: IEEE Open Journal of the Communications Society
Year: 2025


Article: On the trustworthiness of federated learning models for 5G network intrusion detection under heterogeneous data
Authors: Vangelis Lamprou, George Doukas, Christos Ntanos, Dimitris Askounis
Journal: Computer Networks
Year: 2025


Article: Data analytics for research on complex brain disorders
Authors: Michail Kontoulis, George Doukas, Theodosios Pountridis, Loukas Ilias, George Ladikos, Vaggelis Lamrpou, Kostantinos Alexakis, Dimitris Askounis, Christos Ntanos
Journal: Open Research Europe
Year: 2024


Article: On the evaluation of deep learning interpretability methods for medical images under the scope of faithfulness
Authors: Vangelis Lamprou, Athanasios Kallipolitis, Ilias Maglogiannis
Journal: Computer Methods and Programs in Biomedicine
Year: 2024


Article: Grad-CAM vs HiResCAM: A comparative study via quantitative evaluation metrics
Author: Vaggelis Lamprou
Institution: University of Piraeus
Year: 2023


Conclusion

With his blend of theoretical insight, technical skill, and a forward-looking research vision, Mr. Lamprou stands out as a promising researcher whose work is set to have a significant impact on the development of transparent and reliable AI technologies. His career embodies the bridge between rigorous academic inquiry and impactful, real-world AI solutions.

Hongcheng Xue | Computer Science | Best Academic Researcher Award

Dr. Hongcheng Xue | Computer Science | Best Academic Researcher Award

College of Information and Electrical Engineering, China Agricultural University | China

Author Profile

Scopus

Orcid

🎓 Early Academic Pursuits

Dr. Hongcheng Xue began his academic journey with a Bachelor's degree in Information and Computational Science from Hunan University of Science and Technology (2014–2018), where he demonstrated leadership as class monitor and held key student roles in the Cultural and Security Departments. His studies emphasized mathematical rigor with courses in analysis, algebra, geometry, and numerical methods. He advanced his education with a Master’s degree in Software Engineering from Inner Mongolia University of Technology (2018–2021), specializing in Data Science Applications. His focus areas included Deep Learning and Computer Vision. During his studies, he actively led his class, served as Vice Chair of the Student Union, and won multiple academic and innovation awards, including:

  • 🥈 Second-class and third-class academic scholarships

  • 🏆 First prize in the university-level Internet+ Innovation and Entrepreneurship Competitions (2018 & 2019)

💼 Professional Endeavors

Dr. Xue served as an Algorithm Engineer at Inner Mongolia Smart Animal Husbandry Co. Ltd. (March–November 2019), where he played a critical role in the development of a sheep delivery early warning detection system using deep learning. His contributions involved:

  •   ➤ Collecting and augmenting training datasets

  •   ➤ Building and fine-tuning neural network models for real-time birthing scene recognition

  •   ➤ Collaborating with frontend and backend teams to deploy the system successfully

  •   ➤ Monitoring system performance and continuously optimizing model behavior

This role showcased his ability to blend theoretical knowledge with real-world applications, especially in agricultural tech solutions.

🧠 Contributions and Research Focus

Dr. Xue’s core research interests lie in deep learningobject detection, and computer vision. His key contributions include:

📄 Published Paper:
“Sheep Delivery Scene Detection Based on Faster-RCNN” – presented at IVPAI 2019

📝 Submitted Research:
“Small Target Modified Car Parts Detection Based On Improved Faster-RCNN” – (Under review)

🔬 Patented Innovation:
Granted a utility model patent for an intelligent trough capable of collecting sheep identification data – Patent No. 202020674737.2

💻 Software Copyright:
Developed and registered a HOG-based Video Pedestrian Detection System V1.0 – Registration No. 2019SR0757039

🏅 Accolades and Recognition

Dr. Xue’s academic journey is marked with consistent excellence and recognition:

  •   ➤ Multiple scholarships during postgraduate studies

  •   ➤ Repeated champion in innovation competitions at university level

  •   ➤ Leadership roles acknowledged both academically and administratively

  •   ➤ Recognized contributor to interdisciplinary applications of AI in agriculture

🌍 Impact and Influence

Dr. Xue’s work reflects a rare synergy between technological innovation and agricultural transformation, especially in remote and rural contexts. His efforts in intelligent livestock management have the potential to significantly enhance productivity, monitoring, and sustainability in smart farming.

He serves as a model for researchers applying AI and deep learning in niche but impactful sectors, bridging gaps between modern tech and traditional industries.

🌟 Legacy and Future Contributions

As a young and dynamic researcher, Dr. Xue’s career is on a promising trajectory. His unique blend of academic rigor, applied research, and patented innovations positions him well for future leadership in AI-driven agricultural systems, smart sensing technologies, and computer vision applications.

He is expected to continue making contributions that transform rural technology landscapes, influence policy through innovation, and inspire future researchers in emerging interdisciplinary fields.

Publications


📄HCTD: A CNN-transformer hybrid for precise object detection in UAV aerial imagery

Authors: Hongcheng Xue, Zhan Tang, Yuantian Xia, Longhe Wang, Lin Li
JournalComputer Vision and Image Understanding
Year: 2025 (September)


📄 Aggressive behavior recognition and welfare monitoring in yellow-feathered broilers using FCTR and wearable identity tags

Authors: Hongcheng Xue, Jie Ma, Yakun Yang, Hao Qu, Longhe Wang, Lin Li
JournalComputers and Electronics in Agriculture
Year: 2025


📄 Enhanced YOLOv8 for Small Object Detection in UAV Aerial Photography: YOLO-UAV

Authors: Hongcheng Xue, Xia Wang, Yuantian Xia, Lin Li, Longhe Wang, Zhan Tang
ConferenceProceedings of the International Joint Conference on Neural Networks (IJCNN)
Year: 2024


📄 Open Set Sheep Face Recognition Based on Euclidean Space Metric

Authors: Hongcheng Xue, Junping Qin, Chao Quan, Wei Ren, Tong Gao, Jingjing Zhao, Pier Luigi Mazzeo
JournalMathematical Problems in Engineering
Year: 2021


Seunghyun Oh | Computer Science | Best Researcher Award

Mr. Seunghyun Oh | Computer Science | Best Researcher Award

Yonsei University | South Korea

Author Profile

Google Scholar

🎓 Early Academic Pursuits

Mr. Seunghyun Oh began his academic journey at the Global School of Media, Soongsil University, where he earned his Bachelor of Science degree in February 2025. Throughout his undergraduate studies, he demonstrated a strong aptitude for advanced technical subjects, securing A+ grades in key courses such as Image Processing, Computer Vision, and Machine Learning. His early academic record reflects a solid foundation in both theoretical concepts and applied computing.

💼 Professional Endeavors

Mr. Oh’s professional growth was marked by a series of impactful roles and experiences. In 2023, he joined the Reality Lab at Soongsil University, where he later served as Lab Leader and contributed as an undergraduate researcher until April 2025. His commitment extended beyond academia—he spearheaded a web development training initiative for a Cambodian team to build a school website, showcasing leadership and global engagement. Currently, he is working as a research intern at MAI-LAB, Yonsei University, where he continues to push the boundaries of machine intelligence.

🧠 Contributions and Research Focus

Mr. Oh’s research is centered on computer vision and medical artificial intelligence, with a particular focus on optimization and domain generalization. His notable project, Baseball Player Pose Corrector (BPPC), introduces a refined framework for enhancing 2D pose estimation using 3D motion priors. This work, accepted by ICT-Express (SCIE, IF: 4.1), highlights his innovative approach to human pose estimation in dynamic environments. Additionally, he is actively exploring feature-level domain generalization and disentanglement techniques to improve performance in ultrasound image segmentation, addressing efficiency concerns in medical imaging.

🏅 Accolades and Recognition

Mr. Oh’s dedication to research has already gained peer recognition. In 2024, he delivered an oral presentation at the Annual Symposium of KIPS (ASK 2024), showcasing his work on motion-guided pose correction. His accepted publication in a reputed journal further cements his status as a promising researcher in the field of AI-driven vision systems.

🌍 Impact and Influence

Beyond his technical contributions, Mr. Oh has had a tangible social and educational impact. His web training leadership for Cambodian school developers reflects a blend of technological expertise and social responsibility. Within research communities, he is known for his collaborative spirit and his ability to translate complex models into practical, optimized solutions—particularly in environments where precision and efficiency are critical, such as medical AI.

🔭 Legacy and Future Contributions

As he continues his journey in AI research, Mr. Seunghyun Oh is poised to make significant contributions to medical imaging, optimization algorithms, and domain generalization. His forward-thinking mindset, coupled with technical depth and leadership experience, positions him to be a transformative force in both academic and applied artificial intelligence research. With a strong publication record already underway and promising collaborations in progress, the future holds immense potential for this rising star in computer vision and medical AI.

Publications


📝 Accurate Baseball Player Pose Refinement Using Motion Prior Guidance

Authors: Seunghyun Oh, Heewon Kim
Journal: ICT Express
Year: 2025


📝 Motion Prior-Guided Refinement for Accurate Baseball Player Pose Estimation

Authors: Seunghyun Oh, Heewon Kim
Conference: Annual Conference of KIPS
Year: 2024


Soopil Kim | Computer Science | Best Researcher Award

Dr. Soopil Kim | Computer Science | Best Researcher Award

Daegu Gyeongbuk Institute of Science and Technology | South Korea

Author Profile

Scopus

Orcid

Early Academic Pursuits 🎓

Dr. Soopil Kim's academic journey began with a Bachelor of Engineering in Robotics and Mechatronics Engineering from Daegu Gyeongbuk Institute of Science & Technology (DGIST), where he graduated Cum Laude. He continued his studies at DGIST, pursuing a Master’s and Ph.D. in the same field, focusing on medical image segmentation. His research during these years emphasized label-efficient segmentation models and limited pixel-level annotation, laying a strong foundation for his future work in deep learning and computer vision.

Professional Endeavors 💼

Dr. Kim's career has seen significant milestones, including a role as a Visiting Student at Stanford University's CNSLAB under the supervision of Prof. Kilian M. Pohl and Ehsan Adeli. Currently, he is a Post-Doctoral Research Fellow at the Medical Image & Signal Processing Lab (MISPL) at DGIST, where he works under Prof. Sang Hyun Park. His professional trajectory reflects a commitment to advancing the field of computer vision through innovative research and collaboration.

Contributions and Research Focus 🔬

Dr. Kim’s research is at the forefront of deep learning and computer vision. His work addresses the challenges of image segmentation with partially labeled datasets by developing federated learning strategies and few-shot segmentation techniques. His notable contributions include the creation of a medical image segmentation model that integrates meta-learning and bi-directional recurrent neural networks, a semi-supervised segmentation model based on uncertainty estimation, and a transductive segmentation model for industrial imaging. These advancements aim to improve the efficiency and accuracy of image segmentation processes.

Accolades and Recognition 🏆

Dr. Kim has received several awards that highlight his exceptional contributions to the field. Notably, he was ranked 3rd among 40 teams in the SNUH Sleep AI Challenge in 2021 and was honored with the Outstanding Student Award from the Department of Robotics and Mechatronics Engineering at DGIST in 2022. In 2024, he was recognized at the KCCV Oral/Poster Presentation Doctoral Colloquium for his work on label-efficient segmentation models.

Impact and Influence 🌍

Dr. Kim's research has made a significant impact on the field of computer vision, particularly in the area of image segmentation. His innovative approaches to handling partially labeled datasets and federated learning have the potential to advance both academic research and practical applications in medical imaging and beyond. His work on few-shot learning and uncertainty-aware models addresses critical challenges in the field, contributing to more robust and adaptable segmentation solutions.

Legacy and Future Contributions 🚀

As Dr. Kim continues his research, his focus on improving segmentation models and developing new methodologies promises to shape the future of computer vision. His commitment to exploring federated learning and few-shot learning techniques will likely drive further innovations in the field, offering solutions to complex challenges and enhancing the accuracy of image analysis across various applications.

 

Publications 📘


📄Few-shot anomaly detection using positive unlabeled learning with cycle consistency and co-occurrence features
Authors: Sion An, Soopil Kim, Philip Chikontwe, Jiwook Jung, Hyejeong Jeon, Jaehong Kim, Sang Hyun Park
Journal: Expert Systems with Applications
Year: 2024


📄Federated learning with knowledge distillation for multi-organ segmentation with partially labeled datasets
Authors: Soopil Kim, Haejun Park, Myeongju Kang, Kilian M. Pohl, Sang Hyun Park
Journal: Medical Image Analysis
Year: 2024


📄FedNN: Federated learning on concept drift data using weight and adaptive group normalizations
Authors: Myeongju Kang, Soopil Kim, Kwang-Hyun Jin, Kilian M. Pohl, Sang Hyun Park
Journal: Pattern Recognition
Year: 2024


📄Few Shot Part Segmentation Reveals Compositional Logic for Industrial Anomaly Detection
Authors: Soopil Kim, Sion An, Philip Chikontwe, Kilian M. Pohl, Sang Hyun Park
Conference: Proceedings of the AAAI Conference on Artificial Intelligence
Year: 2024


📄Uncertainty-aware semi-supervised few shot segmentation
Authors: Soopil Kim, Philip Chikontwe, Sion An, Sang Hyun Park
Journal: Pattern Recognition
Year: 2023