Xia Renbo | Robotic Vision | Best Researcher Award

Mr.Xia Renbo | Robotic Vision | Best Researcher Award

Researcher, Shenyang Institute of Automation and Chinese Academy of Sciences, China

Dr. Xia Renbo is a distinguished researcher and doctoral supervisor at the Shenyang Institute of Automation, Chinese Academy of Sciences (CAS) πŸ§ πŸ€–. With a Ph.D. in Engineering from CAS and degrees from Harbin Institute of Technology πŸŽ“, Dr. Xia specializes in industrial optical measurement, robotic vision, and intelligent manufacturing πŸ”¬πŸ“Έ. He has led innovative projects in 3D reconstruction, machine learning, and pattern recognition πŸ› οΈπŸ’‘. A key contributor to smart industry technologies, he earned recognition with the Liaoning Provincial Science and Technology Progress Award πŸ…. His work bridges advanced computer vision and real-world automation challenges .

Β Profile

πŸ”Ή Education & Experience :

Dr. Xia Renbo earned his πŸŽ“ Ph.D. in Engineering in 2006 from the Shenyang Institute of Automation, Chinese Academy of Sciences (CAS), where he specialized in 3D reconstruction for industrial applications. He also holds an πŸŽ“ M.S. (2002) and πŸŽ“ B.S. (2000) in Mechanical Engineering and Automation from Harbin Institute of Technology. His professional journey began as an πŸ‘¨β€πŸ”¬ Assistant Researcher (2006–2008) at SIA, CAS, where he developed algorithms for photogrammetry and surface reconstruction. He then served as an πŸ‘¨β€πŸ”¬ Associate Researcher (2009–2018), focusing on 3D vision, defect detection, and camera calibration. Since 2019, he has been a leading πŸ‘¨β€πŸ”¬ Researcher at SIA, driving projects in intelligent optical measurement and robotic vision systems.

πŸ“š Professional Development :

Dr. Xia Renbo has steadily advanced his career in industrial automation and intelligent systems πŸ”§πŸ€–. Beginning as an Assistant Researcher, he contributed to early developments in 3D surface reconstruction and photogrammetry πŸ“πŸ“·. As an Associate Researcher, he expanded into multi-camera calibration and defect detection, contributing to industry-grade systems for quality assurance and control πŸ› οΈπŸ§ͺ. Now a lead Researcher, he spearheads high-impact projects in intelligent measurement and robotic vision, applying computer vision and AI to automation tasks πŸ€–πŸ”. His leadership reflects a commitment to integrating smart technologies into real-world industrial environments βš™οΈπŸŒ.

πŸ”¬ Research Focus :

Dr. Xia’s research spans several interconnected domains at the intersection of automation and intelligence πŸ§ βš™οΈ. He focuses on industrial optical measurement, advancing precision in manufacturing with 3D reconstruction and dynamic tracking technologies πŸ“πŸ”¬. His work in robotic vision and intelligent manufacturing leverages machine learning, computer vision, and pattern recognition to improve industrial adaptability and efficiency πŸ€–πŸ“Έ. By merging hardware integration with software intelligence, he contributes to the evolution of Industry 4.0 applications πŸš€πŸ­. His research enhances robotic equipment with real-time perception and adaptability, fostering smarter production lines and inspection systems πŸ› οΈπŸ“Š.

πŸ† Awards and Honors :

Dr. Xia Renbo was honored with the πŸ₯‰ Third Prize of the Liaoning Provincial Science and Technology Progress Award in 2011. This recognition was awarded for his outstanding contribution to the development of a 3D Photogrammetric System designed for accurate railway tanker volume measurement πŸ”πŸš†. The project showcased his expertise in applying advanced optical measurement techniques to solve complex industrial challenges, further establishing his reputation in the field of intelligent manufacturing and robotic vision πŸ€–πŸ“

Publication Top Notes :

A Spectral-Domain Low-Coherence Method for Measuring Composite Windshield Thickness

Citation:
Tao Zhang, Renbo Xia, Jibin Zhao, Yanyi Sun, Jiajun Wu, ShengPeng Fu, Yueling Chen.
β€œA Spectral-Domain Low-Coherence Method for Measuring Composite Windshield Thickness.” IEEE Transactions on Instrumentation and Measurement, 2024.
DOI: 10.1109/TIM.2024.3353865

Summary:
This paper presents a spectral-domain low-coherence interferometry method tailored for non-destructive and high-precision thickness measurement of composite windshields. The proposed technique compensates for multi-layer reflections and surface curvatures, enabling accurate measurements across curved, layered glass structures commonly used in automotive windshields. The method demonstrates enhanced reliability and resolution compared to traditional time-domain approaches, making it suitable for quality control in automotive manufacturing.

Robust Correspondences with Saliency for Point Cloud Registration

Citation:
Yinghao Li, Renbo Xia, Jibin Zhao, Junlan Yi, Taiwen Qiu.
β€œRobust Correspondences with Saliency for Point Cloud Registration.” Proceedings of the 2024 ACM International Conference on Graphics and Interaction, April 26, 2024.
DOI: 10.1145/3671151.3671191

Summary:
The authors propose a saliency-guided framework for robust point cloud registration. By integrating geometric saliency and feature consistency, the approach significantly improves correspondence accuracy, especially in scenes with partial overlap or heavy noise. Experimental results confirm superior performance compared to traditional methods like ICP and FGR, particularly in challenging real-world 3D environments such as indoor mapping and robotic navigation.

Low-Coherence Measurement Methods for Industrial Parts With Large Surface Reflectance Variations

Citation:
Tao Zhang, Renbo Xia, Jibin Zhao, Jiajun Wu, Shengpeng Fu, Yueling Chen, Yanyi Sun.
β€œLow-Coherence Measurement Methods for Industrial Parts With Large Surface Reflectance Variations.” IEEE Transactions on Instrumentation and Measurement, 2023.
DOI: 10.1109/TIM.2023.3301894

Summary:
This study develops a low-coherence interferometric system optimized for measuring the thickness of industrial parts with complex surfaces and high reflectance variability. The methodology integrates reflectance compensation and real-time spectral analysis, enabling high-resolution and repeatable measurements on metal, glass, and composite surfaces. The approach is validated across various industrial use cases including machined parts and reflective coatings.

Research on Optimization of Multi-Camera Placement Based on Environment Model

Citation:
Liming Tao, Renbo Xia, Jibin Zhao, Fangyuan Wang, Shengpeng Fu.
β€œResearch on Optimization of Multi-Camera Placement Based on Environment Model.” Proceedings of the 2023 ACM International Conference on Intelligent Systems and Smart Environments, September 15, 2023.
DOI: 10.1145/3629264.3629288

Summary:
This paper introduces an optimization strategy for multi-camera placement in intelligent monitoring environments. Using a 3D environmental model, the proposed system maximizes surveillance coverage and minimizes blind spots by leveraging visibility analysis and coverage redundancy metrics. The algorithm proves effective in simulation and real-world testing, demonstrating practical value in smart buildings and industrial automation setups.

A High-Accuracy Circular Hole Measurement Method Based on Multi-Camera System

Citation:
Liming Tao, Renbo Xia, Jibin Zhao, Tao Zhang, Yinghao Li, Yueling Chen, Shengpeng Fu.
β€œA High-Accuracy Circular Hole Measurement Method Based on Multi-Camera System.” Measurement, Volume 205, February 2023, Article 112361.
DOI: 10.1016/j.measurement.2022.112361

Summary:
This work presents a multi-camera 3D reconstruction system for precise circular hole measurements in industrial components. The method employs stereo calibration, edge detection, and ellipse fitting techniques to extract geometric parameters with high accuracy. The system’s performance is validated against traditional single-camera and manual measurement approaches, achieving sub-millimeter precision and improved automation suitability.

Conclusion:

Dr. Xia Renbo exemplifies the qualities of a leading researcherβ€”technical depth, cross-disciplinary innovation, real-world impact, and academic mentorship. His groundbreaking work continues to shape the future of intelligent manufacturing and robotic automation. In light of his achievements and contributions, he is a compelling and deserving recipient of the Best Researcher Award.

Prof. Dr. Algazy Zhauyt | Robotics | Best Researcher Award

Prof. Dr. Algazy Zhauyt | Robotics | Best Researcher Award

Prof. Dr. Algazy Zhauyt | Almaty university of power engineering and telecommunications | Kazakhstan

Algazy Zhauyt is an esteemed Associate Professor in Mechanical Engineering with a wealth of experience in academia and research. He holds multiple editorial roles, including Editor-in-Chief for several indexed journals, and has contributed significantly to international technical committees. His research spans dynamic analysis, automation control systems, robotics, and mechanical design. With a strong presence in the global scientific community, Algazy has worked on numerous high-profile research grants and contributed to advancements in space exploration and intelligent robotics. His commitment to education and innovation has earned him several prestigious awards and patents. πŸ“šβš™οΈπŸŒ

Professional Profile:

ORCID

Google Scholar

Suitability for Best Researcher Award

Algazy Zhauyt stands out as an exemplary candidate for the Best Researcher Award due to his profound and wide-ranging contributions to the field of Mechanical Engineering. As an Associate Professor, he has combined academic leadership with groundbreaking research in dynamic analysis, automation control systems, robotics, and mechanical design. His editorial roles, especially as Editor-in-Chief for several prestigious journals, underscore his influence in the global scientific community. His extensive involvement in international technical committees highlights his reputation as a thought leader.

Education and Experience

  • Ph.D. in Mechanical Engineering (2015), Kazakh National Technical University, Kazakhstan πŸŽ“
  • Master’s in Mechanical Engineering (2012), Kazakh National Technical University, Kazakhstan πŸŽ“
  • Bachelor’s in Mechanical Engineering (2009), Kazakh National Technical University, Kazakhstan πŸŽ“
  • Associate Professor in Mechanical Engineering (2021), Ministry of Education and Science, Kazakhstan πŸ‘¨β€πŸ«

Professional Development

Algazy Zhauyt has cultivated a remarkable career through continuous professional development, reflected in his leadership roles and extensive involvement in scientific committees. He contributes as Editor-in-Chief for several journals, such as Journal of Mechanical Engineering, Automation and Control Systems and Technical Journal of Daukeyev University. His expertise is also recognized in high-level technical committees related to robotics, mechanical engineering, and automation, providing crucial insights into global conferences and research projects. His educational leadership and innovative contributions continually shape the field of mechanical engineering and automation. πŸ”§πŸ“–πŸ’‘

Research Focus

Algazy’s research primarily centers on robotics and automation, including direct and inverse kinematics, dynamic synthesis of mechanical systems, and advanced control systems. His work also delves into the kinematics of planetary gears, fatigue of materials, and optimization techniques such as Reliability-Based Design Optimization (RBDO) and Multi-disciplinary Design Optimization (MDO). By integrating robotics, mechanical engineering, and mechatronics, his research aims to develop more efficient, innovative systems for manufacturing, space exploration, and industrial applications. His research is pivotal to advancing engineering and automation technologies. πŸ€–βš™οΈπŸ”

Awards and Honors

  • 2024: State Award, “Best University Teacher” πŸ†
  • 2022: Patent for β€œAggregate of Binder Distributor” πŸ…
  • 2019: Certificate for β€œCutting Tool” πŸ…
  • 2019: Certificate for β€œDesign and Production of Workpieces” πŸ…

Publication Top Notes:

  • Determination of Kinematic and Dynamic Characteristics of Oscillating Conveyor Mechanism
  • Development of a Method for Identifying a Damaged Line During Ground Faults
  • Development of a Multi-Motor Asynchronous Electric Drive with Changes in the Coordinated Rotation of the Supply Voltages of the Motors
  • SOLUTION OF THE POSITIONING PROBLEM FOR THE MANIPULATOR BASED ON THE MECHANISM OF THE THIRD CLASS
  • Multi-Motor Asynchronous Electric Drive with Changes in the Coordinated Rotation of the Supply Voltages of the Motors
  • Process of Object-Oriented Design of Gear Size Ranges. Part II: Synthesis

 

 

 

Assoc Prof Dr. Duong Vu | Robotics Awards | Best Researcher Award

Assoc Prof Dr. Duong Vu | Robotics Awards | Best Researcher Award

Assoc Prof Dr. Duong Vu, Duy Tan University, Vietnam

Dr. Duong Vu is a renowned academic and engineer at Duy Tan University, Vietnam, with a distinguished background in Mechanical Engineering and Commerce Management. He earned his undergraduate degree from Voroshilopgrad University of Machine-Building in the Soviet Union and a Ph.D. in Plasma Spraying Technology from State Saint-Petersburg University, Russia. Dr. Vu’s research expertise spans deformation and stress analysis in welding, mechatronics, robotics, and advanced manufacturing processes, including additive manufacturing and thermal spraying technology. He has received numerous awards, including the VIFOTEC Prize and medals from Vietnam’s Ministry of Science and Technology, reflecting his significant contributions to science and technology.

Professional Profile:

Google Scholar

πŸŽ“ Education:

Dr. Duong Vu is a distinguished academic and engineer with an extensive educational background. He earned his undergraduate degree in Mechanical Engineering from Voroshilopgrad University of Machine-Building in the Soviet Union (1974-1980). Dr. Vu furthered his education with a Bachelor of Commerce Management from Hanoi University of National Economy (1995-1998) and obtained a Ph.D. in Plasma Spraying Technology from State Saint-Petersburg University, Russia (1990-1993). His diverse academic pursuits reflect a strong foundation in both engineering and management.

πŸ… Awards and Scholarships:

Dr. Duong Vu is a distinguished academic and researcher recognized for his exceptional contributions to science and technology. He earned an Outstanding Diplome and an Honorable Diplome from Voroshilopgrad University of Machine-Building for his academic excellence and research prowess. Dr. Vu has been awarded medals from the Ministry of Science and Technology and the Ministry of Industry and Commerce for his scientific and technological achievements. In 2016, he received the prestigious VIFOTEC Prize for designing an innovative automatic machine for packaging cable rolls. Additionally, Dr. Vu secured a government grant from Vietnam (2019-2020) to advance the commercialization of robots for welding quality inspection.

πŸ”¬ Research Interests:

Dr. Duong Vu is a distinguished researcher whose expertise encompasses a broad spectrum of advanced engineering disciplines. His research interests include the deformation and stress analysis in welding, the design and fabrication of antifrictional and bimetal materials, and the automatic control of production processes. He is also deeply involved in mechatronics, robotics, and the development of smart devices. Dr. Vu is at the forefront of additive manufacturing and thermal spraying technology, contributing to the advancement of materials and processes in these areas. His work in advanced manufacturing processes highlights his commitment to innovation and technological progress.

Publication Top Notes: