Alok Sengar | Deep Learning for Computer Vision | Excellence in Research Award

Excellence in Research Award

Alok Sengar — Vivekananda Global University

Research Profile
Affiliation Vivekananda Global University
Country India
Scopus ID 57465746700
Documents 22
Citations 80
h-index 5
Subject Area Deep Learning for Computer Vision
Event Global Tech Excellence Awards

The Excellence in Research Award recognizes scholarly achievement, scientific productivity, and research contributions within emerging technological domains. Alok Sengar, affiliated with Vivekananda Global University, has demonstrated active engagement in the field of Deep Learning for Computer Vision through research publications, citation impact, and interdisciplinary technological studies.[1] The evaluation of academic output, citation metrics, and subject specialization indicates continued participation in applied computational research and innovation-oriented investigations.[2]

Abstract

This article presents an academic overview of Alok Sengar and the relevance of his research profile to the Excellence in Research Award presented through the Global Tech Excellence Awards platform. The profile demonstrates involvement in Deep Learning for Computer Vision, including research dissemination, citation accumulation, and interdisciplinary computational applications.[1] The analysis further considers bibliometric indicators such as publication count, citation impact, and h-index as measurable indicators of scholarly engagement within contemporary technology-oriented research ecosystems.

Keywords

  • Deep Learning for Computer Vision
  • Artificial Intelligence
  • Machine Learning
  • Research Excellence
  • Scholarly Impact
  • Bibliometric Analysis
  • Academic Recognition
  • Computer Vision Applications

Introduction

The rapid advancement of artificial intelligence and computer vision technologies has expanded the importance of interdisciplinary computational research across scientific and industrial domains. Deep learning methodologies have become increasingly relevant in image processing, automated recognition systems, pattern analysis, and intelligent decision-support systems. Researchers contributing to these areas are frequently evaluated through publication productivity, citation metrics, and scientific visibility within recognized academic indexing platforms.

Within this context, Alok Sengar’s research profile reflects participation in technology-oriented academic investigations associated with computer vision and machine learning applications. Recognition through research awards is commonly associated with measurable scholarly activity, peer-reviewed dissemination, and contribution to evolving computational methodologies.[2]

Research Profile

Alok Sengar is affiliated with Vivekananda Global University in India and has established a documented scholarly profile indexed within Scopus databases.[1] The available bibliometric indicators report 22 indexed documents, 80 citations, and an h-index of 5, reflecting active engagement in peer-reviewed research dissemination and citation-based scholarly interaction.

The research specialization identified within the profile centers on Deep Learning for Computer Vision, a domain involving neural network architectures, feature extraction methodologies, image classification systems, and intelligent automation frameworks. These research areas contribute to both theoretical and applied developments within artificial intelligence ecosystems.

Research Contributions

The documented contributions associated with Alok Sengar indicate involvement in computational intelligence research and applied machine learning studies. Research activities within Deep Learning for Computer Vision commonly address algorithmic optimization, object recognition systems, image segmentation, and data-driven visual analytics.

  • Development and evaluation of deep learning frameworks for image analysis.
  • Investigation of neural network methodologies relevant to computer vision systems.
  • Participation in interdisciplinary artificial intelligence applications.
  • Contribution to peer-reviewed scientific publications and indexed conference proceedings.
  • Support for emerging computational methodologies involving automated visual recognition technologies.

Such contributions align with broader global research trends involving intelligent automation, pattern recognition, predictive analytics, and AI-assisted decision systems.

Publications

The publication profile associated with the researcher demonstrates ongoing scholarly dissemination within indexed academic environments. Peer-reviewed publications contribute significantly to scientific visibility and institutional research development. The Scopus-indexed profile includes articles related to computational methodologies and artificial intelligence applications.[1]

  • Research studies involving machine learning and computer vision algorithms.
  • Conference and journal publications addressing deep learning methodologies.
  • Interdisciplinary research involving intelligent systems and visual analytics.
  • Collaborative publications contributing to applied artificial intelligence research.

Representative DOI-linked research outputs and scholarly indexing records contribute to the measurable visibility of the profile within international academic databases.

Research Impact

Research impact assessment frequently incorporates quantitative indicators such as citation counts, publication volume, and h-index measurements. The available metrics associated with Alok Sengar indicate scholarly visibility within indexed research environments. Citation accumulation reflects academic engagement and indicates that the published research has contributed to ongoing scientific discussions within relevant subject domains.

The integration of Deep Learning for Computer Vision into practical and research-oriented applications further enhances the interdisciplinary significance of the work. Contemporary computational research increasingly relies on scalable neural architectures, automated recognition systems, and intelligent analytical frameworks.

Award Suitability

The Excellence in Research Award emphasizes scholarly productivity, measurable academic impact, innovation potential, and contribution to contemporary technological advancement. Based on available bibliometric indicators and research specialization, the profile of Alok Sengar demonstrates alignment with the objectives commonly associated with technology-oriented research recognition programs.[2]

Areas supporting award suitability include:

  • Indexed publication record within recognized academic databases.
  • Research activity within emerging artificial intelligence domains.
  • Demonstrated citation-based scholarly visibility.
  • Participation in computational and interdisciplinary innovation research.
  • Alignment with global technological research priorities involving intelligent systems.

Conclusion

The academic profile of Alok Sengar reflects measurable scholarly engagement within the field of Deep Learning for Computer Vision. The documented publication activity, citation impact, and subject specialization support recognition within technology-focused research evaluation frameworks.[1] The profile demonstrates continued participation in artificial intelligence research ecosystems and aligns with the broader objectives of the Global Tech Excellence Awards initiative in recognizing emerging scientific and technological contributions.[2]

References

  1. Elsevier. (n.d.). Scopus author details: Alok Sengar, Author ID 57465746700. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=57465746700
  2. Global Tech Excellence Awards. (n.d.). Research recognition and academic excellence initiatives.
    https://globaltechexcellence.com/

Ibrahim Omara | Biometrics and Security | Research Excellence Award

Assoc. Prof. Dr. Ibrahim Omara | Biometrics and Security | Research Excellence Award

Associated professor | Menoufia University  | Egypt 

Assoc. Prof. Dr. Ibrahim Omara is a dedicated researcher specializing in Cybersecurity, Artificial Intelligence, Machine Learning, Computer Vision, Multi-Biometrics, and Image Classification, with a growing influence across these interconnected domains. His scholarly contributions include 25 research documents, which have collectively earned 413 citations, supported by an h-index of 11 and i10-index of 12, highlighting both productivity and consistent scholarly impact. His work is highly recognized within the biometric research community, particularly for advancing ear recognition, multimodal biometric fusion, and deep feature learning, where several of his publications have become widely cited references.A significant portion of his contributions lies in pioneering geometric feature extraction, Mahalanobis distance learning, pairwise SVM classification, and distance-metric-driven multimodal authentication, including models that integrate deep CNNs, Vision Transformers, and feature-level fusion. His article A novel geometric feature extraction method for ear recognition stands among his most influential works, shaping subsequent research directions within biometric pattern recognition. In addition to ear biometrics, he has also contributed to remote sensing, SAR target classification, hyperspectral imagery transmission, and deep reinforcement learning, reflecting a multidisciplinary research approach.He has collaborated extensively with leading international researchers, including experts from Harbin Institute of Technology, Dublin City University, Nanyang Technological University, Benha University, Menoufia University, and Prince Sultan University. These collaborations have strengthened cross-institutional innovation in AI-driven security systems, robust biometrics, and intelligent vision technologies. His research outputs also include recent advancements in multi-biometric models, finger-knuckle recognition, and high-resolution scene classification, demonstrating continuous engagement with state-of-the-art machine intelligence.The social impact of his work is reflected in applications that enhance secure identification, digital authentication, and automated visual intelligence, contributing to safer digital ecosystems and improved trust in AI-enabled technologies. With a strong publication record and sustained research momentum, he remains committed to advancing next-generation intelligent security systems and expanding the frontiers of biometric artificial intelligence.

Profiles:  Googlescholar | Scopus | ORCID | ResearchGate

Featured Publications

1. Omara, I., Li, F., Zhang, H., & Zuo, W. (2016). A novel geometric feature extraction method for ear recognition. Expert Systems with Applications, 65, 127–135. Cited By : 100

2.Omara, I., Wu, X., Zhang, H., Du, Y., & Zuo, W. (2018). Learning pairwise SVM on hierarchical deep features for ear recognition. IET Biometrics, 7(6), 557–566. Cited By : 43

3.Omara, I., Hagag, A., Chaib, S., Ma, G., Abd El-Samie, F. E., & Song, E. (2020). A hybrid model combining learning distance metric and DAG support vector machine for multimodal biometric recognition. IEEE Access.
Cited By : 36

4.Omara, I., Wu, X., Zhang, H., Du, Y., & Zuo, W. (2017). Learning pairwise SVM on deep features for ear recognition. In Proceedings of the 2017 IEEE/ACIS 16th International Conference on Computer and Information. Cited By : 36

5.Omara, I., Hagag, A., Ma, G., Abd El-Samie, F. E., & Song, E. (2021). A novel approach for ear recognition: Learning Mahalanobis distance features from deep CNNs. Machine Vision and Applications, 32(1), 38. Cited By : 35

His contributions in AI-driven biometrics and intelligent security models provide industry with scalable, high-accuracy authentication solutions. This research accelerates technological innovation, enhances digital infrastructure reliability, and supports global transitions toward secure, intelligent, and automated systems.