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. 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