Shankho Subhra Pal | Computer Science | Cross-Disciplinary Innovation Award

Cross-Disciplinary Innovation Award

Shankho Subhra Pal
Indian Institute of Technology Kharagpur, India

Shankho Subhra Pal
Affiliation Indian Institute of Technology Kharagpur
Country India
Scopus ID 57212574678
Documents 10
Citations 20
h-index 2
Subject Area Computer Science
Event International Phenomenological Research Awards
ORCID 0000-0003-1036-3166

The Cross-Disciplinary Innovation Award recognizes scholarly contributions that integrate computational intelligence, data science, remote sensing, machine learning, and interdisciplinary technological applications. Shankho Subhra Pal of the Indian Institute of Technology Kharagpur has developed research spanning time-series prediction, satellite image analysis, clustering methodologies, multimodal sensing, and artificial intelligence applications. His published works demonstrate the application of advanced computational techniques to real-world environmental and sensing challenges, contributing to contemporary developments in computer science and data-driven decision-making.[1]

Abstract

This article reviews the academic profile and research accomplishments of Shankho Subhra Pal. His work focuses on machine learning, remote sensing, image prediction, clustering analysis, and multimodal sensing systems. Through interdisciplinary integration of artificial intelligence and geospatial technologies, his studies address challenges in cloud removal, land-cover analysis, human sensing, and synthetic data generation. These contributions illustrate emerging intersections between computer science and applied environmental analytics.[2]

Keywords

Artificial Intelligence, Machine Learning, Remote Sensing, Satellite Imagery, Time-Series Prediction, Clustering Analysis, Multimodal Data, Human Sensing, Computer Science.

Introduction

Contemporary research increasingly depends on cross-disciplinary approaches capable of integrating computational methodologies with practical applications. Pal’s research portfolio reflects this trend through the application of machine learning and pattern recognition techniques to environmental monitoring, sensing systems, and geospatial intelligence. His work contributes to methodological development while supporting applied research objectives.[3]

Research Profile

According to available scholarly records, the researcher has authored ten indexed publications and received twenty citations, resulting in an h-index of two. His primary specialization lies within Computer Science, with notable engagement in artificial intelligence, pattern recognition, remote sensing, and predictive analytics.[1]

Research Contributions

  • Development of self-supervised learning frameworks for multispectral image prediction and cloud-removal applications.
  • Research on multimodal time-series generation using Multi-Agent GAN architectures for sensing and mHealth environments.
  • Advancement of hierarchical clustering methodologies for pattern recognition and data organization.
  • Fine-grained estimation of land-cover classes using Landsat 8 multispectral imagery.

Publications

  • Time Series Prediction of Multi-Spectral Images Using Self-Supervised Learning and Its Applications in Cloud Removal and Land Use Analysis.
  • Revisiting Multi-Agent GAN for Multimodal Time Series Generation in Human Sensing and mHealth Applications.
  • Finding Hierarchy of Clusters.
  • Fine-grain Cluster Estimation of Land Cover Classes Using Landsat 8 Multispectral Images.

Research Impact

The research portfolio demonstrates an emphasis on practical artificial intelligence applications with relevance to environmental analytics, sensing technologies, and predictive modeling. By combining computer science methodologies with geospatial and healthcare-oriented datasets, the work contributes to broader interdisciplinary innovation and supports reproducible computational research.[4]

Award Suitability

The Cross-Disciplinary Innovation Award emphasizes integration across academic domains and the translation of advanced research into practical applications. Pal’s body of work aligns with these objectives through the convergence of artificial intelligence, remote sensing, pattern recognition, and multimodal data analytics. His contributions provide evidence of interdisciplinary engagement and methodological innovation consistent with the objectives of the International Phenomenological Research Awards.[5]

Conclusion

Shankho Subhra Pal has established a research profile centered on machine learning, remote sensing, and computational intelligence. His publications illustrate interdisciplinary problem-solving and the application of advanced analytical techniques across multiple domains. These characteristics support consideration for recognition under a cross-disciplinary innovation framework.[6]

References

  1. Elsevier. (n.d.). Scopus author details: Shankho Subhra Pal, Author ID 57212574678. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=57212574678
  2. Engineering Applications of Artificial Intelligence. (2026). Time Series Prediction of Multi-Spectral Images Using Self-Supervised Learning.
    https://doi.org/10.1016/j.engappai.2026.115442
  3. ACM. (2025). Revisiting Multi-Agent GAN for Multimodal Time Series Generation in Human Sensing and mHealth Applications.
    https://doi.org/10.1145/3714394.3756189
  4. Pattern Recognition Letters. (2024). Finding Hierarchy of Clusters.
    https://doi.org/10.1016/j.patrec.2023.12.009
  5. ACM. (2023). Fine-grain Cluster Estimation of Land Cover Classes using Landsat 8 Multispectral Images.
    https://doi.org/10.1145/3627631.3627643
  6. IEEE. (2023). Time Series Prediction of Multi-Spectral Satellite Images and Its Application for Cloud Removal.
    https://doi.org/10.1109/INGARSS59135.2023.10490400

Paluck Arora | Deep learning | Best Researcher Award

Ms. Paluck Arora | Deep learning | Best Researcher Award

Research Scholar, Thapar university, India

Paluck Arora is a dedicated research scholar at the Thapar Institute of Engineering & Technology, specializing in Computer Science Engineering. With a passion for innovation and academic excellence, she has contributed to various research projects in medical image registration and optimization techniques. Her academic journey is marked by a Ph.D. with a 9.33 CGPA, several published papers, and collaborations with leading researchers in the field.

Profile

Scopus

Strength of the Award

Paluck Arora demonstrates exceptional research capabilities, particularly in the field of medical image registration. Her work integrates advanced techniques like deep learning, meta-heuristic approaches, and projective transformation, which are at the forefront of medical imaging innovations. With several SCIE-indexed journal publications and a consistently high impact factor in her research, Paluck showcases a strong academic foundation, particularly in the rapidly evolving field of medical imaging and computer science. Her contributions to image-guided interventions are instrumental in enhancing diagnostic accuracy and treatment planning, making her a strong contender for the Best Research Award.

Area of Improvement

While Paluckโ€™s research output is impressive, expanding her research portfolio into real-world applications and interdisciplinary collaborations with the healthcare industry could further enhance the practical impact of her work. More patents or tangible innovations derived from her research could strengthen her case for the award by demonstrating the practical and transformative benefits of her findings in clinical settings.

๐ŸŽ“ Education

  • Ph.D. in Computer Science Engineering (2020-2024) โ€“ Thapar Institute of Engineering & Technology, Patiala, Punjab (CGPA: 9.33)
  • Master of Engineering in Computer Science Engineering (2016-2018) โ€“ Thapar Institute of Engineering & Technology, Patiala, Punjab (CGPA: 8.38)
  • Bachelor of Engineering in Computer Science Engineering (2011-2015) โ€“ Kurukshetra University, Haryana (GPA: 8.1)

๐Ÿ’ผ Experience

Paluck Arora has held positions as an Assistant Professor at MMDU University, Mullana, and Thapar Institute of Engineering & Technology, Patiala. With over five years of teaching experience, she has contributed to shaping future engineers while actively engaging in research, resulting in published work in SCIE-indexed journals.

๐Ÿ” Research Interest

Her primary research areas include medical image registration, image processing, and deep learning. She focuses on advancing algorithmic approaches for accurate and efficient medical image alignment, leveraging deep learning techniques to enhance diagnostic accuracy and treatment planning in healthcare.

๐Ÿ† Awards

Paluck Arora has achieved recognition for her contributions in the fields of image registration and computer science. Her continuous dedication to research innovation has led to multiple recognitions and accolades within the academic community.

๐Ÿ“š Publications Top Notes

P. Arora, R. Mehta, and R. Ahuja (2023). “An adaptive medical image registration using hybridization of teaching-learning-based optimization with affine and speeded-up robust features with projective transformation.” Cluster Computing, Springer Nature, pp: 1-21. SCIE Indexed, Impact Factor: 3.6
Cited by: 15

P. Arora, R. Mehta, and R. Ahuja (2024). “An integration of meta-heuristic approach utilizing kernel principal component analysis for multimodal medical image registration.” Cluster Computing, Springer Nature, pp: 1-21. SCIE Indexed, Impact Factor: 3.6
Cited by: 10

P. Arora, R. Mehta, and R. Ahuja (2024). “Deep-UEO: Empowering Medical Image Registration with Hybrid Strategy based on Deep Learning and United Equilibrium Optimizer.” Computers and Electrical Engineering, Elsevier SCIE Indexed, Impact Factor: 4.0
Cited by: 8

P. Arora, R. Mehta, and R. Ahuja (2024). “A Teaching-Learning based Optimization driven Approach for Robust Deformable Medical Image Registration leveraging Unsupervised Learning.” Concurrency and Computation: Practice and Experience, Wiley [SCIE Indexed, Impact Factor: 2.0] (Under Review)
Cited by: Pending

P. Arora, R. Mehta, and R. Ahuja (2024). “Deep VGG19-SURF Feature Extraction with Projective Transformation for Anatomical and Functional Medical Image Registration.” Soft Computing, Springer [SCIE Indexed, Impact Factor: 3.1] (Under Review)
Cited by: Pending

Conclusion

Paluck Arora is a strong candidate for the Best Research Award due to her significant contributions to the field of medical image registration and her application of advanced algorithms and deep learning techniques. With room for further development in industry collaborations and real-world application, she demonstrates great potential to continue making meaningful strides in her field