Vijay Sangolgi | Deep Learning | Young Researcher Award

Young Researcher Award

Vijay Sangolgi
Affiliation N. K. Orchid College of Engineering & Technology, Solapur
Country India
Scopus ID 58843968000
Documents 16
Citations 10
h-index 2
Subject Area Deep Learning
Event Indian Scientist Awards
ORCID 0009-0004-9219-8006

Vijay Sangolgi

N. K. Orchid College of Engineering & Technology, Solapur,

 

Vijay Sangolgi is affiliated with N. K. Orchid College of Engineering & Technology, Solapur, India. His scholarly activities are associated with the field of Deep Learning, where he has contributed to emerging computational methodologies, intelligent systems, and applied artificial intelligence research. Through academic publications and research dissemination, he has established a growing presence within the scientific community and demonstrates the characteristics commonly recognized under young researcher excellence initiatives.[1]

Abstract

The Young Researcher Award recognizes emerging scholars demonstrating research productivity, academic engagement, and contributions to advancing knowledge within their respective disciplines. Vijay Sangolgi’s academic profile reflects involvement in Deep Learning research, supported by peer-reviewed publications, scholarly dissemination, and measurable citation activity. The combination of publication output, interdisciplinary relevance, and commitment to technological advancement provides a basis for consideration within research recognition frameworks focused on early-career achievement.[1][2]

Keywords

Deep Learning; Artificial Intelligence; Machine Learning; Neural Networks; Computational Intelligence; Research Excellence; Emerging Scholar; Scientific Publications; Knowledge Discovery; Young Researcher Award.

Introduction

Research recognition programs play an important role in encouraging innovation, scientific inquiry, and knowledge dissemination across academic disciplines. The Young Researcher Award category is designed to acknowledge researchers who demonstrate notable scholarly activity during the early stages of their academic careers. Within the rapidly evolving field of Deep Learning, contributions involving predictive modeling, intelligent systems, and data-driven decision making continue to influence both theoretical and practical advancements.[2]

Research Profile

Vijay Sangolgi is associated with N. K. Orchid College of Engineering & Technology, Solapur, India. His documented scholarly record includes sixteen indexed documents, ten citations, and an h-index of two according to available research metrics. His academic interests are centered on Deep Learning and related computational methodologies that support intelligent automation and advanced analytical systems.[1]

  • Research specialization in Deep Learning and Artificial Intelligence.
  • Participation in scholarly publication and dissemination activities.
  • Contribution to computational and intelligent system research.
  • Engagement with interdisciplinary technological applications.

Research Contributions

The research activities attributed to Vijay Sangolgi are aligned with contemporary developments in machine learning and Deep Learning technologies. Such work contributes to the broader objective of improving computational efficiency, predictive accuracy, and intelligent decision-support systems. The field continues to generate significant academic and industrial interest due to its applications in healthcare, engineering, business analytics, and automation.[3]

  • Application of machine learning methodologies to complex datasets.
  • Exploration of intelligent computational models.
  • Support for innovation through algorithmic research.
  • Contribution to academic knowledge exchange and scholarly communication.

Publications

The publication record associated with the researcher reflects sustained scholarly engagement. Indexed publications contribute to scientific visibility, facilitate peer evaluation, and promote the dissemination of research findings across the academic community.[1]

  1. Peer-reviewed journal articles in Deep Learning and related technologies.
  2. Conference proceedings and technical research presentations.
  3. Collaborative publications supporting interdisciplinary research.
  4. Scholarly outputs contributing to emerging AI applications.

Research Impact

Research impact may be evaluated through publication output, citation performance, academic visibility, and contribution to ongoing scientific dialogue. The documented citation record demonstrates that the research outputs have received scholarly attention and contribute to the broader exchange of scientific knowledge. Continued publication activity has the potential to expand influence across academic and applied research domains.[1]

Award Suitability

The Young Researcher Award emphasizes research promise, scholarly productivity, innovation, and contribution to scientific advancement. Based on available academic indicators, Vijay Sangolgi demonstrates characteristics associated with emerging research excellence, including publication activity, engagement with contemporary technological research, and participation in scholarly communication. These factors support consideration within award programs recognizing early-career academic achievement.[1][4]

Conclusion

Vijay Sangolgi’s academic profile reflects ongoing engagement with Deep Learning research and scholarly publication activities. Through contributions to scientific literature and participation in advancing computational intelligence methodologies, the researcher represents the type of emerging scholar frequently recognized by early-career research distinction programs. The Young Researcher Award serves as a platform for acknowledging such contributions and encouraging future scientific achievement.[1]

References

  1. Scopus author details: Vijay Sangolgi, Author ID 58843968000. Scopus. https://www.scopus.com/authid/detail.uri?authorId=58843968000
  2. Facial recognition enhanced music recommendation system: An exploration of CNN in user centric music discovery
    https://pubs.aip.org/aip/acp/article-abstract/3385/1/030001/3380727/Facial-recognition-enhanced-music-recommendation?redirectedFrom=fulltext
  3. Artificial Intelligence and Emerging Technology (AI Summit), Global AI Summit – International Conference on. https://ieeexplore.ieee.org/xpl/conhome/11410557/proceeding
  4. Revolutionizing Fake News Detection with Artificial Neural Networks and Recurrent Neural Networks. https://papers.ssrn.com/sol3/papers.cfm?abstract_id=5091615

Asim Manna | Artificial Intelligence | Best Researcher Award

Mr. Asim Manna | Artificial Intelligence | Best Researcher Award

Indian Institute of Technology Kharagpur, India

Author Profile

GOOGLE SCHOLAR

🎓 EARLY ACADEMIC PURSUITS

Mr. Asim Manna embarked on his academic journey with a robust foundation in mathematics, earning his Bachelor’s degree from the University of Burdwan and a Master’s in Pure Mathematics from the University of Calcutta. His pursuit of interdisciplinary excellence led him to the Indian Statistical Institute (ISI), Kolkata, where he transitioned into the realm of technology through an M.Tech in Computer Science. Currently, he is pursuing his Ph.D. at the Indian Institute of Technology (IIT) Kharagpur, focusing on Artificial Intelligence with a specialization in computer vision and medical imaging, a domain where he continues to thrive as a research scholar.

🏢 PROFESSIONAL ENDEAVORS

Mr. Manna is presently engaged as a Research Intern at Samsung Research Institute Bangalore, working on cutting-edge image signal processing pipelines. He has previously contributed to the field as a Research Intern at IIT Bhilai, where he explored cryptographic algorithm implementations. His experience as a Teaching Assistant for NPTEL courses on Deep Learning showcases his commitment to academic mentorship and knowledge dissemination.

📚 CONTRIBUTIONS AND RESEARCH FOCUS IN ARTIFICIAL INTELLIGENCE

Mr. Manna’s core research lies in deep learning, hash-based medical image retrieval, and generative models for computer vision, with emphasis on:

  • Structured deep neural hashing

  • Multimorbidity image retrieval using chest X-rays

  • Multi-modal and multi-label medical imaging systems

  • Generative methods for HDR imaging and signal fusion

His work has significantly advanced the development of efficient, content-aware, organ-specific, and pathology-sensitive retrieval systems, essential for evidence-based medicine (EBM) and healthcare diagnostics.

🏅 ACADEMIC CITATIONS, ACCOLADES AND RECOGNITION

Mr. Manna’s publications in high-impact, peer-reviewed journals such as Computers in Biology and Medicine, Scientific Reports, and the Journal of Medical Imaging have garnered academic recognition. His collaborative research on OPHash, MeDiANet, and structured hashing for modality-organ-disease retrieval contributes to the growing body of literature in medical AI systems. His participation in international conferences like Pattern Recognition (Springer, Cham) reflects scholarly acknowledgment.

He has also received:

  • CSIR-UGC NET Lectureship (AIR-94)

  • Swami Vivekananda Merit-cum-Means Scholarship

  • Qualified for NBHM Scholarship and Fellowship Exams

🌍 IMPACT AND INFLUENCE

Asim’s research contributes to the transformative role of AI in healthcare, particularly by improving content-based retrieval systems for medical diagnostics. His participation in global competitions like the NTIRE 2025 Image Denoising Challenge, where he achieved a top 5 global ranking, reflects the practical excellence and competitiveness of his work. His leadership as a Plenary Chair at the Kharagpur Digital Health Symposium further exemplifies his influence within academic and industrial circles.

🧭 LEGACY AND FUTURE CONTRIBUTIONS

Mr. Manna’s body of work stands at the intersection of mathematical rigor and real-world AI applications, aiming to revolutionize healthcare imaging through scalable, explainable, and secure AI solutions. With a strong foundation in hash learning, generative AI, and medical image understanding, he is poised to contribute toward building intelligent clinical decision systems, federated diagnostic networks, and resource-optimized AI pipelines for edge deployment.

His long-term vision includes:

  • Expanding AI applications to resource-constrained medical infrastructures

  • Enhancing interpretability in deep learning frameworks

  • Contributing to open-source medical imaging libraries for global researchers

 ✅CONCLUSION

Mr. Asim Manna exemplifies the emerging class of researchers who are pioneering the convergence of mathematics, artificial intelligence, and healthcare. Through his innovative research, academic leadership, and global collaboration, he is contributing meaningfully to both theoretical advancements and practical solutions in AI for medical image analysis. With a track record of technical mastery, scholarly excellence, and impactful contributions, his future as a thought leader in AI-driven medical technologies is both promising and transformative.

🔬NOTABLE PUBLICATION:

Title: The tenth NTIRE 2025 image denoising challenge report
Authors: L. Sun, H. Guo, B. Ren, L. Van Gool, R. Timofte, Y. Li
Journal/Conference: Proceedings of the Computer Vision and Pattern Recognition Conference, pp. 1342–1369
Year: 2025

Title: FedERA: Framework for Federated Learning with Diversified Edge Resource Allocation
Authors: A. Borthakur, A. Kasliwal, A. Manna, D. Dewan, D. Sheet
Journal/Conference: 2024 2nd International Conference on Federated Learning Technologies and Applications (FLTA)
Year: 2024

Title: Structured hashing with deep learning for modality, organ, and disease content sensitive medical image retrieval
Authors: A. Manna, D. Dewan, D. Sheet
Journal/Conference: Scientific Reports, Volume 15 (1), Article 8912
Year: 2025

Title: Deep neural hashing for content-based medical image retrieval: A survey
Authors: A. Manna, R. Sista, D. Sheet
Journal/Conference: Computers in Biology and Medicine, Volume 196, Article 110547
Year: 2025

Title: OPHash: Learning of organ and pathology context-sensitive hashing for medical image retrieval
Authors: A. Manna, R. Sathish, R. Sethuraman, D. Sheet
Journal/Conference: Journal of Medical Imaging, Volume 12 (1), Article 017503-017503
Year: 2025

Taveena | Computer Science | Best Researcher Award

Ms. Taveena | Computer Science | Best Researcher Award

Indian Institute of Technology Roorkee, India

Author Profile

SCOPUS

ORCID

🎓 EARLY ACADEMIC PURSUITS

Ms. Taveena began her academic journey in Computer Science and Engineering at Punjabi University, Patiala, where she completed her undergraduate studies. She pursued her M.Tech. in CSE from IIT (ISM) Dhanbad, where she first ventured into deep learning for audio classification using recurrent neural networks. She is currently pursuing her Ph.D. at IIT Roorkee, focusing on decoding mental imagery through physiological signals under the guidance of Prof. Partha Pratim Roy.

🏢 PROFESSIONAL ENDEAVORS

Ms. Taveena has over 6 years of rigorous research experience, combining deep learning, physiological signal processing, and multimodal data analysis. She is adept at designing efficient neural architectures, contributing to diverse research areas such as neural architecture search (NAS), EEG-fMRI fusion, audio–EEG classification, and cross-modal generation tasks. She has been a key contributor to cutting-edge projects involving parameter-efficient tuning and low-rank adaptation techniques.

📚 CONTRIBUTIONS AND RESEARCH FOCUS IN COMPUTER SCIENCE

Her primary focus lies in developing deep learning frameworks for complex time-series and multimodal signals, particularly in:

  • EEG-based motor imagery and speech imagery classification

  • Silent speech decoding and mental imagery task adaptation

  • Cross-session classification using self-supervised contrastive learning

  • Multi-modal EEG–fMRI and image–EEG fusion

  • Lightweight neural tuning with adapters

Her contributions extend into broader domains of natural language processing (NLP) and computer vision, focusing on foundational model architectures and cross-modal learning.

🏅 ACADEMIC CITATIONS, ACCOLADES AND RECOGNITION

  • 📌 Journal Articles:

    • Biomedical Signal Processing and Control (IF: 4.9)

    • IEEE Transactions on Industrial Informatics (Under review, IF: 9.9)

    • International Journal of Activity and Behavior Computing

  • 📌 Conference Presentations:

    • ICPR 2022 (Canada) and ICPR 2025 (India)

    • ABC Conference 2025 (Winner of SSDC challenge and Best Paper Award)

  • 📌 Preprints & Community Contribution:

    • Active on arXiv with high-engagement preprints

🌍 IMPACT AND INFLUENCE

Ms. Taveena’s work addresses real-world challenges in neurotechnology, enhancing human–computer interaction, silent communication, and cognitive state monitoring. Her research on EEG signal decoding is paving the way for assistive technologies, particularly benefiting neurologically impaired individuals. She has influenced the academic and open research community through arXiv preprints and open-access contributions.

🧭 LEGACY AND FUTURE CONTRIBUTIONS

Ms. Taveena is poised to leave a lasting impact through:

  • Novel deep learning tools for brain signal decoding

  • Foundational model adaptation for low-resource and multimodal scenarios

  • Open scientific collaboration via preprints and peer reviewing

  • Future goals include bridging neuroscience and AI, making cognitive computing more accessible and inclusive

She aims to further contribute to large-scale cross-modal learning, AI for healthcare, and foundational model efficiency for real-time applications.

 ✅CONCLUSION

Ms. Taveena represents the next-generation AI researcher, combining deep theoretical knowledge with practical application in neuroscience, speech, and multimodal learning. With an excellent academic pedigree and significant contributions to EEG decoding and multimodal AI, she is a promising leader in Computer Science and Brain–AI interfaces.

🔬NOTABLE PUBLICATION:

Native Arabic EEG-based Silent Speech Decoding Using Deep Learning Techniques
Authors: Taveena Lotey, Salini Yadav, Partha Pratim Roy
Journal: International Journal of Activity and Behavior Computing
Year: 2025


EEG-Based Mental Imagery Task Adaptation via Ensemble of Weight-Decomposed Low-Rank Adapters
Authors: Taveena Lotey, Aman Verma, Partha Pratim Roy
Journal: Lecture Notes in Computer Science
Year: 2024


Cross-Session Motor Imagery EEG Classification using Self-Supervised Contrastive Learning
Authors: Taveena Lotey, Prateek Keserwani, Gaurav Wasnik, Partha Pratim Roy
Journal: 2022 26th International Conference on Pattern Recognition (ICPR)
Year: 2022