K ASHWINI | Computer Science | Best Researcher Award

K ASHWINI | Computer Science | Best Researcher Award

K ASHWINI, National Institute of Technology Rourkela, India

K. Ashwini is a dedicated Ph.D. candidate in Computer Science and Engineering at NIT Rourkela, specializing in deep learning applications for grading diabetic retinopathy. She holds an M.Tech. from VSSUT Burla and a B.Tech. from Synergy Institute of Engineering & Technology, Dhenkanal. Her research includes notable publications, such as her work on CNN-based diabetic retinopathy grading in Biomedical Signal Processing and Control. Skilled in Python, MATLAB, and LaTeX, she has actively participated in workshops on machine learning and signal processing. Ashwini is fluent in Hindi, Telugu, and English.

Publication profile

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Academic Background

Ms. K. Ashwini is a Research Scholar in Computer Science and Engineering (CSE) at NIT Rourkela, currently pursuing her Ph.D., with her research focused on diabetic retinopathy grading using deep learning techniques. Her advanced studies in deep learning, combined with an M.Tech. in CSE from VSSUT Burla, highlight her dedication to exploring complex topics within biomedical and computational research. She has maintained a strong academic record throughout her studies, underscoring her commitment and expertise in her field.

Research Focus and Publications

Ashwini’s primary research area is in biomedical signal processing, specifically targeting diabetic retinopathy grading using CNNs and soft attention mechanisms. She has contributed a journal article to Biomedical Signal Processing and Control and presented multiple conference papers at reputable IEEE and Springer conferences, indicating her active participation in disseminating her research findings. Notably, her publications demonstrate her capacity to employ and innovate with advanced computational methods for impactful health-related applications, a relevant focus for this award.

Technical Skills and Training

Her technical skill set, including Python, MATLAB, and LaTeX, complements her research competencies. Ashwini’s training in SQL and experience with clustering and fraud detection in mobile networks contribute to a robust and versatile research portfolio. Her academic research skills and fluency in programming languages further solidify her qualifications as a proficient researcher in her domain.

Workshops and Professional Development

Ms. Ashwini has participated in several workshops and short-term training programs across India, including those focused on biomedical signal processing, machine learning, and image processing applications. Her engagement in diverse professional development initiatives, such as faculty development programs and national seminars, showcases her continuous effort to enhance her knowledge base and technical skills.

Publication top notes

Grading diabetic retinopathy using multiresolution based CNN

Soft attention with convolutional neural network for grading diabetic retinopathy

Application of Generalized Possibilistic Fuzzy C-Means Clustering for User Profiling in Mobile Networks

Improving Diabetic Retinopathy grading using Feature Fusion for limited data samples

An intelligent ransomware attack detection and classification using dual vision transformer with Mantis Search Split Attention Network

Check for updates Modified Inception V3 Using Soft Attention for the Grading of Diabetic Retinopathy

Modified InceptionV3 Using Soft Attention for the Grading of Diabetic Retinopathy

Grading of Diabetic Retinopathy using iterative Attentional Feature Fusion (iAFF)

Conclusion

Ms. K. Ashwini exemplifies a suitable candidate for the Research for Best Researcher Award. Her specialized research in diabetic retinopathy grading, supported by a solid academic and technical background, positions her as a promising researcher. Her publications and active participation in workshops further validate her dedication and contributions to biomedical signal processing and computer vision applications, aligning well with the award’s criteria for excellence in research and innovation.

Zhidong CAO | Data Science | Best Researcher Award

Mr. Zhidong CAO | Data Science |  Best Researcher Award

Zhidong CAO at Institute of Automation, Chinese Academy of Sciences, China

Zhidong CAO is a renowned professor and principal investigator at the National Key Laboratory of Multimodal Artificial Intelligence Systems, Institute of Automation, Chinese Academy of Sciences. With a Doctor of Science degree, he has made significant contributions to the field of artificial intelligence and has been recognized for his work in various national and international platforms.

Profile

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Education

Zhidong CAO earned his Ph.D. from the Institute of Geographic Sciences and Natural Resources Research at the Chinese Academy of Sciences in 2008. He also holds a Master’s degree and a Bachelor’s degree from Changsha University of Science and Technology, completed in 2005 and 2001 respectively.

Research Focus

His research interests lie primarily in the areas of multimodal artificial intelligence systems, social computing, and geographic information analysis. He has been instrumental in several key national scientific and technological projects, including the National Medium- and Long-term Scientific and Technological Development Plan (2021-2035) and the New Generation Artificial Intelligence Strategic Plan.

Professional Journey

Zhidong CAO began his professional journey as a Postdoctoral Fellow at the Institute of Automation, Chinese Academy of Sciences, in 2008. He progressed to become an Assistant Researcher in 2010, then an Associate Researcher in 2011, and has been serving as a Researcher since 2020. His roles have seen him engage deeply with various research projects and contribute significantly to the field of automation and artificial intelligence.

Honors & Awards

Throughout his career, Zhidong CAO has received numerous prestigious awards. Notable among these are the Beijing Science and Technology Progress Award (Second Prize, 2022), the China Surveying and Mapping Society Science and Technology Award (Grand Prize, 2021), and the Chinese Society of Simulation Natural Science First Prize (2018). His contributions have also been recognized by the Chinese Association of Automation and the Chinese Preventive Medicine Association.

Publications Noted & Contributions

Zhidong CAO has an impressive portfolio of over 120 research papers published in leading domestic and international journals and conferences. He has also authored three books, further establishing his expertise in his field. His research has earned him six scientific and technological awards, underscoring his significant contributions to the advancement of artificial intelligence and related domains.

  1. Coordinated Cyber Security Enhancement for Grid-Transportation Systems With Social Engagement
    • Journal: IEEE Transactions on Emerging Topics in Computational Intelligence
    • DOI: 10.1109/TETCI.2022.3209306
    • Contributors: Pengfei Zhao, Shuangqi Li, Paul Jen-Hwa Hu, Zhidong Cao, Chenghong Gu, Da Xie, Daniel Dajun Zeng
    • Summary: This article discusses methods for enhancing cybersecurity in grid-transportation systems through coordinated efforts and social engagement. It emphasizes the importance of integrating social factors and community involvement in cybersecurity strategies.
  2. Energy-Social Manufacturing for Social Computing
    • Journal: IEEE Transactions on Computational Social Systems
    • DOI: 10.1109/TCSS.2024.3379254
    • Contributors: Alexis Pengfei Zhao, Shuangqi Li, Yanjia Wang, Paul Jen-Hwa Hu, Chenye Wu, Zhidong Cao, Faith Xue Fei
    • Summary: This article explores the concept of energy-social manufacturing, which integrates energy systems with social computing to enhance efficiency and sustainability. The research highlights the role of social computing in optimizing energy production and consumption.
  3. Modeling the Coupling Propagation of Information, Behavior, and Disease in Multilayer Heterogeneous Networks
    • Journal: IEEE Transactions on Computational Social Systems
    • DOI: 10.1109/TCSS.2023.3306014
    • Contributors: Tianyi Luo, Duo Xu, Zhidong Cao, Pengfei Zhao, Jiaojiao Wang, Qingpeng Zhang
    • Summary: This study models the interactions and propagation dynamics of information, behavior, and disease within multilayer heterogeneous networks. It provides insights into how these elements influence each other and spread across different network layers.
  4. Socially Governed Energy Hub Trading Enabled by Blockchain-Based Transactions
    • Journal: IEEE Transactions on Computational Social Systems
    • DOI: 10.1109/TCSS.2023.3308608
    • Contributors: Pengfei Zhao, Shuangqi Li, Zhidong Cao, Paul Jen-Hwa Hu, Chenghong Gu, Xiaohe Yan, Da Huo, Tianyi Luo, Zikang Wang
    • Summary: This article examines how blockchain technology can facilitate socially governed energy hub trading. It discusses the implementation of blockchain-based transactions to enhance transparency, security, and efficiency in energy markets.
  5. A Cross-Lingual Transfer Learning Method for Online COVID-19-Related Hate Speech Detection
    • Journal: Expert Systems with Applications
    • DOI: 10.1016/j.eswa.2023.121031
    • Contributors: Lin Liu, Duo Xu, Pengfei Zhao, Daniel Dajun Zeng, Paul Jen-Hwa Hu, Qingpeng Zhang, Yin Luo, Zhidong Cao
    • Summary: This research presents a method for detecting COVID-19-related hate speech online using cross-lingual transfer learning. The study demonstrates the effectiveness of the proposed method in identifying hate speech across different languages, aiding in the fight against online misinformation and discrimination.