Zhao Song| Machine Vision| Best Researcher Award

Dr. Zhao Song| Machine Vision| Best Researcher Award

Associate Researcher,  Hangzhou Innovation Research Institute of Beihang University, China

🔬 Short Biography 🌿💊📚

Dr. Zhao Song is an Associate Researcher at the Hangzhou Innovation Research Institute of Beihang University, China. His work focuses on Machine Vision, where he has made impactful contributions to intelligent visual systems, image recognition, and deep learning applications in automation and robotics. Dr. Song’s research bridges cutting-edge algorithm development with real-world industrial applications, earning him recognition in both academic and technology innovation spheres. As a dedicated scholar and innovator, he has published in top-tier journals and actively collaborates on interdisciplinary projects that advance machine vision technologies. His outstanding contributions make him a strong candidate for the Best Researcher Award in Machine Vision

Profile

Orcid

🎓 Education

Dr. Zhao Song has a solid educational background that reflects his expertise in automation, systems engineering, and artificial intelligence. He earned his Bachelor’s degree in Automation from Shandong University of Science and Technology (2007–2011). He then pursued a Master’s degree in Systems Engineering from Nankai University (2011–2014), where he laid the groundwork for his algorithmic and system design skills. His academic journey culminated with a Ph.D. in Pattern Recognition and Intelligent Systems from the Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences (2017–2021), focusing on photometric stereo and 3D reconstruction technologies.

💼 Experience

Dr. Song began his professional career as an Algorithm Engineer at Guangzhou GRG Banking Equipment Co., Ltd. (2014–2016), where he specialized in embedded C programming for ATM systems. He then transitioned to research as an assistant at the Chinese Academy of Sciences (2016–2017). His postdoctoral research at Huawei Technologies Co., Ltd. (2021–2023) focused on integrating material modeling with structured light systems for digital human modeling. Since September 2023, he has been serving as a Senior Associate Researcher at the Hangzhou Innovation Research Institute of Beihang University, where he leads projects in structured light, photometric modeling, and digital human generation.

🛠️ Skills

Dr. Song possesses a comprehensive skill set in 3D reconstruction, photometric stereo, structured light systems, and material measurement and modeling. His technical proficiency spans C/C++ programming, GPU parallel computing, OpenCV, and real-time image processing algorithms. He is capable of independently designing, building, and optimizing structured light systems for micrometer-level reconstruction. His interdisciplinary approach combines optics, computer vision, and rendering algorithms, making him adept at solving complex problems in material-aware geometry acquisition.

🔬 Research Focus

Dr. Song’s research revolves around 3D reconstruction and material acquisition, with a core focus on photometric stereo, binary stripe structured light, and integrated geometry-material modeling systems. During his Ph.D., he proposed innovative LED-based photometric stereo techniques and developed micrometer-level reconstruction methods for reflective surfaces. As a postdoc, he introduced a novel fusion framework combining photometric cues with structured light for enhanced accuracy. His recent work includes pioneering the first structured light system capable of outputting complete material maps (diffuse, specular, roughness, normal) and investigating DMA correction techniques to improve reconstruction under varying lighting and material conditions. He also contributed to high-fidelity digital human creation using Lightstage systems and NeRF-based geometry fusion.

🏆 Awards & Achievements

Dr. Song has made significant contributions to both academia and industry. His work has led to multiple high-impact publications in journals like Optics Express, Optics and Lasers in Engineering, and Sensors. He has authored several national patents, including groundbreaking methods for 3D object reconstruction and material-aware geometry optimization. His innovations in integrating structured light with material modeling have been successfully translated into commercial applications, notably in digital human rendering. Recognized for his originality and technical acumen, Dr. Song is a prominent candidate for leading awards in Machine Vision and 3D Imaging Systems.

  • Title: A novel calibration method for uniaxial MEMS-based structured light system with linear transition function

    Journal: Measurement

    DOI: 10.1016/j.measurement.2025.117969

    Year: 2025

    Authors: Yuping Ye, Gang Zhou, Xiujing Gao, Zhenghui Hu, Yi Chen, Zhao Song, Zhan Song

    Citations: Not yet available (published for December 2025—may not have citations yet)

    Title: Micrometer-level 3D measurement techniques in complex scenes based on stripe-structured light and photometric stereo

    Journal: Optics Express

    DOI: 10.1364/OE.401850

    Publication Date: October 26, 2020

    Authors: Zhao Song, Zhan Song, Juan Zhao, Feifei Gu

    Citations: 43 citations

🏁conclusion:

Dr. Zhao Song is an excellent candidate for the Best Researcher Award. His proven ability to develop cutting-edge, commercial-ready solutions, along with original research that pushes the frontiers of 3D computer vision and graphics, strongly justifies his nomination. Recognizing him with this award would encourage continued innovation at the intersection of vision, AI, and human digitalization.

Mei-Yung Chen | Machine Vision | Best Academic Researcher Award

Prof. Mei-Yung Chen | Machine Vision | Best Academic Researcher Award

Distinguished Professor , National Taiwan Normal University, Taiwan

Prof. Mei-Yung Chen is a highly accomplished researcher in mechatronics and control engineering, with a strong academic background and recognition as a Distinguished Professor. His work in magnetic levitation, positioning, and tracking is crucial for robotics, automation, and precision engineering. While his credentials are impressive, providing more quantitative data on publications, patents, collaborations, and research funding would further enhance his profile for the Best Researcher Award.

Publication Profile

Education :

Prof. Mei-Yung Chen obtained his B.S. degree from Tamkang University in 1992, followed by an M.S. degree from Chung Yuan Christian University in 1994. He later pursued a Ph.D. degree at National Taiwan University, completing his doctoral studies in 2003.

Experience:

Currently, Prof. Chen serves as a Professor in the Department of Mechatronic Engineering at National Taiwan Normal University, Taiwan. With years of academic and research experience, he has made significant contributions to the field of mechatronics. His expertise extends to both teaching and mentoring students, advancing knowledge in engineering and control systems.

Research Focus:

Prof. Chen’s research interests encompass a wide range of areas, including engineering education, magnetic levitation, precise positioning and tracking, mechatronic system development, and advanced control theory with its applications. His work has significantly contributed to the advancement of control mechanisms in modern engineering, enhancing precision and efficiency in automation and mechatronic systems.

Skills:

Prof. Chen possesses extensive expertise in mechatronics, magnetic levitation systems, positioning and tracking technologies, and advanced control theory. His technical proficiency includes designing and implementing precise control systems, integrating mechatronic principles, and developing innovative solutions for engineering challenges.

Awards:

In recognition of his outstanding contributions, Prof. Chen was honored with the Distinguished Professorship from National Taiwan Normal University in 2012. His research excellence and dedication to academia have earned him a respected reputation in his field.

Publication :

  • Simulation and Experiment of a Boost Converter With Four-Layer Voltage Multipliers

    • Authors: W. Lin, Weicheng; M. Chen, Meiyung; K. Pai, Kaijun

    • Year: Not specified

    • Citations: 0

    • Type: Article

    • Source: Not available

  • Design of an Adaptive T–S Fuzzy Sliding Mode Controller for Robot Arm Tracking

    • Authors: Z. Yang, Zhixiang; M. Chen, Meiyung

    • Year: 2024

    • Citations: 0

    • Type: Article

    • Source: International Journal of Fuzzy Systems

  • A Real-Time Path Planning Algorithm Based on the Markov Decision Process in a Dynamic Environment for Wheeled Mobile Robots

    • Authors: Y. Chen, Yuju; B.G. Jhong, Bing Gang; M. Chen, Meiyung

    • Year: 2023

    • Citations: 4

    • Type: Article (Open Access)

    • Source: Actuators

  • Controller with the PID Parameters Optimization by PSO for a 6-DOF Robotic Arm

    • Authors: K. Wu, Kunjui; M. Chen, Meiyung

    • Year: Not specified

    • Citations: 0

    • Type: Conference Paper

    • Source: Not available

  • Vector Model-Based Robot-Assisted Control System for a Wheeled Mobile Robot

    • Authors: B.G. Jhong, Bing Gang; M. Chen, Meiyung

    • Year: 2023

    • Citations: 0

    • Type: Article

    • Source: Chung Kuo Kung Ch’eng Hsueh K’an

  • An Enhanced Navigation Algorithm with an Adaptive Controller for Wheeled Mobile Robot Based on Bidirectional RRT

    • Authors: B.G. Jhong, Bing Gang; M. Chen, Meiyung

    • Year: 2022

    • Citations: 4

    • Type: Article (Open Access)

    • Source: Actuators

  • A TD-RRT∗ Based Real-Time Path Planning of a Nonholonomic Mobile Robot and Path Smoothening Technique Using Catmull-Rom Interpolation

    • Authors: Jyotish; M. Chen, Meiyung

    • Year: Not specified

    • Citations: 2

    • Type: Conference Paper

    • Source: Not available

  • Apply Adaptive Neural Network PID Controllers for a 6DOF Robotic Arm

    • Authors: M. Wu, Mengchien; B.G. Jhong, Bing Gang; M. Chen, Meiyung

    • Year: Not specified

    • Citations: 0

    • Type: Conference Paper

    • Source: Not available

Ms . TULASI GAYATRI DEVI | IMAGE PROCESSING | Best Researcher Award

Ms . TULASI GAYATRI DEVI | IMAGE PROCESSING | Best Researcher Award

Ms . TULASI GAYATRI DEVI  ,National Formosa University,Taiwan

Dr. Abhishek Kumar is a distinguished academic and researcher at National Formosa University, Taiwan. He has earned recognition for his contributions to the field of mechanical engineering, particularly in areas related to advanced manufacturing technologies, robotics, and automation.Dr. Kumar holds a PhD in Mechanical Engineering from a reputed university, where he specialized in innovative techniques to enhance manufacturing processes. His research interests include additive manufacturing, smart manufacturing systems, and industrial automation. He has published numerous papers in top-tier journals and has presented his findings at various international conferences.

 

Professional Profiles:

Scopus

Education :

Ph.D. in Information Technology
Department of Information Technology,,National Institute of Technology Karnataka (NITK), Surathkal,,Mangaluru, Karnataka, India.,M.Tech in Computer Science & Engineering,Rao Bahadur Y. Mahabaleshwarappa Engineering College, Ballari,
Visvesvaraya Technological University, Belagavi,,Karnataka, India,B.E. in Computer Science & Engineering,Rao Bahadur Y. Mahabaleshwarappa Engineering College, Ballari,,Visvesvaraya Technological University, Belagavi,,Karnataka, India.

Experience:

  • Research Scholar, Department of Information Technology, National Institute of Technology Karnataka (NITK), Surathkal, Mangaluru, Karnataka, India.

Skills:

  • Machine Learning
  • Deep Learning
  • Image Processing
  • Data Analysis
  • Programming Languages: Python, MATLAB
  • Software: TensorFlow, Keras, Scikit-learn, OpenCV

Research Focus:

  • Developing and optimizing machine learning and deep learning models for healthcare applications, particularly in cancer detection and classification using medical imaging.
  • Improving image processing techniques for better accuracy and efficiency in medical diagnostics.

Publications :

Title: Gaussian Blurring Technique for Detecting and Classifying Acute Lymphoblastic Leukemia Cancer Cells from Microscopic Biopsy Images

Title: Real-time microscopy image-based segmentation and classification models for cancer cell detection

Title: Segmentation and classification of white blood cancer cells from bone marrow microscopic images using duplet-convolutional neural network design

Title: Optimization-based convolutional neural model for the classification of white blood cells

Title: Analysis & Evaluation of Image filtering Noise reduction technique for Microscopic Images

Title: Survey of Leukemia Cancer Cell Detection Using Image Processing