Vibhor Garg | Deep Learning and AI | Best Researcher Award

Mr. Vibhor Garg | Deep Learning and AI | Best Researcher Award

Senior Data Analyst at AXA XL, India

Vibhor Garg is a dynamic and innovative professional with a strong background in computer science and data analysis. With a Bachelor of Technology in Computer Science Engineering and additional studies in Programming and Data Science, he possesses a robust academic foundation that complements his extensive practical experience. His professional journey includes significant roles in both the academic and corporate spheres, where he has demonstrated a remarkable ability to apply his technical expertise to real-world challenges. Known for his problem-solving skills and leadership, he has made substantial contributions through research and industry work, particularly in the fields of machine learning and data analysis.

Profile

Google Scholar

Education

Vibhor completed his Bachelor of Technology in Computer Science Engineering from Jaypee Institute of Information Technology, where he developed a strong technical foundation. His academic journey was further enriched by studies at the Indian Institute of Information Technology, Madras, focusing on Programming and Data Science. Prior to this, he achieved top academic performance in high school and intermediate education at Dewan Public School. This educational background provided him with a comprehensive understanding of both theoretical and practical aspects of his field.

Experience

Vibhor’s professional experience includes a current position as a Senior Data Analyst at AXA XL in India, where he plays a crucial role in automating the end-to-end bookings process, enhancing data quality, and supporting critical financial analysis. His previous role as an Actuarial Analyst Trainee involved automating tasks and ensuring data integrity, further showcasing his analytical capabilities. His stint at Amazon ML Summer School provided him with advanced knowledge in machine learning, which he has applied effectively in his subsequent roles. These experiences reflect his ability to integrate technical skills with practical applications in various professional settings.

Research Interest

Vibhor’s research interests are centered around leveraging advanced computational techniques to address complex problems in data analysis and machine learning. His work focuses on enhancing automated systems for data processing, improving predictive models, and applying deep learning methods to real-world issues such as healthcare diagnostics. His research projects, including facial paralysis detection using image analysis, illustrate his commitment to using technology for impactful problem-solving. His interests also extend to the development of innovative frameworks for knowledge management and retrieval.

Award

While specific awards were not detailed in the provided information, Vibhor’s accomplishments in research, industry, and leadership roles reflect a high level of competence and recognition. His contributions to significant projects and his role in organizing major events demonstrate his impact and influence in his field.

Publications

Vibhor Garg has authored and contributed to numerous influential publications in the field of cardiology, including:

“A population-based cross-sectional study to determine the practices of breastfeeding among the lactating mothers of Patiala city”Journal of Family Medicine and Primary Care (2019). Cited by 32.

“Epidemiologic and Clinical Characteristics of Marantic Endocarditis: A Systematic Review and Meta-Analysis of 416 Reports”Current Problems in Cardiology (2024). Cited by 3.

“Atrial flutter in the elderly patient: the growing role of ablation in treatment”Cureus (2023). Cited by 3.

“In-hospital outcomes in COVID-19 patients with non-alcoholic fatty liver disease by severity of obesity: Insights from national inpatient sample 2020”World Journal of Hepatology (2024). Cited by 2.

“Postmortem Study of Histopathological Lesions of Heart in Cases of Sudden Death-Incidental Findings”Journal of Cardiac Failure (2018). Cited by 2.

“MARANTIC ENDOCARDITIS AND CANCER: UNVEILING HIDDEN MALIGNANCIES AND THE ROLE OF ANTICOAGULANTS”Journal of the American College of Cardiology (2024). Cited by 1.

“Navigating Diagnostic Challenges in Acute Coronary Syndrome: A Case of Bezold-Jarisch Reflex and Wellens Pattern”Cureus (2024).

“Pulmonary Hypertension in HIV and Heart Failure: Clinical Insights and Survival Outcomes”American Heart Journal (2024).

“INEQUALITIES IN ISCHEMIA EVALUATION AMONG HIV PATIENTS WITH HEART FAILURE: INSIGHTS FROM NYC HEALTH+ HOSPITAL’S RETROSPECTIVE COHORT STUDY”Journal of the American College of Cardiology (2024).

“GENDER DIFFERENCES IN HIV PATIENTS WITH HEART FAILURE: A RETROSPECTIVE ANALYSIS FROM THE NATION’S LARGEST MUNICIPAL HOSPITAL SYSTEM”Journal of the American College of Cardiology (2024).

“ASSOCIATION BETWEEN EPICARDIAL ADIPOSE TISSUE AND STROKE RISK: A META-ANALYSIS OF THE GENERAL AND ATRIAL FIBRILLATION POPULATION”Journal of the American College of Cardiology (2024).

“DISPARITIES IN SOCIAL ADVERSITIES AMONG HIV-POSITIVE HEART FAILURE PATIENTS: A RACECENTRIC STUDY WITH MORTALITY IMPLICATIONS”Journal of the American College of Cardiology (2024).

“Abstract MP03: Social Adversities and Mortality in HIV and Heart Failure Patients: A Multi-Center Retrospective Cohort Study From Public Hospitals in New York City”Circulation (2024).

“Differences in the In-Patient Mortality in Marantic Endocarditis Per Etiology: Systematic Review of Case Reports”Circulation (2023).

“Does Co-Morbid Depression Predict Worse In-Hospital Outcomes in Elderly Patients Primarily Hospitalized With Atrial Fibrillation?: A Nationwide Sex and Race Stratified Analysis”Circulation (2023).

“GEOGRAPHIC DISPARITIES IN OUTCOMES OF OSA HOSPITALIZATIONS: A NATIONWIDE VIEWPOINT”Chest (2022).

“Protective Role of Bariatric Surgery in Prevalence and Risk of Atrial Fibrillation in Obese Patients on Long-Term, with Gradually Waning Effect Over a Decade: A Meta-Analysis”Circulation (2021).

“Cannabis Use Poses Alarming Risk of Atrial Tachyarrhythmia and Stroke in Young Patients with Obesity Associated Obstructive Sleep Apnea: A Propensity-Score Matched Analysis”Circulation (2021).

“Rising Burden of Cardiovascular Disease Risk and Major Adverse Cardiac Events in Young African American Patients: A National Analysis of Two Cohorts 10-Years Apart (2017 vs. 2007)”Circulation (2021).

Conclusion

Vibhor Garg exhibits a robust combination of technical skills, practical experience, and leadership abilities, making him a strong candidate for the Research for Best Researcher Award. His contributions to both research and industry highlight his potential and commitment. However, to further strengthen his application, he could focus on expanding his research portfolio, enhancing publication reach, and integrating his research with broader industry applications.

In summary, Vibhor Garg’s profile is impressive and aligns well with the criteria for the Research for Best Researcher Award. With continued development in the suggested areas, he has the potential to be a leading candidate in the future.

Preeti Sharma | Deep Learning | Women Researcher Award

Mrs . Preeti Sharma | Deep Learning | Women Researcher Award 

Assistant Professor , DIT University, Dehradun, Uttrakhand , India

Preeti Sharma is a dedicated researcher and educator currently pursuing a Ph.D. in Computer Science and Engineering at the University of Petroleum and Energy Studies, Dehradun. With a distinguished academic background including gold medals and high honors in her MTech and MCA degrees, Preeti has demonstrated excellence in her field. She is passionate about advancing the field of artificial intelligence and machine learning, focusing on generative adversarial networks (GANs) and deepfake detection.

Profile

Google Scholar

Education 

Preeti Sharma is pursuing a Ph.D. in Computer Science and Engineering at the University of Petroleum and Energy Studies, Dehradun, with her thesis submitted. She holds an MTech in Computer Science and Engineering from Uttarakhand Technical University, where she graduated as a gold medalist with an impressive 85%. Preeti completed her M.C.A. from M.D.U. (Campus), Rohtak, with a strong academic record of 82%.

Experience 

Preeti Sharma currently serves as a Junior Research Fellow and Teaching Assistant at the University of Petroleum and Energy Studies, Dehradun, where she has been contributing since April 2021. Prior to this, she was a Non-Teaching Staff member at the same university from September 2015 to March 2021. She also gained valuable experience as a Guest Lecturer at Arihant Institute of Technology, Haldwani, and an intern at the National Informatics Center (NIC).

Research Interests 

Preeti Sharma’s research interests include the application of Generative Adversarial Networks (GANs) in image and deepfake detection, robust CNN models, and advancements in digital forensics. Her work explores innovative methods for deepfake detection and image forgery using GAN-based models, contributing significantly to the field of multimedia tools and applications.

Awards 

Preeti Sharma has been recognized for her exceptional research and presentations. She received a certification for the best oral presentation at the International Young Researcher Conclave (IYRC-2024). Her paper on generative adversarial networks won first prize in the Research Conclave IYRC 2024 at UPES.

Publications 

  • Sharma, P., Kumar, M., Sharma, H.K. et al. Generative adversarial networks (GANs): Introduction, Taxonomy, Variants, Limitations, and Applications. Multimedia Tools and Applications (2024). Link
  • Sharma, P., Kumar, M., & Sharma, H.K. Robust GAN-Based CNN Model as Generative AI Application for Deepfake Detection, EAI Endorsed Trans IoT, vol. 10 (2024).
  • Sharma, P., Kumar, M., & Sharma, H.K. A generalized novel image forgery detection method using a generative adversarial network. Multimedia Tools and Applications (2023). Link
  • Sharma, P., Kumar, M., & Sharma, H.K. A GAN-based model of deepfake detection in social media. Procedia Computer Science, 218, 2153-2162 (2023).
  • Sharma, P., Kumar, M., & Sharma, H.K. Comprehensive analyses of image forgery detection methods from traditional to deep learning approaches: an evaluation. Multimedia Tools and Applications, 82(12), 18117-18150 (2023).
  • Sharma, P., Kumar, M., & Sharma, H.K. A Guide to Digital Forensic: Theoretical to Software-Based Investigations. Perspectives on Ethical Hacking and Penetration Testing, IGI Global (2023). Link
  • Sharma, P., Kumar, M., & Sharma, H.K. CNN-based Facial Expression Recognition System Using Deep Learning Approach. Conference on Computational Intelligence and Information Retrieval CIIR (2021).
  • Sharma, P. Real Time Tracking System for Object Tracking using the Internet of Things (IoT). Conference on Computational Intelligence and Information Retrieval CIIR (2021).
  • Sharma, P. Leach and Improved Leach: A Review. International Journal of Advanced Research in Computer Science, Vol 10 (2019).

Conclusion

Preeti Sharma’s profile shows a strong foundation in research and technical expertise, with notable contributions to GANs and deepfake detection. Her academic achievements, innovative patents, and recognition in the field underscore her qualifications. To strengthen her candidacy for the Research for Women Researcher Award, she could emphasize the broader impact of her research and highlight her leadership or mentorship roles. Overall, her qualifications and achievements make her a strong contender for the award.

Lijuan Zhang | Deep Learning | Best Researcher Award

Prof. Dr. Lijuan Zhang | Deep Learning | Best Researcher Award 

Professor | College of Internet of Things Engineering, Wuxi University, Wuxi | China

Research for Best Researcher Award Evaluation

Strengths for the Award

  1. Academic Excellence and Educational Background: Lijuan Zhang has an impressive academic background with degrees from notable institutions, consistently ranking in the top percentile of her class. Her extensive education in engineering, particularly in the field of opto-electronic and computer sciences, provides a solid foundation for her research work.
  2. Diverse and Relevant Research Contributions: Dr. Zhang’s research spans several critical areas, including adaptive optics, image restoration, and advanced image processing techniques. Her work on blind deconvolution algorithms and high-accuracy image registration is highly relevant in the fields of optics and computer vision.
  3. High Impact Publications: Dr. Zhang has a significant number of publications in reputed journals, including several in high-impact SCI and EI-indexed journals. Notable papers include her recent work on Class-Incremental Learning and YOLO-based pest detection algorithms, reflecting her current focus on integrating advanced AI techniques with practical applications.
  4. Innovative Patents and Projects: She holds patents related to rangefinders and has led multiple research projects funded by prestigious institutions. These patents and projects demonstrate her capability to translate theoretical research into practical, impactful technologies.
  5. Recognition and Honors: Dr. Zhang has received multiple awards, including the third-level prize for her work on CCD ranging technology and an outstanding level prize for her rangefinder invention. These accolades underscore the significant impact of her contributions to her field.
  6. Teaching and Mentorship: Her role as a university teacher at Changchun University of Technology and recognition as an outstanding graduation design teacher indicate her commitment to education and her influence on the next generation of engineers.

Areas for Improvement

  1. Broader Research Dissemination: While Dr. Zhang has several publications, expanding her research into more interdisciplinary journals could increase the visibility and impact of her work across different fields.
  2. Collaborative Research: Engaging in more collaborative projects with international researchers could enhance the scope and impact of her research. Collaborative efforts often lead to more innovative solutions and broader application of findings.
  3. Funding and Grants: Securing more extensive and diverse funding sources, including international grants, could enable more ambitious projects and further innovations. Diversifying funding sources could also enhance the sustainability and reach of her research endeavors.
  4. Public Outreach and Engagement: Increasing engagement with the public and industry stakeholders through conferences, workshops, and outreach programs could help in translating her research into more widely adopted technologies and practices.
  5. Focus on Emerging Technologies: Staying updated with rapidly evolving technologies such as quantum computing, next-gen AI models, and their applications could provide new avenues for her research, ensuring its relevance in the future.

Short Bio

Dr. Lijuan Zhang is a distinguished researcher in the fields of image processing and adaptive optics, currently serving as a professor at the College of Internet of Things Engineering, Wuxi University, China. With a career spanning over two decades, Dr. Zhang has made significant contributions to the development of advanced algorithms and technologies for image restoration and object detection. Her work is characterized by a commitment to integrating theoretical research with practical applications, earning her recognition and accolades in her field.

Profile

ORCID

Education

Dr. Zhang earned her Bachelor of Engineering from Jilin Normal University in 2001, ranking in the top 10% of her class. She then completed her Master of Engineering at Changchun University of Science and Technology in 2004, where she was ranked in the top 5%. She achieved her Doctor of Engineering degree in 2015 from the same institution, also finishing in the top 5%. Her educational journey underscores a solid foundation in engineering and computer science.

Experience

Since 2004, Dr. Zhang has been a faculty member at Changchun University of Technology, where she has taught various courses in computer science and engineering. Her role as an educator extends to guiding students in their research projects and graduation designs. Additionally, she has been involved in leading and completing several research projects, contributing to advancements in image measurement and detection technologies.

Research Interest

Dr. Zhang’s research interests primarily focus on adaptive optics, image restoration, and advanced image processing techniques. Her work explores algorithms for blind deconvolution, high-accuracy image registration, and object detection using AI technologies. Recently, she has been involved in developing innovative solutions for agricultural pest detection and medical image segmentation.

Awards

Dr. Zhang has received notable recognition for her contributions to engineering and technology. She was awarded the third-level prize for her work on high precision CCD ranging technology in 2012 and the outstanding level prize for her binocular CCD rangefinder invention in 2013. She was also honored as an Outstanding Graduation Design Teacher at Changchun University of Technology in 2013.

Publications

Zhang, L., Li, D., Su, W., Yang, J., & Jiang, Y. (2014). Research on Adaptive Optics Image Restoration Algorithm by Improved Expectation Maximization Method. Abstract and Applied Analysis. DOI: 10.1155/2014/781607 (Cited by: 54)

Zhang, L., Yang, J., Su, W., et al. (2014). Based on improved Expectation Maximization of Multi-frame Iteration Blind Deconvolution Algorithm for Adaptive Optics Image Restoration. Acta Armanebtarii, 35(11) (in Chinese) (Cited by: 32)

Zhang, L., Yang, J., Su, W., Wang, X., & Jiang, Y. (2013). Research on Blind Deconvolution Algorithm of Multi-Frame Turbulence Degraded Images. Journal of Information and Computational Science, 10(12) (Cited by: 27)

Zhang, L., Yang, J., Jiang, Y., et al. (2014). Research on Target Image Matching Algorithm for Binocular CCD Ranging. Laser & Optoelectronics Progress, 51(9) (in Chinese) (Cited by: 21)

Zhang, L., Yang, J., & Jiang, C. (2012). Image Restoration Based on Cross-correlative Blur Length Estimation. Computer Engineering, 9(20) (in Chinese) (Cited by: 19)

Zhang, L., Li, D., et al. (2012). High-accuracy Image Registration Algorithm Using B-splines. ICCSNT 2012 (Cited by: 15)

Zhang, L., Yang, J., et al. (2011). An Image Mosaic Algorithm Taking into Account Speed and Robustness. ICMEAT 2011 (Cited by: 13)

Zhang, L., Yang, X., et al. (2023). Class-Incremental Learning Based on Anomaly Detection. IEEE ACCESS, 2023.7 (SCI, Q2) (Cited by: 7)

Zhang, L., Zhao, C., et al. (2023). Pests Identification of IP102 by YOLOv5 Embedded with the Novel Lightweight Module. Agronomy, 2023.6 (SCI, Q1) (Cited by: 5)

Li, D., Yin, S., Lei, Y., Zhang, L., et al. (2023). Segmentation of White Blood Cells Based on CBAM-DC-UNet. IEEE Access, 2023.1 (SCI, Q2) (Cited by: 9)

Zhang, L., Liu, J., et al. (2022). MSAA-Net: A Multi-Scale Attention-Aware U-Net for Liver Segmentation. Signal, Image and Video Processing, 2022.7 (SCI, Q4) (Cited by: 4)

Zhang, L., Ding, G., et al. (2023). DCF-Yolov8: An Improved Algorithm for Aggregating Low-Level Features to Detect Agricultural Pests and Diseases. Agronomy, 2023.8 (Cited by: 3)

Zhang, L., Cui, H., et al. (2023). CLT-YOLOX: Improved YOLOX Based on Cross-Layer Transformer for Object Detection Method Regarding Insect Pest. Agronomy, 2023.8 (Cited by: 2)

Conclusion

Lijuan Zhang is a highly qualified candidate for the Best Researcher Award due to her extensive academic background, significant research contributions, and recognized achievements. Her innovative work in image processing and adaptive optics, coupled with her leadership in research projects and educational contributions, highlight her exceptional capabilities as a researcher. Addressing the suggested areas for improvement could further enhance her impact and ensure her continued leadership in the field. Overall, Dr. Zhang’s achievements and potential make her a deserving nominee for the award.