Vinston Raja R

@srmist.edu.in

Assistant Professor, Engineering & Technology
SRM Institute of Science and Technology

RESEARCH, TEACHING, or OTHER INTERESTS

Computer Engineering, Artificial Intelligence, Computer Science Applications, Multidisciplinary
38

Scopus Publications

Scopus Publications

  • Automated artificial intelligent approach for enhancing bone cancer detection through hybrid feature extraction and adaptive elman recurrent neural network
    Vinston Raja R, Kaliraj V, M. Mangaleswaran, N.S. Usha, R. Dharaniya
    Radiation Physics and Chemistry, 2026
  • Reframing Value Through Narrative Strategy for Economic Transformation in Entrepreneurial Ecosystems: Narrative-Driven Economic Change
    M. P. Rajakumar, R. Vinston Raja, M. Balasubramani, B. Nagalakshmi, J. Tharun, M. Robinson Joel
    Co Constructing Economic Transformation Through Enterprise Narrative and Systemic Design, 2026
    Reframing Value Narrative Strategy as a Catalyst for Economic Transformation in Entrepreneurial Ecosystems for the upcoming book Co-Constructing Economic Transformation Through Enterprise Narrative and Systemic Design examines how strategic storytelling redefines and operationalizes value within entrepreneurial contexts. Drawing on narrative theory, institutional logics, and systems thinking, the authors develop a conceptual model showing how narratives frame opportunities, mobilize resources, and align stakeholder priorities. Empirical case studies illustrate how targeted narrative interventions in policy campaigns and grassroots initiatives can disrupt entrenched growth paradigms and foster inclusive, sustainable innovation. The chapter outlines hybrid methods for assessing narrative impact using computational discourse analysis and participatory evaluation and identifies future research avenues on cross-cultural storytelling, crisis-driven narratives, and narrative infrastructure design. Recommendations for embedding narrative capacity within governance structures.
  • Emotion Recognition in Text and Images Using Deep Learning
    R. Vinston Raja, Sakthitharan Subramanian, Manoj Kushwaha, V. Kaliraj, Dharaniya, N. Shree Makesh
    Communications in Computer and Information Science, 2026
  • Sea Creature Classification Using Convolutional Neural Networks
    D. Poornima, R. Vinston Raja, M. Krishnaraj, M. Anuradha, Mercy Paul Selvan, V. Kaliraj
    Communications in Computer and Information Science, 2026
  • Bridging Text and Video Generation: A Survey
    G. Maragatham, Nilay Kumar, Priyansh Bhandari, Vinston Raja, Robinson Joel M
    Fusion of Multimodal Generative AI and Blockchain Technology in Digital Media, 2025
    While text-to-image synthesis extends to dynamic visual contents, text-to-video synthesis creates coherent videos from the provided text-based description. A technique of this nature can make a revolutionary impact on industries such as education, accessibility, marketing, and entertainment. However, the T2V technique comes with a set of challenges that pertain to temporal coherence, exact alignment between text and video, high computational demands, and limited high-quality datasets. This survey summarizes the latest developments in T2V technologies, beginning with early adaptations of text-to-image models and progressing to recent studies involving large-scale pre-training integrated with diffusion methods. The chapter then provides a comprehensive comparison of these models based on their performance metrics against benchmarking datasets, examining the strengths and limitations of each, along with practical applications.
  • Metrics and techniques for evaluating machine learning models and optimization algorithms
    R. Vinston Raja, J. Jayashankari, S. Sheela, S. Jancy Sickory Daisy, G. G. Gokilam, M. Robinson Joel
    AI Model Design and Data Management for Disease Prediction, 2025
    Assessing optimization algorithms and machine learning models is crucial to ensure their reliability, scalability, and effectiveness across applications. This review provides a comprehensive analysis of evaluation metrics and methods. For supervised learning, classification metrics like accuracy, precision, recall, and regression metrics like MSE, RMSE, and R2 are emphasized. Unsupervised learning is assessed using metrics such as silhouette score, Davies-Bouldin index, and reconstruction error. Techniques like stratified k-fold, k-fold cross-validation, and leave-one-out validation ensure robust evaluations. Optimization algorithms are evaluated using metrics like convergence speed, solution accuracy, noise resilience, scalability, and computational efficiency, with advanced tools like sensitivity analysis, ablation studies, and comparative testing enhancing assessments. Visualization tools, including heatmaps, Pareto fronts, and convergence charts, aid in understanding model behavior.
  • Securing healthcare data: A federated learning framework with hybrid encryption in cluster environments
    C Srivenkateswaran, A Jaya Mabel Rani, R Senthil Kumaran, R Vinston Raja
    Technology and Health Care, 2025
    The study's novel contribution is the development and evaluation of a hybrid encryption scheme combining Elliptic Curve Cryptography (ECC) with the Serpent symmetric encryption algorithm, demonstrating enhanced security and performance for safeguarding healthcare data in cluster environments while ensuring scalability, interoperability, and compliance with HIPAA regulations. The primary objectives include assessing the suitability of the ECC-Serpent hybrid encryption for safeguarding healthcare data, ensuring the scalability and interoperability of this encryption solution with existing healthcare systems, and implementing secure communication channels within cluster environments. The combination of Elliptic Curve Cryptography (ECC) and the Serpent algorithm leverages ECC's efficient key management and Serpent's robust symmetric encryption to provide enhanced security and performance, ensuring scalable and resilient data protection in cluster environments. This hybrid approach addresses both key distribution efficiency and high encryption strength, which are critical for securing sensitive healthcare data. This hybrid approach addresses key distribution efficiency and high encryption strength, which are critical for securing sensitive healthcare data. The study employs a hierarchical key management strategy, utilizing ECC for secure key exchange and distribution, paired with regular key rotation and storage practices to maintain compliance with HIPAA regulations and ensure the ongoing protection of sensitive healthcare data. Overall, the research underscores the critical need for healthcare organizations to adhere to HIPAA regulations and implement robust encryption measures to protect patient privacy and secure sensitive medical information. The study concludes that the ECC-Serpent hybrid encryption scheme is a viable and effective solution for enhancing healthcare data security in cluster environments, ensuring both data integrity and regulatory compliance. The implemented Python framework yielded promising results, the key finding is that the ECC-Serpent hybrid encryption scheme is a viable and effective solution for enhancing healthcare data security in cluster environments, achieving an accuracy rate of 97.5% in safeguarding patient data.
  • AI-driven innovation powering economic growth in Industry 4.0
    Vinston Raja R., P. Jose, Ashwin Prabhu G., Joel Jacson, R. Devi, Robinson Joel M.
    Driving Socio Economic Growth with AI and Blockchain, 2025
    The Fourth Industrial Revolution, or Industry 4.0, is transforming economies through advanced technologies like AI, IoT, blockchain, and big data. AI-driven innovation enhances productivity, automates tasks, and personalizes services, revolutionizing sectors like healthcare, manufacturing, retail, and finance. Applications such as predictive maintenance, personalized customer experiences, and AI-based diagnostics boost efficiency and drive economic growth. Despite its benefits, AI adoption poses challenges like ethical concerns, algorithmic bias, data privacy, and workforce displacement. Transparent AI systems, regulatory frameworks, and reskilling initiatives are vital to address these issues. Public-private partnerships and inclusive policies can promote equitable economic growth. AI also supports sustainability, optimizing resources and advancing renewable energy and environmental conservation. This chapter emphasizes balancing innovation with ethics and inclusivity to harness AI's full potential for a resilient and sustainable economic future.
  • Precision Forecasting of Stock Prices: Leveraging XGBoost and Technical Indicator for Advanced Predictive Modeling
    Yuvaraj. S, Chenni Kumaran. J, Vinston Raja. R
    International Conference on Intelligent Systems and Computational Networks Iciscn 2025, 2025
    The investigation aims to evaluate the performance of machine learning techniques, particularly the XGBoost regression method, for stock price prediction with the help of technical indicators. The research targets the adjusted closing price to reduce the autocorrelation problem in time series. The Five Days and Ten Days Exponential Moving Averages (EMA_5 and EMA_10) are involved in refining feature selection. The performance of the model was evaluated using different error metrics, namely, Mean Absolute Error (MAE), Mean Squared Error (MSE), Root Mean Squared Error (RMSE), and Coefficient of Determination (R2). The results indicate that the XGBoost model, combined with EMA_5 and EMA_10, achieves high predictive performance, obtaining an r2 value of 0.98. It implies that incorporating short-term EMAs into advanced machine learning techniques drastically improves stock price forecasting.
  • Stock Price Prediction Using Gradient Boosting Machine with Technical Indicators
    Yuvaraj. S, Chenni Kumaran. J, Vinston Raja. R, Jayanthi. G
    Proceedings of the 3rd International Conference on Intelligent and Innovative Technologies in Computing Electrical and Electronics Iitcee 2025, 2025
    This research endeavors to design a predictive model to forecast stock prices using a Gradient Boosting Machine (GBM) regressor, specifically emphasizing the adjusted closing price to mitigate the autocorrelation issues intrinsic to time series data. The investigation encompasses a 12-month duration of historical stock data, integrating two technical indicators, namely Exponential Moving Averages (EMA_5 and EMA_10), to augment predictive precision. Gradient Boosting, recognized for its proficiency in managing intricate and non-linear data patterns, was employed to forecast forthcoming stock prices. Critical performance indicators, including Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), and the Coefficient of Determination (R2), played a role in evaluating model accuracy, attaining an R2 score of 0.99, thereby signifying an almost perfect correlation between actual and predicted prices. Beyond numerical assessments, visual examinations through scatter plots, residual plots, and prediction error distribution further elucidated the model’s efficiency. The findings reveal that the amalgamation of Gradient Boosting with Technical Indicators such as EMA_5 and EMA_10, coupled with an emphasis on the adjusted closing price, proves exceptionally effective for stock price forecasting. This methodology achieved an accuracy rate nearing 99%, illustrating its substantial promise for stock market prediction and its proficiency in alleviating autocorrelation challenges within time series datasets.
  • Federated Deep Learning for Real-Time Pneumonia Detection in Chest X-Rays Using Edge Devices and Privacy-Preserving Optimization
    S. Saraswathi, G.Soniya Priyatharsini, Vinston Raja R, N. Senthamilarasi, K. Prema, Jeena R
    2025 12th International Conference on Reliability Infocom Technologies and Optimization Trends and Future Directions Icrito 2025, 2025
  • Leveraging AI to Promote Sustainable Energy Distribution
    Raja R. Vinston, K. Fouzia Sulthana, Subha Priyadharshini A, R. Kotteeswaran, G. Manikandan, Joel M. Robinson
    Achieving Sustainability in Multi Industry Settings with AI, 2025
  • Creating a Secure Data Sharing Network for Disease Identification Using CT Images and RHC-Based Encryption Scheme
    Vinston Raja R, Jose P, Rajakumar M P, R. Balamurugan, M. S. Malchijah Raj, M. Robinson Joel
    Icoicc 2025 3rd International Conference on Intelligent and Cloud Computing, 2025
  • Next-Generation Clinical Health Leveraging Intelligent Systems and IoT for Better Care
    R. Vinston Raja, M. Robinson Joel, V. Vasantha Kumar, B. NagaLakshmi, Sangeetha Krishnan, K. Ishwarya
    Intelligent Systems and Iot Applications in Clinical Health, 2025
  • Using the Different Maps to Design and Implement a Chaotic Cryptographic Scheme for Image Encryption
    Vinston Raja R, Rajakumar M P, M. Balasubramani, M. S. Malchijah Raj, Ishwarya Kothandaraman, M. Robinson Joel
    2025 6th International Conference on Data Intelligence and Cognitive Informatics Icdici 2025, 2025
  • YOLOv8-Powered Helmet Detection for Intelligent Roadside Safety Monitoring
    Vinston Raja R, M.Balasubramani, Rajakumar M P, M. S. Malchijah Raj, Devi R, M. Robinson Joel
    Proceedings of International Conference on Sustainable Communication Networks and Application Icscn 2025, 2025
  • Reinforcement Learning for Autonomous Systems
    Vinston Raja R, C. Mary Subitha Jenefer, S. Rukmani Devi, Tatiraju.V. Rajanikanth, J. Bhavana, K Karthik
    Proceedings of 2025 10th International Conference on Science Technology Engineering and Mathematics Iconstem 2025, 2025
  • Using IoT and Machine Learning Together for Agricultural Predictive Maintenance
    G. Bhupal Raj, Deepak Kholiya, Raja R Vinston, Dler Salih Hasan, Navdeep Singh, Atish Mane, Liviu Rosca
    Recent Trends in Engineering and Science for Resource Optimization and Sustainable Development, 2025
  • VULNERABILITY DETECTION IN SOFTWARE APPLICATIONS USING STATIC CODE ANALYSIS
    Journal of Theoretical and Applied Information Technology, 2024
  • Optimizing Routing Paths in Mobile Wireless Sensor Networks: A Sub-Flow Adaptive Multipath Approach for Energy Efficiency and Delay Sensitivity
    R. Vinston Raja, Shavej Ali Siddiqui, Avilasha BG, L. Mohana Kannan
    8th International Conference on I Smac Iot in Social Mobile Analytics and Cloud I Smac 2024 Proceedings, 2024
  • Automatic Identification of Hurricane Damage Using a Transfer Learning Approach with Satellite Images
    International Journal of Intelligent Systems and Applications in Engineering, 2024
  • Machine Learning Techniques for Accurate Staging of Lung Carcinoma from Low-Radiation CT Scans
    Vinston Raja R, Surendran R, Ramya G Franklin, K S Balamurugan, R Gnanaselvam
    Icetas 2024 9th IEEE International Conference on Engineering Technologies and Applied Sciences, 2024
  • Neural Networks for Fault diagnosis in Electrical Machine
    R. Vinston Raja, J. Raja, Sreenivasulu Gogula, Atul Katiyar, T. Thilagam, V. S. Bhagavan
    2024 Asian Conference on Intelligent Technologies Acoit 2024, 2024
  • INNOVATIVE TIME SERIES-BASED ECG FEATURE EXTRACTION FOR HEART DISEASE RISK ASSESSMENT
    Journal of Theoretical and Applied Information Technology, 2023
  • COMPARATIVE EVALUATION OF CARDIOVASCULAR DISEASE USING MLR AND RF ALGORITHM WITH SEMANTIC EQUIVALENCE
    Journal of Theoretical and Applied Information Technology, 2023
  • Study of ECG Analysis based Cardiac Disease Prediction using Deep Learning Techniques
    International Journal of Intelligent Systems and Applications in Engineering, 2023
  • Financial derivative features based integrated potential fishing zone (IPFZ) Future forecast
    R. Vinston Raja, K. Ashok Kumar
    Journal of Intelligent and Fuzzy Systems, 2023
  • Identification of Underwater Species Using Condition-Based Ensemble Supervised Learning Classification
    International Journal of Intelligent Systems and Applications in Engineering, 2023
  • ANALYTIC APPROACH OF PREDICTING EMPLOYEE ATTRITION USING DATA SCIENCE TECHNIQUES
    Journal of Theoretical and Applied Information Technology, 2023
  • Privacy Preserving and Time Series Analysis of Medical Dataset using Deep Feature Selection
    J. Dafni Rose, Vinston Raja R, D. Lakshmi, S. Saranya, T. A. Mohanaprakash
    International Journal on Recent and Innovation Trends in Computing and Communication, 2023
  • Condition based Ensemble Deep Learning and Machine Learning Classification Technique for Integrated Potential Fishing Zone Future Forecasting
    R. Vinston Raja, K. Ashok Kumar, V. Gokula Krishnan
    International Journal on Recent and Innovation Trends in Computing and Communication, 2023
  • Study on the Compression Property of Formation Space for Theoretical Support
    Rajesh Kanna. R, L. Sharmila, K. Senthil, Umadevi G, R. Vinston Raja
    2023 Intelligent Computing and Control for Engineering and Business Systems Iccebs 2023, 2023
  • An AI Powered Threat Detector for Banking Sector Using Intelligent Surveillance Cameras
    A. Deepak Kumar, Vinston Raja R, Mithun P, K. S. Arikumar, Arthiya A P, Bujitha RA
    Proceedings of the 2nd IEEE International Conference on Advances in Computing Communication and Applied Informatics Accai 2023, 2023
  • SIMILARITY-BASED GENE DUPLICATION PREDICTION IN PROTEIN-PROTEIN INTERACTION USING DEEP ARTIFICIAL ECOSYSTEM NETWORK
    Journal of Theoretical and Applied Information Technology, 2022
  • Fisher Scoring with Condition-Based Ensemble Supervised Learning Classification Technique for Prediction in PFZ
    R. Vinston Raja, K. Ashok Kumar
    Journal of Uncertain Systems, 2022
  • Retraction Notice: Collision Averting Approach in Deep Maritime Boats using Prophecy of Impact Direction (Proceedings of the 5th International Conference on Trends in Electronics and Informatics, ICOEI (2021) DOI: 10.1109/ICOEI51242.2021.9453084)
    R.Vinston Raja, K.Ashok Kumar
    Proceedings of the 5th International Conference on Trends in Electronics and Informatics Icoei 2021, 2021
  • Collision Averting Approach in Deep Maritime Boats using Prophecy of Impact Direction
    R.Vinston Raja, K.Ashok Kumar
    Proceedings of the 5th International Conference on Trends in Electronics and Informatics Icoei 2021, 2021
  • Agricultural Tractor Hydraulic Lift Arm Assembly Design for Durability and Correlation with Physical Test
    Vinod Verma, V Saravanan, Dinesh Redkar, Arun Mahajan, R Raja, Pankaj Pawar, Ashok Kumar
    SAE Technical Papers, 2016