Seok-Woo Jang | Computer Vision | Best Researcher Award

Prof. Seok-Woo Jang | Computer Vision | Best Researcher Award

Associate Professor at Anyang University South Korea

Dr. Seok-Woo Jang is an Associate Professor in the Department of Software at Anyang University, Korea. With extensive experience in computer science and software engineering, he has contributed significantly to the fields of image processing, artificial intelligence, and human-computer interaction. His research spans biometrics, computer vision, and information security. Over the years, he has actively participated in numerous research projects and published widely in internationally recognized journals. Dr. Jang’s academic journey and professional experience highlight his dedication to advancing technology through innovative research and education.

profile

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Education

Dr. Seok-Woo Jang obtained his Ph.D. in Computer Science from Soongsil University, Seoul, Korea, in 2000. His doctoral dissertation focused on “Shot Transition Detection by Compensating Camera Operations,” showcasing his early expertise in image and video processing. He completed his Master’s degree in Computer Science from the same institution in 1997, researching velocity extraction of moving objects through cluster analysis. His academic foundation was laid with a Bachelor’s degree in Computer Science from Soongsil University in 1995.

Experience

Dr. Jang’s professional career spans over two decades in academia and research. He has been a Professor at Anyang University since 2009, contributing to software education and research. Prior to that, he was a Research Professor at Sungkyunkwan University from 2008 to 2009. His industry and research experience include roles as a Senior Researcher at the Korea Institute of Construction Technology and a Principal Researcher at the Institute of Industrial Technology Research at Soongsil University. He has also conducted post-doctoral research at the University of Massachusetts, Boston, and the University of North Carolina at Charlotte. His teaching experience includes lecturing at Soongsil University and Sungkyul University.

Research Interests

Dr. Jang’s research focuses on multiple domains, including 2D/3D image processing, human-computer interaction, biometrics, information security, and pattern recognition. He is particularly interested in digital video data indexing, computer vision, object tracking, and image surveillance. His work also extends to developing innovative techniques for harmful content detection and deep learning-based solutions in software engineering and AI-driven image analysis.

Awards

Dr. Jang has received numerous awards for his contributions to research and academia. He was awarded the Best Paper Award at the International Conference on Small and Medium Business in 2018 for his work on harmful content extraction using learning algorithms. In 2016, he received the Best Researcher Award at Anyang University. He also won the Best Paper Award at the International Conference on Digital Policy and Management in 2013 for his work on dynamic camera switching. His achievements have been recognized internationally, including being listed in Marquis Who’s Who in the World in 2008.

Publications

Dr. Jang has authored numerous peer-reviewed publications. Some of his notable works include:

“Detection of Ventricular Fibrillation Using Wavelet Transform and Phase Space Reconstruction from ECG Signals”Journal of Mechanics in Medicine and Biology, 2021.

“Pupil Detection and Gaze Tracking Using a Deformable Template”Multimedia Tools and Applications, 2020.

“Robust Hand Pose Estimation Using Visual Sensor in IoT Environment”The Journal of Supercomputing, 2019.

“Harmful Content Detection Based on Cascaded Adaptive Boosting”Journal of Sensors, 2018.

“A Monitoring Method of Semiconductor Manufacturing Processes Using Internet of Things-based Big Data Analysis”International Journal of Distributed Sensor Networks, 2017.

“Learning-based Detection of Harmful Data in Mobile Devices”Mobile Information Systems, 2016.

“An Adaptive Camera-Selection Algorithm to Acquire Higher-Quality Images”Cluster Computing, 2015.

Conclusion

Dr. Seok-Woo Jang is a highly deserving candidate for the Best Researcher Award. His extensive academic credentials, innovative research projects, influential publications, and numerous awards establish him as a leading researcher in his field. His contributions to computer vision, biometrics, and artificial intelligence continue to push the boundaries of technology, making a lasting impact on both academia and industry.

Usman Ahmad | Computer Vision | Best Researcher Award

Mr Usman Ahmad | Computer Vision | Best Researcher Award

Zhengzhou University, China

Usman Ahmad is a dedicated researcher and data scientist specializing in computer vision and deep learning. Currently pursuing a Ph.D. in Electrical and Information Engineering at Zhengzhou University, China, his research focuses on small aerial object detection using advanced deep learning models. With a Master’s degree in Electrical and Computer Engineering from South China University of Technology, Usman has developed expertise in CNN-based neural networks for small object detection, a critical area in applications like autonomous driving and remote sensing. His professional journey includes roles as a freelance data scientist, site engineer, and visiting faculty member, showcasing his versatility in both academia and industry. Usman’s work has been published in prestigious journals like IEEE Geoscience and Remote Sensing Letters, reflecting his contributions to the field. Passionate about innovation, he continues to push the boundaries of object detection technologies.

Professional Profile

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Education 🎓

Usman Ahmad holds a Ph.D. in Electrical and Information Engineering from Zhengzhou University, China (2022–present), focusing on small aerial object detection through deep learning. He earned his M.S. in Electrical and Computer Engineering from South China University of Technology (2018–2020), where he specialized in small object detection using CNN-based networks, achieving a final grade of 3.4/4. His thesis, Small Object Detection Through CNN-Based Network, addressed challenges in detecting small-scale images in high-resolution and remote sensing applications. Earlier, he completed his B.S. in Electrical Engineering from the National University of Computer and Emerging Sciences (FAST-NUCES), Islamabad (2010–2014), with a thesis on Prepaid Energy Meter, which tackled issues like power theft and billing inefficiencies. His academic journey reflects a strong foundation in electrical engineering and a progressive shift toward cutting-edge AI and computer vision research.

Experience  💼

Usman Ahmad has a diverse professional background. As a Freelance Data Scientist (2020–present), he developed CNN-based models for small image detection and OpenCV machine learning algorithms with 82% efficiency. From 2015 to 2018, he served as a Site Engineer at China State Construction Engineering Corporation Ltd, contributing to the New Islamabad International Airport Project, where he managed MEP systems and HVAC electrical parameters. He also worked as a Visiting Faculty Member at the University College of Engineering & Technology, Sargodha (2014–2015), teaching electrical and computer engineering while managing labs and exams. His technical expertise spans deep learning, computer vision, and electrical systems, making him a versatile professional in both academic and industrial settings. His hands-on experience in large-scale construction projects and AI-driven solutions highlights his adaptability and problem-solving skills.

Awards and Honors  �

Usman Ahmad’s contributions to the field of computer vision and deep learning have earned him recognition in prestigious journals. His research on infrared small target detection, published in IEEE Geoscience and Remote Sensing Letters (2022), has been cited 42 times, showcasing its impact. He co-authored MCDNet: An Infrared Small Target Detection Network Using Multi-Criteria Decision and Adaptive Labeling Strategy (2024), published in IEEE Transactions on Geoscience and Remote Sensing, which has already garnered citations. His innovative work on GAN-integrated feature pyramid networks for small aerial object detection further underscores his expertise. While specific awards are not listed, his consistent publication record in high-impact journals and active contributions to advancing object detection technologies highlight his academic excellence and dedication to the field.

Research Focus 🔍

Usman Ahmad’s research centers on small object detection using deep learning models, particularly in high-resolution and remote sensing applications. His work addresses the challenges of detecting small-scale objects, such as distant vehicles in autonomous driving or tiny structures in satellite imagery. He has developed advanced CNN-based networks and GAN-integrated feature pyramid networks to improve detection accuracy and speed. His research also explores infrared small target detection, employing innovative strategies like adaptive labeling and multi-criteria decision-making. By focusing on practical applications like self-driving cars, remote sensing, and surveillance, Usman aims to bridge the gap between theoretical advancements and real-world solutions. His contributions have been published in leading journals, reflecting his commitment to pushing the boundaries of computer vision and AI.

Publication Top Notes📚

  1. Infrared small target detection network with generate label and feature mapping – IEEE Geoscience and Remote Sensing Letters (2022)
  2. MCDNet: An Infrared Small Target Detection Network Using Multi-Criteria Decision and Adaptive Labeling Strategy – IEEE Transactions on Geoscience and Remote Sensing (2024)
  3. Small Aerial Object Detection through GAN-Integrated Feature Pyramid Networks – In Progress

Conclusion 🌟

Usman Ahmad is a highly skilled researcher and data scientist with a strong background in electrical engineering and deep learning. His expertise in small object detection, particularly through CNN-based and GAN-integrated models, has made significant contributions to computer vision and remote sensing. With a robust academic foundation, diverse professional experience, and a growing list of impactful publications, Usman continues to drive innovation in AI and its real-world applications. His dedication to solving complex problems and advancing technology makes him a valuable asset to the field.

Imad Gohar | Defect Detection | Best Researcher Award

Mr Imad Gohar | Defect Detection | Best Researcher Award

PhD Candidate, Heriot-Watt University, Malaysia

Imad Gohar is a PhD candidate in Computer Engineering at Heriot-Watt University Malaysia, specializing in autonomous aerial-based visual monitoring of wind turbine blade surface defects. His expertise spans renewable energy, computer vision, object detection, deep learning, and machine learning. With extensive teaching and research experience, he has contributed to several impactful publications and projects. Imad has earned recognition for his academic achievements, including a gold medal for securing the top position in his undergraduate studies.

PROFESSIONAL PROFILE

Google Scholar

STRENGTHS FOR THE AWARDS

  1. Academic Excellence: Imad Gohar has consistently demonstrated academic brilliance, as evidenced by his Gold Medal for achieving the top rank in his undergraduate Computer Science program.
  2. Cutting-Edge Research: His PhD work on autonomous aerial-based visual monitoring of wind turbine blade defects addresses a critical challenge in renewable energy, making a significant contribution to sustainable development and machine learning applications.
  3. Diverse Teaching Experience: Gohar’s extensive teaching experience at prestigious institutions like Heriot-Watt University and NUST showcases his ability to impart knowledge and mentor future professionals effectively.
  4. Publications with Impact: His research output, including papers on person re-identification, defect detection, and advanced CNN-RNN architectures, reflects both technical depth and practical application, with citations highlighting peer recognition.
  5. Interdisciplinary Expertise: By combining renewable energy, computer vision, and deep learning, Gohar demonstrates a strong interdisciplinary approach, a hallmark of leading researchers.

AREAS FOR IMPROVEMENTS

  1. Collaboration and Visibility: While Gohar has strong publications, increasing international collaboration and participation in global research initiatives could further enhance his visibility and network in the research community.
  2. Broader Research Applications: Expanding his work beyond defect detection to include predictive maintenance or real-time monitoring could attract more practical implementations and industry partnerships.
  3. Funding and Grants: Actively securing research grants and leading large-scale projects could establish him as a principal investigator with leadership in innovative research.

EDUCATION

Imad Gohar is pursuing his PhD in Computer Engineering at Heriot-Watt University Malaysia (2022–2025), focusing on aerial-based defect detection in wind turbines. He completed his Master’s in Computer Science from NUST, Pakistan (2019), with a thesis on person re-identification using unsupervised learning techniques. His Bachelor’s in Computer Science from ICS&IT Peshawar, Pakistan (2016), emphasized algorithms, and his thesis introduced a web-based educational counseling expert system. Imad’s academic journey reflects his dedication to advancing innovative solutions in computing and engineering.

EXPERIENCE

Imad is a Teaching Assistant at Heriot-Watt University Malaysia (2022–present), conducting tutorials in programming and software engineering. He previously served as an Associate Lecturer at Capital University of Science and Technology, Islamabad (2021), teaching core computer science courses and supervising projects. As a Lab Engineer at NUST (2019–2020), he managed lab demonstrations and documentation. Imad also held lecturer roles at AUST and GCT, teaching diverse computing courses. His professional career highlights a blend of academic and technical expertise.

AWARDS AND HONORS

Imad was awarded the Undergraduate Performance Award (Gold Medal) by ICS&IT Peshawar in 2016 for achieving the top rank in Computer Science. This recognition underscores his academic excellence and commitment to innovation. Throughout his career, Imad has consistently demonstrated exceptional dedication to his field, earning accolades for his research and teaching contributions. His achievements reflect a deep passion for advancing technology and inspiring others in the academic and professional community.

RESEARCH FOCUS

Imad’s research focuses on renewable energy, computer vision, and deep learning. His work in autonomous visual monitoring and defect detection for wind turbine blades aims to improve operational efficiency in renewable energy systems. He explores innovative approaches, including rotated bounding boxes and aerial imagery, to address challenges in defect detection. His interests also encompass machine learning applications in person re-identification and advanced object detection techniques.

PUBLICATION TOP NOTES

  • 📖 Person re-identification using deep modeling of temporally correlated inertial motion patterns
  • 📖 Two stream deep CNN-RNN attentive pooling architecture for video-based person re-identification
  • 📖 Slice-Aided Defect Detection in Ultra High-Resolution Wind Turbine Blade Images
  • 📖 Automatic Defect Detection in Wind Turbine Blade Images: Model Benchmarks and Re-Annotations
  • 📖 Optimizing Wind Turbine Surface Defect Detection: A Rotated Bounding Box Approach
  • 📖 Review of state-of-the-art surface defect detection on wind turbine blades through aerial imagery: Challenges and recommendations

CONCLUSION

Imad Gohar’s exceptional academic achievements, impactful publications, and contributions to both teaching and applied research make him a strong contender for the Best Researcher Award. By continuing to expand his collaborative efforts and exploring broader applications of his work, he could further solidify his position as a leader in renewable energy and computer vision research.