Thatikonda Ragini | Embedded Vision | Best Researcher Award

Mrs. Thatikonda Ragini | Embedded Vision | Best Researcher Award

PhD Researcher at National Institute of Technology Warangal, India

Thatikonda Ragini is a dedicated doctoral researcher at the National Institute of Technology (NIT), Warangal, specializing in artificial intelligence and embedded systems. Under the supervision of Dr. Kodali Prakash, her research aims to develop fast, lightweight, and power-efficient neural architectures suitable for real-world applications, particularly on low-end edge devices. Her interest extends across various domains such as pathology and accessibility, showcasing her drive to make impactful contributions. With six years of teaching experience and three years in R&D, Ragini has a well-rounded academic and professional background. She has published several influential papers in SCIE-indexed journals, demonstrating her expertise in deep learning, machine learning, and computer vision. Her technical acumen and dedication to innovative research make her a promising figure in her field, positioning her as a strong contender for future advancements in AI-driven embedded systems.

Professional Profile

Education

Thatikonda Ragini has a strong academic foundation, starting with her Bachelor of Technology (B.Tech.) in Electronics and Communication Engineering from JNTU Hyderabad in 2010, where she graduated with distinction. She then pursued a Master of Technology (M.Tech.) in VLSI Design, also from JNTU Hyderabad, completing it in 2015 with an impressive distinction score of 82%. Building on her technical expertise, she is currently working toward her Doctor of Philosophy (Ph.D.) at NIT Warangal, focusing on Artificial Intelligence and Embedded Systems. Having submitted her thesis, she is set to complete her Ph.D. in 2024. Her strong educational background reflects a clear trajectory of specialization in cutting-edge fields like machine learning, deep learning, and computer vision, which are central to her ongoing research efforts.

Professional Experience

Ragini’s professional journey spans both academia and research. She has six years of teaching experience, having worked as an Assistant Professor at both Trinity Engineering College (2010-2013) and Jyothishmathi Institute of Technology & Science (2015-2018). During her teaching career, she taught key subjects such as Machine Learning, Deep Learning, Computer Vision, and Internet of Things (IoT), significantly contributing to student learning and development. Alongside teaching, Ragini has three years of R&D experience, where she focused on developing embedded systems and AI-driven technologies. She has also gained valuable experience in writing research proposals for R&D funding agencies, showcasing her ability to lead and contribute to high-impact research projects. Her combined academic and R&D experience makes her a versatile professional in her field.

Research Interests:

Ragini’s research interests lie at the intersection of machine learning, deep learning, and computer vision. Specifically, she focuses on designing lightweight and efficient neural architectures that can be deployed on low-end edge devices with limited power and memory capabilities. Her work aims to optimize these architectures for real-world applications, particularly in domains like pathology and accessibility, which have high societal relevance. Ragini is also interested in embedded vision applications, exploring how computer vision systems can be integrated into embedded systems to enhance performance across diverse fields. Her research contributes to the advancement of AI-driven embedded systems, offering solutions that are both resource-efficient and scalable, making them suitable for real-world deployment on constrained devices.

Research Skills:

Ragini possesses a diverse set of research skills that position her as a highly capable researcher. She is proficient in machine learning, deep learning, and computer vision, with specialized knowledge in designing neural architectures optimized for low-power, memory-efficient applications. Her technical expertise spans across VLSI design, making her adept at integrating software and hardware for embedded systems. Ragini has hands-on experience with programming languages like Python and frameworks such as TensorFlow and PyTorch, enabling her to develop and deploy advanced AI models. Additionally, she is skilled in writing research proposals for R&D funding, contributing to her experience in project management and execution. Her ability to handle complex datasets, conduct experiments, and analyze results reflects her strong analytical and problem-solving skills.

Awards and Honors:

Ragini’s academic and research accomplishments have been recognized through several accolades. She achieved distinction in both her Bachelor’s and Master’s degrees, reflecting her consistent academic excellence. She also completed NPTEL courses in Machine Learning and Deep Learning with Silver Elite certification, demonstrating her commitment to continuous learning and mastery of complex subjects. Her published research in high-impact SCIE journals further attests to her scholarly achievements, with her papers gaining recognition in the artificial intelligence and computer vision communities. Although she has not listed specific research awards, her growing body of work, which includes influential journal publications and conference presentations, positions her as a strong candidate for future research awards and honors.

Conclusion

Thatikonda Ragini has a strong research portfolio with an impressive focus on embedded systems, machine learning, and computer vision. Her publication record in SCIE journals and conference presentations underscore her impactful contributions. While enhancing international collaborations and increasing engagement in professional societies would boost her candidacy further, her current achievements make her a suitable candidate for the Best Researcher Award.

Publication Top Note

  1. S2VSNet: Single stage V-shaped network for image deraining & dehazing
    Authors: Ragini, T., Prakash, K., Cheruku, R.S.
    Journal: Digital Signal Processing: A Review Journal
    Year: 2025
  2. DeTformer: A Novel Efficient Transformer Framework for Image Deraining
    Authors: Ragini, T., Prakash, K., Cheruku, R.
    Journal: Circuits, Systems, and Signal Processing
    Year: 2024
  3. Rain Streak Removal via Spatio-Channel Based Spectral Graph CNN for Image Deraining
    Authors: Ragini, T., Prakash, K.
    Conference: Communications in Computer and Information Science
    Year: 2023
  4. Progressive Multi-scale Deraining Network
    Authors: Ragini, T., Prakash, K.
    Conference: 2022 IEEE International Symposium on Smart Electronic Systems (iSES)
    Year: 2022

 

Dolly A Sharma | Medical Imaging Technology | Women Researcher Award

Dr. Dolly A Sharma | Medical Imaging Technology | Women Researcher Award 

Assistant Professor at BDIPS, CHARUSAT University, India.

Dr. Dolly A. Sharma is an accomplished researcher and educator specializing in medical imaging technology. With a Ph.D. from Pramukhswami Medical College and an MSc from Manipal Academy of Higher Education, Dr. Sharma has dedicated over a decade to advancing her field. Her research, published in renowned journals, spans topics like diffusion tensor MRI, gender determination using CT scans, and variations in abdominal aorta size. She has received multiple awards, including the Charusat Research Paper Award, recognizing her significant contributions. Dr. Sharma’s work primarily impacts the Indian population, addressing local health challenges and improving diagnostic techniques. As an Assistant Professor at Charotar Institute of Paramedical Sciences, she also leads various committees and contributes to curriculum development. Her collaborative efforts and applied research enhance public health and reflect her commitment to both scientific innovation and community well-being.

Profile

Education🎓

Dr. Dolly A Sharma has a robust educational background in medical imaging technology. She completed her Ph.D. in Medical Imaging Technology at Pramukhswami Medical College, Karamsad, Bhaikaka University, Gujarat, in 2024, focusing on “Diffusion Tensor MR Imaging.” Prior to this, she earned her Master of Science in Medical Imaging Technology from Manipal College of Health Professions, Manipal Academy of Higher Education, Karnataka, in 2017. Her foundational studies began with a Bachelor of Science in Imaging Science from Symbiosis Institute of Health Sciences, Symbiosis University, Pune, completed in 2012. Dr. Sharma’s education reflects her deep commitment to advancing medical imaging technology, equipping her with the expertise to contribute significantly to her field through both research and teaching.

Professional Experience 🏢

Dr. Dolly A Sharma boasts a robust professional background with over a decade of experience in the field of medical imaging technology. Since August 2017, she has served as an Assistant Professor at Charotar Institute of Paramedical Sciences, Charotar University of Science and Technology, where she also holds the position of Head of the Department. Prior to this, she spent over two years at Manipal College of Allied Health Professionals, Manipal Academy of Higher Education, contributing significantly to the academic and research landscape. Her expertise spans across advanced diagnostic imaging techniques, with notable research contributions and publications in the field. Dr. Sharma’s roles include supervising postgraduate students, coordinating various institutional cells, and participating actively in academic and research committees. Her career reflects a deep commitment to both education and research, underpinned by her leadership in advancing medical imaging technology.

Environmental Health

Dr. Dolly A Sharma’s research, while primarily focused on medical imaging technology, has significant implications for environmental health. Her work in developing and refining imaging techniques enhances the early diagnosis and management of health conditions that can be influenced by environmental factors. For instance, her studies on variations in abdominal aorta size and gender determination using CT scans contribute to a better understanding of health conditions that may be affected by environmental exposures. Additionally, her research on prenatal diagnostics helps in early detection of conditions potentially related to environmental factors, supporting better health outcomes for both mothers and infants. Although not directly targeting environmental health, Dr. Sharma’s contributions indirectly support efforts to mitigate health impacts from environmental issues through improved diagnostic capabilities and a better understanding of various health conditions. Her work underscores the importance of advanced imaging techniques in addressing and managing health challenges influenced by the environment.

Research Interests 🔬

Dr. Dolly A Sharma’s research interests primarily focus on advancing medical imaging technology, with a particular emphasis on diffusion tensor MRI and its applications in diagnosing brain pathologies. Her work explores innovative imaging techniques to improve diagnostic accuracy and understanding of various health conditions. Dr. Sharma is also interested in forensic imaging and its role in gender determination and anatomical studies using computed tomography. Her research extends to the impact of imaging technology on prenatal diagnostics and public health, including studies on breast cancer awareness and the effects of COVID-19 on medical professionals. Her multidisciplinary approach combines medical imaging with applied research to address both diagnostic challenges and public health issues, reflecting her commitment to advancing healthcare through technological innovation and practical applications.

Award and Honors

Dr. Dolly A Sharma has garnered notable recognition for her contributions to the field of medical imaging technology. She received the Charusat Research Paper Award in January 2022 and again in January 2024, underscoring her excellence in research. Her work has been widely acknowledged for its impact on medical diagnostics and health education. Additionally, Dr. Sharma has played a significant role in drafting and reviewing model curricula for medical radiology and imaging technology, as part of the Ministry of Health and Family Welfare’s Allied Health Council in India. These accomplishments highlight her leadership and commitment to advancing her field. Her ongoing contributions to research, combined with her administrative roles and involvement in various professional committees, further reflect her dedication and influence in the academic and scientific communities.

Research Skills

Dr. Dolly A Sharma possesses a robust set of research skills, honed through years of experience in medical imaging technology and related fields. Her expertise includes advanced techniques in diffusion tensor MRI, which she applies to investigate brain structure and function. She is adept at utilizing computed tomography (CT) and magnetic resonance imaging (MRI) for diagnostic purposes, showcasing her proficiency in handling complex imaging equipment and software. Dr. Sharma demonstrates strong analytical skills through her detailed research on factors affecting liver volume and gender determination using CT scans. Her ability to conduct applied research is evident in her work on improving public health awareness and addressing prenatal conditions. Additionally, her collaborative nature is highlighted by her successful co-authorship of numerous publications, reflecting her capacity to work effectively within multidisciplinary teams. Overall, Dr. Sharma’s research skills are characterized by technical expertise, analytical rigor, and a commitment to impactful, applied research.

Conclusion

Dr. Dolly A Sharma’s extensive research portfolio, applied focus, and contributions to medical imaging technology make her a strong candidate for the Research for Women Researcher Award. Her work addresses significant health issues, contributes to community well-being, and showcases her commitment to advancing scientific knowledge. Her recognition through awards and her collaborative efforts further support her candidacy for this award.

Publications Top Notes 📚
  • Knowledge of Handling the Personal Protective Equipment by Frontline Allied Health Professionals in COVID-19 Outbreak—A Web-Based Survey Study
    • Authors: S. Ojha, M. Debnath, D. Sharma, A. Niraula
    • Year: 2021
    • Citations: 21
  • Perceptions of medical and allied health students towards online education during the COVID-19 pandemic phases and its future impact in India
    • Authors: M. Debnath, S. Ojha, A. Niraula, D. Sharma
    • Year: 2021
    • Citations: 8
  • Gender Determination of an Individual by Scapula using Multi Detector Computed Tomography Scan in Dakshina Kannada Population-A Forensic Study
    • Authors: M. Debnath, R. P. Kotian, D. Sharma
    • Year: 2018
    • Citations: 7
  • Professional Quality of Life Among Medical Imaging Technologists and Radiologists During COVID-19 Pandemic in India
    • Authors: D. Sharma, A. Verma, M. Debnath, S. Ojha, A. Niraula
    • Year: 2022
    • Citations: 2
  • Diffusion Tensor MRI of Brain in Healthy Adult Population: Normative Fractional Anisotropy Values at 3 Tesla MRI
    • Authors: D. K. V. Mehta, D. A. Sharma
    • Year: 2023
    • Citations: 1
  • Prenatal diagnosis of anencephaly and acrania in pregnant females–Report series of eight cases
    • Authors: M. Debnath, D. Sharma, S. Mishra
    • Year: 2020
    • Citations: 1
  • Estimation of Gender Accuracy of an Individual by Zygomatic Bone Measurement Using Multi-Detector Computed Tomography Scan in Kannada Population – A Forensic Study
    • Authors: B. D. Manna Debnath, Dolly Sharma, Rahul P. Kotian
    • Year: 2019
    • Citations: 1
  • Estimation of Factors Affecting Volume of Liver Using Liver Analysis Software in Computed Tomography
    • Author: P. Dolly Sharma
    • Year: 2015
    • Citations: 1*
  • Influence of Age and Gender on Sacroiliac Joint Space Measured on Computed Tomography
    • Author: D. Sharma
    • Year: 2015
    • Citations: 1
  • Employing Computed Tomography to Assess Clavicle Symmetry in Healthy Adults in the Indian Population of Dakshina Karnataka
    • Authors: M. A. Barde, D. A. Sharma, S. Yadav
    • Year: 2024

 

Avatharam Ganivada | Medical Image Analysis | Best Researcher Award

Assist Prof Dr. Avatharam Ganivada | Medical Image Analysis | Best Researcher Award

Asst. Professor, University of Hyderabad, India

Assistant Professor Dr. Avatharam Ganivada, renowned for his expertise in Medical Image Analysis, has been honored with the esteemed Best Researcher Award. 🏆 His exemplary contributions, particularly in the realm of analyzing medical images for diagnostic and therapeutic advancements, have garnered widespread acclaim. Hailing from the University of Hyderabad, India, Dr. Ganivada’s dedication to pushing the boundaries of medical research is truly commendable. His innovative approaches and groundbreaking discoveries continue to inspire both peers and students alike, shaping the future of medical imaging and healthcare. 🌟

Profile

Google Scholar

Education 🎓

Dr. Avatharam Ganivada holds a Ph.D. in Computer Science and Engineering from Calcutta University, with research conducted at the Center for Soft Computing Research, Indian Statistical Institute, during Dec. 2009–Aug. 2015. Additionally, she completed a certificate course on soft computing and machine learning at the same institute in 2009, and obtained her M.Tech. degree in Computer Science and Technology from the University of Mysore in 2008.

Experience 💼

Dr. Ganivada has a rich professional background, serving as an Assistant Professor at the School of Computer and Information Sciences, University of Hyderabad since March 2017. Prior to academia, she worked as a Data Scientist at ProKarma Soft. Pvt. Ltd., Hyderabad, from September 2015 to February 2017.

Research Interests 🧠

Dr. Ganivada’s research interests encompass various aspects of computer science, including deep learning, neural networks, pattern recognition, and bioinformatics. She is particularly focused on developing innovative solutions for image processing, object detection, and classification, as evidenced by her extensive publication record.

Awards and Recognition 🏆

Dr. Ganivada’s academic achievements have been recognized through prestigious fellowships, including the J.C. Bose Fellowship for her Ph.D. research and the AICTE GATE fellowship during her M.Tech. Additionally, she has served as a reviewer for esteemed journals and conferences in her field.

Publications 📚

  • “Deep Learning and Genetic Algorithm-based Ensemble Model for Feature Selection and Classification of Breast Ultrasound Images”, Image and Vision Computing, Accepted, 2024.