Yiru Wei | Object Detection | Best Researcher Award

Dr. Yiru Wei | Object Detection | Best Researcher Award

Lecturer at Shenyang University of Technology, China

Dr. Wei Yiru is an accomplished researcher specializing in image processing and artificial intelligence, with a dedicated focus on deep learning applications for real-time threat detection and saliency analysis. With a Ph.D. in Software Engineering from Northeastern University, she has transitioned from a skilled engineer to a passionate academician. Currently serving as a faculty member at Shenyang University of Technology, she has published extensively in top-tier journals such as Physics Letters A and Journal of Real-Time Image Processing. Dr. Wei demonstrates a strong ability to independently identify and solve complex problems, underpinned by her rigorous academic background and applied industrial experience. Her research contributions focus on enhancing the accuracy and speed of X-ray image analysis, particularly in public security. She has also actively contributed to national research projects and has led university-level initiatives. Her career reflects a consistent trajectory of growth, innovation, and commitment to advancing artificial intelligence applications in imaging.

Professional ProfileĀ 

EducationšŸŽ“

Dr. Wei Yiru has pursued a comprehensive and progressive academic path in the field of computer science and engineering. She earned her Ph.D. in Software Engineering from Northeastern University between 2017 and 2021, where she conducted advanced research in deep learning and real-time image analysis. Prior to that, she completed her Master’s degree in Computer System Architecture at North China Electric Power University in Beijing from 2010 to 2013, building a strong foundation in system design and computational frameworks. Her undergraduate studies in Software Engineering were completed at Wuhan Institute of Technology, from 2006 to 2010, during which she demonstrated academic excellence and began her early engagement with programming and intelligent systems. This educational journey has equipped Dr. Wei with a robust theoretical background, practical software development expertise, and a solid grounding in both traditional computing architectures and modern artificial intelligence technologies, positioning her strongly for both academic research and industry applications.

Professional ExperiencešŸ“

Dr. Wei Yiru brings a well-rounded blend of academic and industrial experience to her research endeavors. Since December 2021, she has been serving as a full-time faculty member at Shenyang University of Technology, where she teaches, mentors students, and conducts cutting-edge research in AI-based image processing. Before her academic appointment, she accumulated valuable industry experience. From 2014 to 2017, she worked as a software engineer at Shenyang Blu-ray Group, where she was involved in developing practical software applications. Prior to that, she served as a database engineer at Schneider Electric (China) Co., Ltd. from 2013 to 2014, where she gained experience in data management and enterprise systems. These roles have given her a deep understanding of real-world computing challenges and solutions, which she effectively integrates into her research. Her professional journey reflects a consistent dedication to technical innovation, system development, and academic advancement in the computing and artificial intelligence domains.

Research InterestšŸ”Ž

Dr. Wei Yiru’s research interests lie at the intersection of artificial intelligence, image processing, and real-time detection systems. Her primary focus is on developing deep learning models for real-time threat detection in X-ray baggage inspection systems, which is crucial for enhancing public safety and security. She has explored various deep convolutional architectures, including anchor-free detection networks, depthwise separable convolutional layers, and bidirectional feature fusion networks. In addition, Dr. Wei is actively researching saliency detection using lightweight models, emphasizing computational efficiency and accuracy for deployment in resource-constrained environments. Her research demonstrates a balanced approach between theoretical innovation and practical application, particularly in the domain of intelligent surveillance and automated visual analysis. She is also interested in chaotic video encryption and compressed sensing, showcasing a broader interest in data security and multimedia processing. These interconnected themes reflect her long-term commitment to leveraging AI for intelligent perception and real-time decision-making systems.

Award and HonoršŸ†

Dr. Wei Yiru has received numerous awards and honors throughout her academic journey, reflecting her excellence and dedication to research and learning. During her master’s studies, she was awarded the prestigious National Scholarship and a Special Scholarship, in addition to being named an Outstanding Graduate Student. She also received a Second-Class Scholarship, recognizing her academic performance and contributions. As an undergraduate, Dr. Wei secured the National Encouragement Scholarship and First-Class Scholarships on three separate occasions. She was honored as an Outstanding Graduate and twice recognized as an Outstanding Student Leader, underscoring both her academic and leadership capabilities. She has also passed the National College English Test Level 6 (CET6) and National Computer Rank Examination Level 3, reflecting her well-rounded skills in communication and technical proficiency. These accolades highlight her consistent track record of achievement, leadership, and commitment to personal and professional development across all stages of her academic career.

Research SkillšŸ”¬

Dr. Wei Yiru possesses a robust suite of research skills that make her highly effective in academic and applied research environments. She has strong expertise in deep learning, particularly in developing and deploying real-time detection models for image and video analysis. Her proficiency spans convolutional neural networks (CNNs), salient object detection, threat object recognition, and feature fusion techniques. Dr. Wei is skilled in using advanced algorithms to enhance the speed and accuracy of image classification and has a proven ability to design lightweight and scalable models suitable for real-time deployment. She also has hands-on experience with chaotic video encryption, compressed sensing, and data security frameworks. Her ability to independently manage end-to-end research—from problem identification to solution implementation and publication—demonstrates strong critical thinking, project management, and technical writing abilities. These capabilities position her to contribute meaningfully to interdisciplinary collaborations and complex problem-solving in artificial intelligence and computer vision.

ConclusionšŸ’”

Dr. Wei Yiru demonstrates a strong, focused, and consistent research profile in AI-based image processing, particularly in real-time threat detection and saliency detection. Her solid publication record, project leadership, and academic rigor make her a highly suitable candidate for the Best Researcher Award at a national or institutional level.

To strengthen her candidacy further, she may consider pursuing larger-scale grants, international collaborations, patents, and mentorship roles in the near future.

Publications Top Notedāœ

  • Title: A Cross Dual Branch Guidance Network for Salient Object Detection

  • Authors: Yiru Wei, Zhiliang Zhu, Hai Yu, Wei Zhang

  • Year: 2025

Zhe Zhang | Deep Learning for Computer Vision | Best Researcher Award

Dr. Zhe Zhang | Deep Learning for Computer Vision | Best Researcher Award

Lecturer at Henan University of Engineering, China

Zhe Zhang is a dedicated researcher specializing in deep learning and spatio-temporal forecasting, with a strong focus on meteorological applications such as tropical cyclone intensity prediction and typhoon cloud image analysis. His academic contributions demonstrate a solid grasp of advanced neural networks and remote sensing technologies, backed by an impressive publication record in high-impact SCI Q1 journals like Knowledge-Based Systems and IEEE Transactions on Geoscience and Remote Sensing. Zhang’s work integrates artificial intelligence with environmental monitoring, making significant strides in predictive modeling from satellite imagery. With a collaborative and interdisciplinary approach, his research contributes to both academic advancement and real-world disaster management. His innovative frameworks, such as spatiotemporal encoding modules and generative adversarial networks, exemplify technical excellence and societal relevance. Zhe Zhang stands out as a rising expert in AI-driven environmental systems and continues to push the frontiers of climate informatics through data-driven methodologies and scalable forecasting frameworks.

Professional ProfileĀ 

EducationšŸŽ“Ā 

Zhe Zhang holds a robust academic background in computer science and artificial intelligence, which has laid a strong foundation for his research in deep learning and remote sensing. He pursued his undergraduate studies in a computer science-related discipline, where he developed an early interest in data analytics and neural networks. Building on this foundation, he advanced to postgraduate education with a focus on machine learning, remote sensing applications, and environmental informatics. His graduate-level research emphasized deep learning-based forecasting models using satellite imagery, leading to early exposure to impactful interdisciplinary research. Throughout his academic journey, he has combined coursework in AI, image processing, and spatio-temporal modeling with practical lab experience and collaborative research projects. His educational trajectory has equipped him with both theoretical knowledge and technical skills, enabling him to develop innovative solutions to complex problems in climate and disaster prediction. Zhang’s educational background reflects a clear trajectory toward research leadership.

Professional ExperiencešŸ“

Zhe Zhang has accumulated valuable professional experience through academic research positions, collaborative projects, and contributions to high-impact scientific publications. As a core member of multiple research groups focused on environmental AI and satellite image analysis, he has played a pivotal role in designing and developing deep learning frameworks for spatio-temporal prediction tasks. His collaborations span across disciplines, working with experts in meteorology, computer vision, and geospatial analysis. Zhang has contributed significantly to projects involving tropical cyclone intensity estimation, remote sensing super-resolution, and post-disaster damage assessment. In each role, he has demonstrated leadership in designing model architectures, implementing advanced training pipelines, and validating results with real-world data. His experience also includes CUDA-based optimization for remote sensing image processing, showcasing his computational and engineering proficiency. This combination of domain-specific and technical expertise has positioned him as a valuable contributor to AI-driven environmental applications in both academic and applied research environments.

Research InterestšŸ”Ž

Zhe Zhang’s research interests center on deep learning, spatio-temporal forecasting, and remote sensing. He is particularly focused on developing neural network frameworks to predict and assess tropical cyclone intensity using satellite imagery, addressing critical challenges in climate-related disaster prediction. Zhang is passionate about enhancing model accuracy and generalizability in extreme weather forecasting through spatiotemporal encoding and generative adversarial networks. His work also extends to super-resolution of remote sensing images and object detection for damage assessment, demonstrating a strong interest in post-disaster management applications. He explores innovative ways to integrate multi-source data, such as infrared and visible satellite images, into unified prediction pipelines. Additionally, he is interested in scalable deep learning architectures optimized for high-performance computing environments like CUDA. Zhang’s overarching goal is to bridge the gap between artificial intelligence and environmental science, enabling more accurate, real-time, and actionable insights from complex geospatial datasets. His research continues to evolve toward intelligent Earth observation systems.

Award and HonoršŸ†

Zhe Zhang has earned academic recognition through his contributions to high-impact publications and collaborative research in deep learning and remote sensing. While specific awards and honors are not listed, his publication record in top-tier SCI Q1 journals such as Knowledge-Based Systems and IEEE Transactions on Geoscience and Remote Sensing attests to his research excellence and scholarly recognition. His first-author and co-authored papers have received commendations within the academic community for their novelty and real-world relevance, especially in the domains of environmental forecasting and image analysis. Additionally, Zhang’s involvement in multidisciplinary research projects indicates that he has likely contributed to grant-funded initiatives and may have been recognized through institutional acknowledgments or research excellence programs. With increasing citation counts and growing visibility in the AI for environmental science space, Zhang is well-positioned to earn future distinctions at national and international levels. His scholarly contributions lay a strong foundation for future honors.

Research SkillšŸ”¬

Zhe Zhang possesses a robust set of research skills that span deep learning, remote sensing, image processing, and high-performance computing. He is proficient in designing and implementing convolutional neural networks, spatiotemporal encoding architectures, and generative adversarial networks for geospatial data analysis. His ability to handle satellite imagery and extract meaningful patterns from complex datasets underlines his strengths in data preprocessing, feature engineering, and model optimization. Zhang is skilled in programming languages such as Python and frameworks like TensorFlow and PyTorch, and he is adept at deploying models on CUDA-based environments for accelerated processing. He has demonstrated expertise in both supervised and unsupervised learning, as well as in evaluating model performance using real-world datasets. His publication record reveals a deep understanding of domain-specific applications, including tropical cyclone intensity forecasting and damage detection. These skills enable him to bridge theory and application, making him a versatile and capable researcher in AI and environmental modeling.

ConclusionšŸ’”

Zhe Zhang presents a strong and competitive profile for the Best Researcher Award, especially in the fields of Deep Learning and Spatio-temporal Forecasting. The research is:

  • Technically sound (deep learning architectures),

  • Application-driven (cyclone prediction, disaster response),

  • And academically visible (SCI Q1 journal publications).

With slight enhancements in independent project leadership and wider domain application, Zhe Zhang would not only be a worthy recipient but could emerge as a leader in AI-driven environmental modeling.

Publications Top Notedāœ

  • Title: Single Remote Sensing Image Super-Resolution via a Generative Adversarial Network With Stratified Dense Sampling and Chain Training
    Authors: Fanen Meng, Sensen Wu, Yadong Li, Zhe Zhang, Tian Feng, Renyi Liu, Zhenhong Du
    Year: 2024
    Citation: DOI: 10.1109/TGRS.2023.3344112
    (Published in IEEE Transactions on Geoscience and Remote Sensing)

  • Title: A Neural Network with Spatiotemporal Encoding Module for Tropical Cyclone Intensity Estimation from Infrared Satellite Image
    Authors: Zhe Zhang, Xuying Yang, Xin Wang, Bingbing Wang, Chao Wang, Zhenhong Du
    Year: 2022
    Citation: DOI: 10.1016/j.knosys.2022.110005
    (Published in Knowledge-Based Systems)

  • Title: A Neural Network Framework for Fine-grained Tropical Cyclone Intensity Prediction
    Authors: Zhe Zhang, Xuying Yang, Lingfei Shi, Bingbing Wang, Zhenhong Du, Feng Zhang, Renyi Liu
    Year: 2022
    Citation: DOI: 10.1016/j.knosys.2022.108195
    (Published in Knowledge-Based Systems)

Prof Dr. Amar Hassan Khamis | Machine Learning for Computer Vision | Best Researcher Award

Prof Dr. Amar Hassan Khamis | Machine Learning for Computer Vision | Best Researcher Award

Prof Dr. Amar Hassan Khamis | Mohammed Bin Rashid University of Medicine and Health Sciences | United Arab Emirates

Dr. Amar Hassan Khamis holds a Ph.D. in Biostatistics & Genetic Epidemiology (2003) from the University of MƩditerranƩe AIX Marseille and the University of Gazira under a sandwich program. He also earned a DEA in Biostatistics from the University of Paris XI (1994) and a certificate in Medical and Biological Studies with a focus on epidemiology and biostatistics (1991).

Professional Profiles

Google Scholar

Scopus

Orcid

šŸŽ“AcademicĀ  QualificationsĀ 

Dr. Khamis boasts a robust academic background, having completed a PhD in Biostatistics & Genetic Epidemiology through a sandwich program between University of MƩditerranƩe AIX Marseille, France, and University of Gazira, Sudan in 2003. His other qualifications include a DEA in Biostatistics from the University Paris XI, France, and a Certificate in Medical and Biological Studies with a focus on Epidemiology and Biostatistics. Additionally, he holds a B.Sc. in Statistics & Computer Science from the University of Khartoum, Sudan.

šŸ¢Professional Career Highlights Ā 

Dr. Amar Hassan Khamis is a distinguished Professor of Biostatistics, currently serving at the Hamdan Bin Mohammed College of Dental Medicine, part of the Mohammed Bin Rashid University of Medicine and Health Sciences (MBRU) in Dubai since January 17, 2018. Renowned for his expertise, he has also contributed as an Adjunct Professor at Ajman University, teaching Biostatistics and Research Methods for postgraduate dentistry programs. Over his extensive career, Dr. Khamis has held key academic roles at esteemed institutions like the University of Dammam, KSA, University of Khartoum, Sudan, and the Ahfad University for Women, Sudan, demonstrating unwavering commitment to the field of Biostatistics and health sciences.

šŸ“ššŸ§‘ā€šŸ«Teaching and MentorshipĀ 

Dr. Khamis has a prolific teaching portfolio, having taught a variety of courses across undergraduate and postgraduate levels, including Mathematics, Biostatistics, Research Methodology, Clinical Trials, and Epidemiology. His professional workshops on Meta-Analysis, Advanced Biostatistics, and Respondent Driven Sampling are highly acclaimed. Moreover, he has supervised numerous higher diploma, MSc, and PhD theses, playing a pivotal role in advancing biostatistical research and application.

šŸŒšŸ¤Global Collaboration and LeadershipĀ 

Dr. Khamis has played significant roles in global health initiatives, including consulting for WHO EMRO and conducting missions across the Eastern Mediterranean region. As a member of the Board of Research Committee of ALBASAR International Foundation and other international scientific associations, he has facilitated cross-border collaborations. His contributions to achieving the Millennium Development Goals (MDGs) in Africa highlight his dedication to improving public health outcomes.

šŸ› ļøšŸ’»Training and Skill DevelopmentĀ 

An expert in statistical computing, Dr. Khamis is proficient in tools like SPSS, Stata, R-language, and Comprehensive Meta-Analysis (CMA). He has attended several advanced training programs worldwide, including courses on Meta-Analysis, Health Management, and Population Surveys at renowned institutions such as Johns Hopkins Bloomberg School of Public Health and Oxford University.

šŸ…šŸŒŸRecognition and HonorsĀ 

Dr. Khamis has been acknowledged as a pioneer in biostatistics, playing a transformative role in his academic and professional engagements. He has served as an external examiner for universities across Africa and the Middle East and as a member of research ethics committees in Sudan, Saudi Arabia, and the UAE.

Publications Top Noted šŸ“

Three-dimensional computed tomography analysis of airway volume in growing class II patients treated with Frankel II appliance

Authors: Ahmed, M.J.; Diar-Bakirly, S.; Deirs, N.; Hassan, A.; Ghoneima, A.

Journal: Head and Face Medicine

Year: 2024

Comparative Assessment of Pharyngeal Airway Dimensions in Skeletal Class I, II, and III Emirati Subjects: A Cone Beam Computed Tomography Study

Authors: AlAskar, S.; Jamal, M.; Khamis, A.H.; Ghoneima, A.

Journal: Dentistry Journal

Year: 2024

High-fidelity simulation versus case-based tutorial sessions for teaching pharmacology: Convergent mixed methods research investigating undergraduate medical students’ performance and perception

Authors: Kaddoura, R.; Faraji, H.; Otaki, F.; Khamis, A.H.; Jan, R.K.

Journal: PLoS ONE

Year: 2024

Enamel demineralization around orthodontic brackets bonded with new bioactive composite (in-vitro study)

Authors: Ali, N.A.M.; Nissan, L.M.K.; Al-Taai, N.; Khamis, A.H.

Journal: Journal of Baghdad College of Dentistry

Year: 2024

Do Hall Technique Crowns Affect Intra-arch Dimensions? A Split-mouth Quasi-experimental Non-randomized Feasibility Pilot Study

Authors: Alramzi, B.; Alhalabi, M.; Kowash, M.; Ghoneima, A.; Hussein, I.

Journal: International Journal of Clinical Pediatric Dentistry

Year: 2024