Shaogang Hu | Inspired Computing | Best Researcher Award

Prof. Shaogang Hu | Inspired Computing | Best Researcher Award

Prof. Shaogang Hu | Inspired Computing | University of Electronic Science and Technology | China

Prof. Shaogang Hu is a distinguished academic and researcher affiliated with the University of Electronic Science and Technology of China. Renowned for his work in neuromorphic computing, edge artificial intelligence, and spiking neural networks, he has established himself as a thought leader in energy-efficient computing systems. With a robust academic presence and strong publication record, Prof. Hu contributes significantly to the evolution of intelligent sensing technologies, particularly in the domains of hardware-software co-design, sensor fusion, and low-power AI processing. His interdisciplinary approach and collaboration with both academic and industrial partners position him as a leading figure in next-generation AI systems.

Academic Profile:

Scopus

Education:

Prof. Shaogang Hu holds a Ph.D. in Electronic Engineering, where he specialized in advanced chip architecture and intelligent signal processing. His academic training emphasized the development of computational models that bridge hardware limitations with evolving AI algorithms. Throughout his doctoral studies, Prof. Hu demonstrated a strong aptitude for interdisciplinary research, integrating concepts from neuroscience, electrical engineering, and computational theory. His academic background provided a solid platform for his current research into neuromorphic computing and low-energy embedded systems.

Experience:

Prof. Hu has gained significant experience in both academic and research environments. At the University of Electronic Science and Technology of China, he leads research teams focusing on neuromorphic circuits and edge AI applications. His academic role involves supervising graduate students, managing collaborative research projects, and developing experimental platforms for energy-efficient intelligent systems. He has worked closely with international research teams to push the boundaries of real-time computing, particularly in sensor-based systems, biomedical devices, and real-time video analytics. His active involvement in the broader academic community includes peer reviewing for indexed journals, technical committee memberships, and panel participation in various research forums.

Research Interest:

Prof. Shaogang Hu’s primary research interests include neuromorphic computing, spiking neural networks, energy-efficient AI chips, event-based sensors, and intelligent edge systems. He is particularly focused on optimizing hardware architectures to support real-time data processing with minimal energy consumption. His work in developing algorithms and chip systems that mimic neural behavior offers promising solutions for low-latency, low-power intelligent devices. Prof. Hu also explores hybrid models that combine frame-based and event-based sensor technologies to enhance system responsiveness in dynamic environments, such as robotics and smart surveillance systems.

Award:

Prof. Hu has been recognized for his contributions through various academic accolades, invitations to international conferences, and peer-reviewed editorial roles. His work has been consistently acknowledged for its originality and practical value in applied sciences. As a senior member of professional organizations such as IEEE and ACM, Prof. Hu continues to lead and contribute to the development of high-impact research. His efforts in mentoring early-career researchers and promoting scientific exchange further reflect his leadership in the academic and research landscape.

Selected Publications:

  • “YOLO-fall: a YOLO-based fall detection model with high precision, shrunk size, and low latency” (2025)

  • “An Image Encryption Algorithm Based on HNN with Memristor” (2025) – 1 Citation

  • “Spatio-Temporal Fusion Spiking Neural Network for Frame-Based and Event-Based Camera Sensor Fusion” (2024) – 4 Citations

  • “Floating-Point Approximation Enabling Cost-Effective and High-Precision Digital Implementation of FitzHugh-Nagumo Neural Networks” (2024) – 3 Citations

Conclusion:

Prof. Shaogang Hu is a highly accomplished researcher whose innovative contributions to neuromorphic systems and energy-efficient AI make him an outstanding candidate for this award. His scholarly output, leadership in collaborative research, and continued pursuit of intelligent sensing technologies have made a measurable impact in the field. With a focus on real-world application, Prof. Hu’s research advances the capabilities of AI in hardware-constrained environments. His academic integrity, technical leadership, and forward-looking vision make him not only a deserving recipient of this recognition but also a role model in shaping the future of intelligent systems research.

 

 

 

 

 

Mr. Xi Tianyu | Automation Award | Best Researcher Award

Mr. Xi Tianyu | Automation Award | Best Researcher Award

Mr. Xi Tianyu, Northeastern University, China

Dr. Xi Tianyu is a professor and doctoral supervisor at the Northeastern University School of Architecture, specializing in sustainable architecture, architectural technology, and green living. He has led over 10 national and provincial research projects, published more than 50 papers, and holds three authorized patents. He has contributed to national and industry standards, authored textbooks, and received multiple awards for teaching and research excellence. Dr. Xi is actively involved in several professional committees, including the China Urban Science Research Association and the China Engineering Construction Standardization Association, and is a member of international organizations such as ISIAQ and AIJ.

Professional Profile:

ORCID

Summary of Suitability for Best Researcher Award

Dr. Xi Tianyu is a highly accomplished researcher in sustainable architecture, with extensive contributions to green building technologies, energy conservation, and thermal comfort optimization. His leadership in over 10 national and provincial research projects, along with 50+ published papers and multiple patents, demonstrates his strong research impact. His involvement in national standards development, textbook authorship, and architectural design competitions further highlights his influence in academia and industry. Given his outstanding research, academic leadership, and numerous accolades, Dr. Xi Tianyu is a highly suitable candidate for the Best Researcher Award.

📚 Education & Work Experience

🎓 Doctor of Engineering
🏫 Professor & Doctoral Supervisor at Northeastern University School of Architecture

🏆 Achievements

🔬 Led 10+ research projects (national, provincial, and local), including:

  • 🇨🇳 National Natural Science Foundation Key Project sub-projects
  • 🎯 National Natural Science Foundation Youth Fund

📄 Published 50+ research papers
📜 3 authorized patents
📘 Co-authored 5 national & industry standards
📖 Contributed to 2 textbooks & authored 1 book (funded by National Publishing Fund)

🎨 Guided 10+ international & domestic architectural design competitions, winning:
🥇 Gu Yu Cup First Prize
🏅 AIM Cup Special Prize
🥉 China Habitat Environment Design Annual Award Bronze Award (2023)

🎖️ Awards & Honors

🏆 Northeastern University Teaching Achievement Awards:

  • 🥇 First Prize (2024)
  • 🥈 Second Prize (2022)
    🎓 Excellent Teaching Plan Award
    📜 Excellent Homework Guide Award
    📖 Excellent Paper Award (Chinese Higher Education Architecture Teaching Guidance Committee)

Publication Top Notes:

Analysis of the Characteristics of Heat Island Intensity Based on Local Climate Zones in the Transitional Season of Shenyang

 

Optimization of Residential Indoor Thermal Environment by Passive Design and Mechanical Ventilation in Tropical Savanna Climate Zone in Nigeria, Africa

 

A preliminary study of multidimensional semantic evaluation of outdoor thermal comfort in Chinese

 

Preliminary Research on Outdoor Thermal Comfort Evaluation in Severe Cold Regions by Machine Learning

A Review of Thermal Comfort Evaluation and Improvement in Urban Outdoor Spaces

Mr. Matyas Lukacs | Traceability Award | Young Scientist Award

Mr. Matyas Lukacs | Traceability Award | Young Scientist Award

Mr. Matyas Lukacs, Hungarian University of Agriculture and Life Sciences, Hungary

Mátyás Krisztián Lukács, in Hungary, is a food scientist and research engineer specializing in food quality assessment, tracking solutions, and digitalization of the food industry. He is currently pursuing a Ph.D. in Food Science at the Hungarian University of Agriculture and Life Sciences while working as a Professional Coordinator at Neumann Nonprofit Kft. and a Research Engineer at Cibus Hungaricus. With extensive experience in analytical method development, product development, and laboratory accreditation, he has contributed to food industry advancements in Hungary. He has also served as a visiting researcher at the University of Innsbruck and the University of Novi Sad. In addition to his research and industry roles, he is an active lecturer and mentor, teaching courses on cloud-based AI computing and measurement techniques.

Professional Profile:

ORCID

SCOPUS

Summary of Suitability Young Scientist Award

Mátyás Krisztián Lukács is a strong candidate for the Young Scientist Award, given his extensive experience in food science, traceability, and digital solutions. His PhD research, international collaborations, and impactful publications in sensor technology, spectroscopy, and blockchain applications for food quality assessment highlight his innovative contributions. Additionally, his teaching experience and mentorship further demonstrate his dedication to knowledge dissemination. With a robust publication record and a multidisciplinary approach, his work significantly advances food science and technology, making him highly suitable for this award.

🎓 Education

📌 BSc in Food Engineering (2011 – 2014)
Corvinus University of Budapest, Hungary

  • Specialization: Food Preservation and Quality Management

📌 MSc in Food Engineering (2015 – 2017)
Szent István University, Hungary

  • Specialization: Food Technology and Product Development

📌 PhD in Food Science (2022 – Present)
Hungarian University of Agriculture and Life Sciences, Hungary

📌 Visiting Researcher
🔹 University of Innsbruck, Austria (June 2023 – August 2023)
🔹 University of Novi Sad, Serbia (September 2024 – October 2024)

💼 Work Experience

📍 Professional Coordinator (May 2024 – Present)
Neumann Nonprofit Kft., Budapest, Hungary

  • 🚀 Developing a track and tracing application based on European Blockchain Services Infrastructure (EBSI)
  • 🤝 Managing consortium-related communications

📍 Research Engineer (February 2024 – Present)
Cibus Hungaricus, Budapest, Hungary

  • 🏭 Developing tracking solutions for food quality assessment
  • 📊 Analyzing and presenting data from the Hungarian food industry
  • 🌍 Contributing to the digitalization of the Hungarian food sector

📍 Analytical Method Developer (January 2019 – August 2020)
Biotech USA, Szada, Hungary

  • 🧪 Established an analytical laboratory for internal quality assurance
  • 🏆 Developed methods for macronutrient analysis and allergen detection
  • 🔬 Managed laboratory equipment acquisition and accreditation process

📍 Product Developer (July 2017 – December 2018)
Biotech USA, Budapest, Hungary

  • 🏗️ Developed new food products and variations
  • 🔍 Evaluated suppliers and raw materials
  • 👅 Conducted sensory analysis

📍 Internships
🔬 Process & Method Development Intern (July 2016 – August 2016) – Scitec Nutrition, Dunakeszi
📊 Quality Management Intern (July 2014 – October 2014) – Scitec Nutrition, Dunakeszi

🎖️ Achievements, Awards & Honors

🏅 Lecturer & Mentor

  • 📡 Lecturer: Introduction to Cloud-Based AI Computing for Engineers
  • 🛠️ Practical Lecturer: Measurement Techniques, Post-Harvest Technology
  • 🎓 MSc Student Thesis Co-Supervisor
  • 🤝 Internship & Living Lab Mentorship (EUDRES)

🌱 Volunteering

  • 🙏 Served at a Vipassana Meditation Course in Switzerland (July 2023)

🎯 Technical Skills

  • 🎨 Adobe Creative Suite (Photoshop, Animate, Audition, Premiere Pro)
  • 📊 R Studio
  • ☁️ Microsoft Azure Fundamentals & AI Fundamentals
  • 🏢 Microsoft Office (Excel, Word, PowerPoint, Outlook)

Publication Top Notes:

Advanced Digital Solutions for Food Traceability: Enhancing Origin, Quality, and Safety Through NIRS, RFID, Blockchain, and IoT

 

Investigation of the Ultrasonic Treatment-Assisted Soaking Process of Different Red Kidney Beans and Compositional Analysis of the Soaking Water by NIR Spectroscopy

 

Comparison of Multiple NIR Instruments for the Quantitative Evaluation of Grape Seed and Other Polyphenolic Extracts with High Chemical Similarities

Development of state-of-the-art correlative rapid methods for the non-destructive control of fruit products

 

 

Mr. Mehrdad Shoeibi | Smart Network | Best Researcher Award

Mr. Mehrdad Shoeibi | Smart Network | Best Researcher Award 

Mr. Mehrdad Shoeibi, Worcester Polytechnic Institute, United States

Mehrdad Shoeibi is an AI specialist and researcher with expertise in industrial engineering, machine learning, and generative AI, particularly in healthcare, data analytics, and optimization. He is currently pursuing a Ph.D. in Business Administration and Management (IT) at Worcester Polytechnic Institute (WPI) and serves as a Research Assistant for the SmartWAnDS Project, focusing on AI applications in chronic wound analysis. He holds an M.Sc. in Industrial Engineering from the Institute for Management and Planning Studies (IMPS) and a B.Sc. from Islamic Azad University (IAU). Mehrdad has extensive experience in project control management and optimization, having worked in the construction and engineering industries. His technical skills include Python, AI/ML frameworks, and various business intelligence and project management tools.

Professional Profile:

GOOGLE SCHOLAR

SCOPUS

ORCID

Suitability of Mehrdad Shoeibi for the Best Researcher Award

Mehrdad Shoeibi demonstrates a strong research background in Generative AI, Machine Learning, Healthcare Applications, and Optimization, which aligns with cutting-edge advancements in AI. His ongoing Ph.D. at Worcester Polytechnic Institute (WPI) and previous degrees in Industrial Engineering establish a solid academic foundation.

🎓 Education

  • Doctor of Philosophy, Business Administration and Management (IT) (2023 – Present)
    📍 Worcester Polytechnic Institute (WPI) | GPA: 3.80
  • Master of Science, Industrial Engineering (2018 – 2021)
    📍 Institute for Management and Planning Studies (IMPS) | GPA: 3.41/4
  • Bachelor of Science, Industrial Engineering (2010 – 2014)
    📍 Islamic Azad University (IAU) | GPA: 3.11/4

💼 Work Experience

Academic & Research Experience

  • Research Assistant – SmartWAnDS Project, WPI (Aug 2023 – Present)
    🔹 Conducting systematic reviews on generative AI applications in healthcare.
    🔹 Developing tools for chronic wound image annotation and classification.
  • Teaching Assistant – Game Theory (Feb 2021 – Jun 2021)
    📍 Institute for Management and Planning Studies (IMPS)
  • Teaching Assistant – Energy Pricing (Feb 2019 – Jun 2019)
    📍 Institute for Management and Planning Studies (IMPS)

Industry Experience

  • Project Control Manager – Aalam Architectural & Structural Consultants (Dec 2019 – Apr 2023)
    🔹 Managed BIM implementation.
    🔹 Coordinated interdisciplinary efforts.
    🔹 Cost estimation and project scheduling.
    🔹 Process management and optimization.
  • Project Control Specialist – Payasazeh Pasargad (Jun 2018 – Dec 2019)
    🔹 Provided value engineering recommendations.
    🔹 Coordinated construction activities.
    🔹 Prepared project progress reports.
  • Project Control Engineer – Aalam Architectural & Structural Consultants (Jan 2013 – Jul 2015)

🏆 Achievements, Awards & Honors

  • 📜 Published research in Generative AI applications in healthcare.
  • 🏅 Key contributor to the SmartWAnDS Project at WPI.
  • 🎖 Expertise in machine learning, optimization, and AI-driven healthcare solutions.
  • 🏆 Experience in business intelligence and operations research.

Publication Top Notes:

Moving toward resiliency in health supply chain

CITED:8

A Novel Six-Dimensional Chimp Optimization Algorithm—Deep Reinforcement Learning-Based Optimization Scheme for Reconfigurable Intelligent Surface-Assisted Energy Harvesting in …

CITED:1

Improved IChOA-Based Reinforcement Learning for Secrecy Rate Optimization in Smart Grid Communications.

CITED:1

Energy-Efficient and Secure Double RIS-Aided Wireless Sensor Networks: A QoS-Aware Fuzzy Deep Reinforcement Learning Approach

CITED:0

5DGWO-GAN: A Novel Five-Dimensional Gray Wolf Optimizer for Generative Adversarial Network-Enabled Intrusion Detection in IoT Systems.

CITED:0

 

 

Mr. Joel Adams | Automation | Best Researcher Award

Mr. Joel Adams | Automation | Best Researcher Award 

Mr. Joel Adams, Florida International University, United States

Joel Adams is a robotics researcher and Ph.D. candidate in Mechanical Engineering at Florida International University, specializing in autonomous mobile and manipulator systems. With extensive experience in radiological surveillance, autonomous mission planning, and multi-robot coordination, he has developed innovative solutions integrating sensor technologies such as LiDAR, depth cameras, and IMUs. His expertise includes robotics middleware (ROS1, ROS2), simulation tools (Gazebo, PyBullet), and advanced programming in C++, Python, and MATLAB. As a Research Assistant at the Applied Research Center since 2019, he has contributed to cutting-edge projects in autonomous system development, multi-robot collaboration, and real-world testing of robotic platforms.

Professional Profile:

ORCID

Summary of Suitability for Best Researcher Award

Joel Adams appears to be a strong candidate for the Best Researcher Award, particularly if the award recognizes contributions in robotics, autonomous systems, and applied research in radiological surveillance. His work aligns well with advanced robotics, AI-driven mission planning, and real-world applications in nuclear site monitoring.

🎓 Education

  • Florida International University
    • Ph.D. in Mechanical Engineering (Expected Summer 2025) 🎯 (GPA: 3.87)
    • Master of Science in Mechanical Engineering (Summer 2024) 🛠️ (GPA: 3.87)
    • Bachelor of Science in Mechanical Engineering (Honors College) (Fall 2019) 🏅 (GPA: 3.72)
  • Miami Dade College
    • Associate in Arts Degree (Highest Honors) (Summer 2015) 🏆 (GPA: 3.95)

💼 Work Experience

  • Applied Research Center, Florida International University (March 2019 – Present)
    Research Assistant
    • 🚀 Developed autonomous systems for radiological surveillance in nuclear sites, integrating LiDAR, depth cameras, and IMUs.
    • 🧠 Designed multi-robot mission planning solutions using network bridges and behavior-tree-based task allocation.
    • 🛠️ Conducted testing in simulation (Gazebo, PyBullet) and real-world robotic platforms for validation.

🏆 Achievements, Awards & Honors

  • 🎖️ Highest Honors Graduate – Miami Dade College
  • 🏅 Honors College Graduate – Florida International University
  • 🤖 Developed autonomous systems for radiological surveillance, enhancing safety in nuclear environments
  • 🏆 Contributed to multi-robot coordination research, advancing mission planning strategies in robotics
  • 🏅 Published research contributions in robotics intelligence and autonomous system optimization

Publication Top Notes:

A Behavioral Robotics Approach to Radiation Mapping Using Adaptive Sampling

Mr. CEYHUN YILMAZ | Smart Devices | Best Researcher Award

Mr. CEYHUN YILMAZ | Smart Devices | Best Researcher Award 

Mr. CEYHUN YILMAZ, Sakarya University, Turkey

Assoc. Prof. Dr. Ceyhun Yılmaz is a distinguished mechanical engineer specializing in thermodynamic modeling, renewable energy systems, and hydrogen fuel cells. He earned his Ph.D., M.Sc., and B.Sc. in Mechanical Engineering (English) from the University of Gaziantep. With over a decade of academic and research experience, he has served as a Research Assistant, Assistant Professor, and now an Associate Professor at Afyon Kocatepe University. His expertise includes thermoeconomic analysis, optimization of energy systems, and hydrogen production technologies. Dr. Yılmaz has supervised multiple graduate theses and led numerous TÜBİTAK-funded projects on sustainable energy solutions. He is an active member of ASME and the Turkish Thermal Science and Technique Association, contributing to high-impact scientific publications in top-tier journals. His dedication to advancing energy technologies continues to make a significant impact in the field.

Professional Profile:

GOOGLE SCHOLAR

SCOPUS

ORCID

Suitability for Best Researcher Award

Assoc. Prof. Dr. Ceyhun Yılmaz has extensive experience in mechanical engineering, energy systems, and thermoeconomic optimization. His contributions to hydrogen fuel cells, renewable energy, and sustainability demonstrate significant impact in his field. Given his strong academic background, leadership in research, and international training, he is a strong candidate for the Best Researcher Award.

Education 🎓

  • Bachelor of Science in Mechanical Engineering (English)
    University of Gaziantep, 2009
  • Master of Science in Mechanical Engineering (English)
    University of Gaziantep, 2011
  • Ph.D. in Mechanical Engineering (English)
    University of Gaziantep, 2016
    (Includes training at American Mechanical Engineering Society-Hydrogen and Fuel Cell, San Diego, USA, 2014 – 5 months)

Work Experience 💼

  • Research Assistant
    Department of Mechanical Engineering, University of Gaziantep, 2010-2016
  • Assistant Professor
    Department of Mechanical Engineering, Afyon Kocatepe University, 2017-2020
  • Associate Professor
    Department of Mechanical Engineering, Afyon Kocatepe University, 2020–present

Achievements 🏆

  • Supervised several Ph.D. and M.Sc. theses, including:
    • Ömer Faruk Güler: Numerical Modeling of Hydrogen PEM Fuel Cell and Thermoeconomic Optimization (Ph.D., 2022)
    • Muhammed Arslan: Thermodynamic Modeling of a Biogas Power Plant (Ph.D., 2022)
    • Ozan Şen: Thermoeconomic Analysis of Geothermal and Solar Energy (M.Sc., 2021)
    • Ali Hasan Abbas: Thermodynamic Analysis of Natural Gas Liquefaction (M.Sc., 2021)
  • Involved in multiple TÜBİTAK projects (Turkey’s scientific and technological research body), including:
    • Hydrogen Production Simulation using renewable energy and water electrolysis (2022-2023)
    • Concentrated Solar Collector for Afyon Province solar data (2022-2023)
    • Vanadium Redox Flow Battery Performance Evaluation (2023-2025)

Awards & Honors 🏅

  • Received TÜBİTAK project scholarships and executed high-impact research projects related to geothermal energy, hydrogen production, and renewable energy optimization.

Publication Top Notes:

Drought-induced oxidative damage and antioxidant responses in peanut (Arachis hypogaea L.) seedlings

CITED:162

Thermodynamic evaluation of geothermal energy powered hydrogen production by PEM water electrolysisEconomics of hydrogen production and liquefaction by geothermal energy

CITED:152

Economics of hydrogen production and liquefaction by geothermal energy

CITED:126

CITED:124
CITED:111

Mr Anandarup Roy | Internet of Things | Best Researcher Award

Mr Anandarup Roy| Internet of Things | Best Researcher Award

Mr Anandarup Roy,Senior Research Fellow, Indian Statistical Institute, Kolkata,India

Anandarup Roy is a Ph.D. candidate in Computer Science at the Indian Statistical Institute (ISI), Kolkata, specializing in combinatorial secret sharing. His thesis was submitted on July 19, 2024, and he expects to receive his degree by December 2024. He is advised by Prof. Bimal Kumar Roy and co-supervised by Prof. Mridul Nandi, both from the Applied Statistics Unit at ISI.

Professional Profile:

Summary of Suitability for the Best Researcher Award:

Anandarup Roy, a Ph.D. candidate at the Indian Statistical Institute, has made significant contributions to the field of computer science, particularly in combinatorial secret sharing. His research extends previous work in Bayesian incentive-compatible mechanism design and social learning, demonstrating a robust understanding of complex statistical models and their applications.

Education

He Naifeng is pursuing a PhD at the prestigious Nanjing University of Aeronautics and Astronautics, where he has built a strong foundation in automation and robotics. His academic journey reflects a commitment to advancing technology in mobile robotics, demonstrating a keen interest in both theoretical knowledge and practical applications.

Work Experience

From 2016 to 2018, Anandarup worked as a project-linked person at the Economics Research Unit of ISI, where he contributed to a project on Bayesian incentive-compatible mechanism design under the supervision of Prof. Manipushpak Mitra. This research extended his master’s thesis by examining learning processes in a social choice environment with risk-neutral agents.

Skills

Anandarup is proficient in using Linux OS (Ubuntu) and LaTeX. He possesses basic programming knowledge in C, making him well-equipped for computational tasks related to his research.

Research Focus

His research focuses on autonomous navigation for wheel-legged robots, with particular emphasis on reinforcement learning in control systems and intelligent motion control. He aims to develop practical applications that enhance the performance and adaptability of mobile robots in challenging environments.

Publication top Notes:

  • Combining Dynamic Selection and Data Preprocessing for Imbalance Learning
    Year: 2018
    Journal: Neurocomputing
    Volume/Pages: 286, 179-192
  • SVM-based Hierarchical Architectures for Handwritten Bangla Character Recognition
    Year: 2009
    Journal: International Journal on Document Analysis and Recognition (IJDAR)
    Volume/Pages: 12, 97-108
  • Lecithin and Venom Haemolysis
    Year: 1945
    Journal: Nature
    Volume/Pages: 155 (3945), 696-697
  • A Novel Approach to Skew Detection and Character Segmentation for Handwritten Bangla Words
    Year: 2005
    Journal: Digital Image Computing: Techniques and Applications (DICTA’05)
    Pages: 30-30
  • JCLMM: A Finite Mixture Model for Clustering of Circular-Linear Data and Its Application to Psoriatic Plaque Segmentation
    Year: 2017
    Journal: Pattern Recognition
    Volume/Pages: 66, 160-173
  • An HMM Framework Based on Spherical-Linear Features for Online Cursive Handwriting Recognition
    Year: 2018
    Journal: Information Sciences
    Volume/Pages: 441, 133-151
  • Pair-Copula Based Mixture Models and Their Application in Clustering
    Year: 2014
    Journal: Pattern Recognition
    Volume/Pages: 47 (4), 1689-1697
  • Character Segmentation for Handwritten Bangla Words Using Artificial Neural Network
    Year: 2005
    Journal: Proceedings of the 1st IAPR TC3 NNLDAR
  • SWGMM: A Semi-Wrapped Gaussian Mixture Model for Clustering of Circular–Linear Data
    Year: 2016
    Journal: Pattern Analysis and Applications
    Volume/Pages: 19, 631-645
  • Headline Based Text Extraction from Outdoor Images
    Year: Not specified (conference paper)
    Journal: Pattern Recognition and Machine Intelligence: 4th International Conference