VUNNAVA DINESH BABU

@chec.ac.in

HOD CSE
CHEBROLU ENGINEERING COLLEGE

EDUCATION

M.Tech(

RESEARCH INTERESTS

Artificial intelligence
depp learning
machine learning
41

Scopus Publications

133

Scholar Citations

6

Scholar h-index

4

Scholar i10-index

Scopus Publications

  • Stock market price prediction with efficient generative artificial intelligence with predictor network
    Adusumalli Balaji, Siddabathuni Suresh Babu, Hari Krishna Deevi, Vunnava Dinesh Babu, Vunnam Asha Latha, Popuri Srinivasarao
    Knowledge and Information Systems, 2026
  • Advanced Android Malware Detection with Self-supervised Learning and Multi-model Classification
    Venkata Subbaiah Desanamukula, P. Sujatha, Gottala Parameswara Kumar, Vunnava Dinesh Babu, Kusuma Polanki, A. Lakshmana Rao
    Lecture Notes in Networks and Systems, 2026
  • A Climate-Aware Transformer Framework for Crop Yield Prediction using Satellite Imagery & Weather Data
    Dara Vikram, Nagagopiraju Vullam, Naga Charan Nandigama, Vunnava Dinesh Babu, Jayadeep Pakala, Naladi Ram Babu
    Proceedings of 4th International Conference on Electronics and Renewable Systems Icears 2026, 2026
  • A Multi-Label Fake News Detection Framework Using Undersampling and Transformer-Based Deep Learning Models
    Pratyush Ranjan Mohapatra, Jayadeep Pakala, Nagagopiraju Vullam, Vunnava Dinesh Babu, Naladi Ram Babu, P. Chandra Sekhar Reddy
    Proceedings of 5th International Conference on Communication Computing and Electronics Systems Iccces 2026, 2026
    The rapid spread of misleading and fabricated information across social media platforms has intensified the need for robust fake news detection systems. Traditional binary classification methods are insufficient for real-world scenarios where news items often receive multiple credibility judgments. To address this challenge, this paper proposes a multi-label fake news detection framework that integrates undersampling strategies with advanced transformer-based deep learning models. The dataset used in this study consists of tweets annotated with multiple credibility ratings, enabling multi-label classification through annotator-based label vectors. Two undersampling techniques—One-vs-Rest (OVR) and MultiLabel Random Undersampling (MLRU)—are employed to mitigate the effects of label imbalance and improve detection of minority credibility classes. Classical machine-learning algorithms, deep learning architectures, and transformer models including BERT and RoBERTa are evaluated on both undersampled datasets. Experimental results demonstrate that transformer models consistently outperform traditional approaches, with RoBERTa achieving the highest performance across all evaluation metrics. Furthermore, the application of MLRU significantly improves class-wise recall in minority categories. These findings highlight the effectiveness of combining undersampling with transformer architectures for multi-label fake news identification in highly imbalanced realworld settings.
  • Integrated quantum-classical hybrid architectures for robust lung lesion segmentation in volumetric CT video data samples
    Sai Babu Veesam, Lalitha Kumari Pappala, Aravapalli Rama Satish, Sravan Kumar Chirumamilla, Vunnava Dinesh Babu, Shonak Bansal, Krishna Prakash, Mohamad A. Alawad, Mohammad Tariqul Islam
    Engineering Science and Technology an International Journal, 2026
    Segmentation of lung lesions in volumetric CT data is crucial for the clinical aspects of diagnosis, therapy planning, and monitoring disease progression. Currently, deep learning applications are unable to model spatiotemporal coherency alongside anatomical consistency and uncertainty-aware refinement across sequential slices. In this study, we propose a hybrid quantum–classical framework that would accommodate multiple innovative modules. The architecture features a Quantum Latent Entanglement Consistency validator to establish spatiotemporal coherence across slices by maximizing von Neumann entropy. A Quantum-Classical Interventional Gradient Alignment ensures the harmony of gradients between classical CNN encoders and quantum discriminators. Further, the Temporal Quantum Attention for Boundary Stabilization captures the temporal context in the boundary refinement using controlled quantum gates. Alongside these, a Quantum-Enhanced Structural Similarity Feedback mechanism is proposed that exploits anatomical priors for retrofitting spatial lesion structures, as well as a Hybrid Quantum Adversarial Ensemble Validation, which provides confidence-aware validity through disagreement modeling. Collection and experimental evaluations over LIDC IDRI, NSCLC-Radiomics, and MosMedData datasets depict that the entirety of the systems significantly increases the Dice Similarity Coefficient by 5–7%, holds Hausdorff Distance lower at 10–12%, narrows down the over-segmentation errors by 8–10%, while reducing overall false positives near lung boundaries by 15% or even less. This represents a significant advancement toward fusing quantum learning with clinical-grade imaging pipelines, demonstrating clear improvements in segmentation stability, precision, and trustworthiness in real-world settings.
  • Sentiment classification for telugu using transformed based approaches on a multi-domain dataset
    Kannaiah Chattu, K. Adi Narayana Reddy, Sai babu veesam, Pardha Saradhi Chirumamilla, Vunnava Dinesh Babu, Krishna Prakash, Shonak Bansal, Mohammad Rashed Iqbal Faruque, K. S. Al-mugren
    Scientific Reports, 2025
    Sentiment analysis is an essential component of Natural Language Processing (NLP) in resource-abundant languages such as English. Nevertheless, poor-resource languages such as Telugu have experienced limited efforts owing to multiple considerations, such as a scarcity of corpora for training machine learning models and an absence of gold standard datasets for evaluation. The current surge of transformed based models in NLP enables the attainment of exceptional performance in many different tasks. Nevertheless, researchers are increasingly interested in exploring the potential of transformed based models that have been pre-trained in several languages for various natural language processing applications, particularly for languages with limited resources. This research examines the efficacy of four pre-trained transformed based models, specifically IndicBERT, RoBERTa, DeBERTa, and XLM-RoBERTa, for sentence-level sentiment analysis in the Telugu language. Evaluated the performance of all four models using our dataset, "Sentikanna," which consists of numerous domain datasets for the Telugu language. We compared the performance of these models with three different datasets and observed a promising outcome. XLM-RoBERTa achieves a good accuracy of 79.42% for a binary sentiment classification. This work can be considered a reliable standard for sentiment analysis in the Telugu language.
  • A Novel Multistage Approach for Medicinal Plant Classification with Deep Learning Techniques
    Narayana Rao K, Srinivas Kalime, Sujatha P, Dinesh Babu Vunnava, Sushma S, Tulasi Krishna Sajja
    International Research Journal of Multidisciplinary Technovation, 2025
    Accurate classification of medicinal plant images into high-level categories and specific sub-groups is essential for various applications, including agriculture, plant research, and conservation. This paper proposes a multi-stage deep learning approach to enhance the precision of medicinal plant image classification. In the first stage, known as Broad Classification, CNN and pre-trained models such as VGG16, ResNet50 and EfficientNetB0 are utilized to categorize images into high-level groups, including "Medicinal Plants," "Fruit-Related Plants," and "Flower-Related Plants." The model is fine-tuned using data augmentation techniques to ensure robust learning and generalization. In the second stage, referred to as Detailed Classification, separate models are trained for each high-level group to classify images into specific sub-groups within that category. The architecture of these models is adjusted to accommodate the unique number of classes in each sub-group. Each model undergoes training with optimized hyperparameters and is evaluated based on precision, recall, F1-score, and accuracy. The proposed multi-stage method demonstrates the ability to handle both broad and fine-grained medicinal plant classifications effectively, showcasing an improvement in classification performance over traditional single-stage models. This approach highlights the potential for deep learning to contribute to more precise and practical medicinal plant image classification solutions.
  • Modeling and forecasting of TEC using subspace-based SSA-LRF-ANN model
    J.R.K. Kumar Dabbakuti, Mallika Yarrakula, Dinesh Babu Vunnava, Gopi Krishna Popuri
    Geodesy and Geodynamics, 2025
    Subspace-based signal processing methods are fundamentally pre-trained Artificial Neural Networks (ANN) that provide the basic structure for numerous computer vision applications and explore the most promising Earth Observation Applications (EOA). This paper examines the fundamentals of subspace-based methods and explores the most promising algorithm for forecasting ionospheric signal delays, which was designed explicitly regarding signal and noise subspaces. The learning efficiency derived from the subspace-based components of Singular Spectrum Analysis (SSA) significantly influences the implementation of Linear Recurrent Formula (LRF) and ANN models. The proposed study introduces a novel enhancement to LRF and ANN methodologies for Global Positioning System (GPS)– Total Electron Content (TEC) forecasts based on SSA. The GPS-derived TEC at Bangalore (13.02°N and 77.57°E) location grid during sunspot cycle 25 (2020) is considered for analysis. The SSA–LRF–ANN model demonstrates superior accuracy compared with the SSA–LRF, Autoregressive Moving Average (ARMA), and Holt–Winter (HW) models, achieving a correlation of 0.99, a Mean Absolute Error (MAE) of 0.55 TECU, a Mean Absolute Percentage Error (MAPE) of 7.06%, and a Root Mean Square Error (RMSE) of 0.75 TECU. Furthermore, the results and discussions section presents numerical illustrations that showcase the practical implementation of the SSA–LRF–ANN and its application.
  • Diabetes Prediction using Machine Learning and Deep Neural Models with Hybrid Resampling Techniques
    G.Kumari, UdayaLaxmi Aditya Teki, Budharaju VenkataVarma, Vunnava Dinesh Babu, Rangam Suresh, Naladi Ram Babu
    Proceedings of 5th International Conference on Soft Computing for Security Applications Icscsa 2025, 2025
    Accurate diabetes prediction plays a vital role in early diagnosis and intervention, particularly in the context of growing global health concerns. However, medical datasets often suffer from class imbalance, where diabetic cases are significantly outnumbered by non-diabetic ones, limiting the effectiveness of traditional predictive models. This paper proposes a hybrid framework that integrates advanced resampling strategies with both machine learning and deep neural models to improve the detection of diabetes. The study explores three sampling methods SMOTE, ADASYN, and Borderline-SMOTE to address imbalance, and evaluates the performance of diverse classifiers including XGBoost, LightGBM, Naive Bayes, Random Forest, Gradient Boosting, 1D-CNN, and LSTM. The models were tested on original and balanced datasets, and assessed using accuracy, precision, recall, and F1-score. Results show that XGBoost consistently achieves the best predictive performance, attaining an F1-score of 85.0% and accuracy of 96.4% on the SMOTE-balanced dataset. Deep learning models, particularly 1D-CNN and LSTM, showed moderate but improved recall after resampling, confirming their applicability to structured medical data. Overall, the findings indicate that the proposed hybrid approach significantly enhances model sensitivity and offers a practical and scalable framework for early diabetes detection using imbalanced healthcare datasets.
  • An Efficient Spatio-Temporal Deep Learning Framework for Wildfire Detection Using Satellite Imagery
    A.V.S.Asha, G. Prasanthi, Nagagopiraju Vullam, Vunnava Dinesh Babu, A.Lakshmanarao, P Chandra Sekhar Reddy
    2025 1st International Conference on Advancement in Futuristic Technologies Icaft 2025, 2025
    Wildfires have emerged as a major environmental threat, causing severe ecological and economic damage across the globe. Timely detection is critical for preventing large-scale spread, yet traditional ground-based monitoring methods remain limited in coverage and response speed. This paper presents a spatio-temporal deep learning framework for wildfire detection using high-resolution satellite imagery. The proposed approach integrates spatial CNN models (CNN, VGG16, ResNet50, EfficientNet), temporal architectures (CNN–LSTM, ConvLSTM, 3D-CNN), and transformer-based models (ViT, Swin Transformer) to capture both localized fire signatures and long-range spatial dependencies. Experiments conducted on the Kaggle Wildfire Prediction Dataset, consisting of more than 40,000 labelled images, show that spatio-temporal networks outperform purely spatial models, with the ConvLSTM achieving an accuracy of 0.95. Transformer architectures deliver the best overall performance, with the Swin Transformer achieving 0.97 accuracy and demonstrating superior robustness across diverse wildfire scenes. These results confirm that combining spatial, temporal, and attention-based modeling provides a powerful and scalable solution for automated wildfire detection using satellite imagery.
  • A Robust Methodology Design for Removing Noise Content in Blurred and Deblurred Images Using Neural Optimization Principle
    M. Sujitha, S U Prabha, G. Dhanalakshmi, Iyswariya A, Vunnava Dinesh Babu, Nakka Nagaraju
    Proceedings Iceconf 2025 2025 2nd International Conference on Artificial Intelligence and Knowledge Discovery in Concurrent Engineering, 2025
  • ENCS: A Novel Approach for Identifying Pneumonia Using Chest Radiographs Based on Enhanced Neural Classification Scheme
    S Parvathi, Vunnava Dinesh Babu, Satheesh Kumar Duraisamy, K. Shanmugapriya, Millicent Mabel M, S. Shanthasheela
    Proceedings Iceconf 2025 2025 2nd International Conference on Artificial Intelligence and Knowledge Discovery in Concurrent Engineering, 2025
  • An Improved Cost-Effective Indoor Air Quality Prediction through Internet of Things Edge Network and Hybrid Model
    D. Vidyanadha Babu, Mahmoud Odeh, Jajula Hari Babu, Vunnava Dinesh Babu, M Harshini, Asha V
    Proceedings Iceconf 2025 2025 2nd International Conference on Artificial Intelligence and Knowledge Discovery in Concurrent Engineering, 2025
  • Efficient Cost Evaluation and Hybrid Optimization-Based Heterogeneous Resource Allocation in Cloud-Edge-IoT Environment
    M. Ganesh Kumar, Ahmad Abdelhafiz Ali Samhan, N S R Srikanth, Vunnava Dinesh Babu, Rajkumar Bhookya, Swathi B
    Proceedings Iceconf 2025 2025 2nd International Conference on Artificial Intelligence and Knowledge Discovery in Concurrent Engineering, 2025
  • Integrated Transfer Learning and Traditional ML Model approach for Enhanced Medicinal Plant Recognition
    Srinivasa Raju Yarakaraju, Pardha Saradhi Chirumamilla, Chinnari Mrudula Pothula, Vunnava Dinesh Babu, Bobby Sowjanya Penmetsa, S. Sushma
    Proceedings of 3rd IEEE International Conference on Knowledge Engineering and Communication Systems Ickecs 2025, 2025
  • Hybrid Autoencoder and Ensemble Deep Learning Model for Stroke Prediction
    Soujanya Thirunagari, A.V. Lalitha Devi, Pinninti Siva Deepthi, Vunnava Dinesh Babu, Vangapandu Venkata Kalyani, A. Lakshmanarao
    Proceedings of 6th International Conference on Iot Based Control Networks and Intelligent Systems Icicnis 2025, 2025
  • Stock Market Trend Forecasting using Temporal News Embedding and Sentiment-Aware Deep Learning with BERT
    Kallepalli Rohit Kumar, Pardha Saradhi Chirumamilla, Kondamudi Naga Neeraja, Vunnava Dinesh Babu, Naladi Ram Babu, Jajimoggala Sravanthi
    Proceedings of International Conference on Sustainable Communication Networks and Application Icscn 2025, 2025
  • An Intellectual Deep Resource Allocation with Task Scheduling for Semi-Synchronous Internet-Based Edge Computing Network
    Kavala Devanandam, Abdelhalim Mohammad Jubran, Vunnava Dinesh Babu, Galeeb Shaik, G John Samuel Babu, B Rajalakshmi
    Proceedings of 2025 10th International Conference on Science Technology Engineering and Mathematics Iconstem 2025, 2025
  • Design of Flexible Polygon Shape Compact Patch Antenna with Slit for Biomedical Application
    P. Amala Vijaya Sri, Supriya Jangala, Popuri Ramesh Babu, Vunnava Dinesh Babu, P. Padmaja Priyadarshini, Chirukuri Naga Phaneendra
    2025 5th International Conference on Artificial Intelligence and Signal Processing Aisp 2025, 2025
  • Optimized Transfer Learning and Machine Learning Hybrid Approach for Early Lung Cancer Diagnosis
    Ramesh Alladi, P Sumithabhashini, Bhargavi Mopuru, Vunnava Dinesh Babu, Kondamudi Naga Neeraja, A. Lakshmanarao
    Proceedings of 3rd International Conference on Augmented Intelligence and Sustainable Systems Icaiss 2025, 2025
  • Advanced News Classification Model with Capsule Networks Through Word2Vec and BERT Embeddings
    Pardha Saradhi Chirumamilla, Nagagopiraju Vullam, Modugula Sivajyothi, Vunnava Dinesh Babu, Kamarajugadda Indumathy, A. Lakshmana Rao
    Proceedings of 5th International Conference on Pervasive Computing and Social Networking Icpcsn 2025, 2025
  • Enhancing Skin Cancer Detection with Novel Data Augmentation and Transfer Learning Techniques
    Nagagopiraju Vullam, Gummadi Sudha Rani, T. Prabhakara Rao, Vunnava Dinesh Babu, Venkata Subbaiah Desanamukula, A. Lakshmana Rao
    Proceedings of 2025 3rd International Conference on Intelligent Systems Advanced Computing and Communication Isacc 2025, 2025
  • Multi-Scale Transformer-CNN Fusion with Metric Learning for Medicinal Plant Identification
    Nagagopiraju Vullam, Jayadeep Pakala, Dara Vikram, Vunnava Dinesh Babu, Naladi Ram Babu, P.Chandra Sekhar Reddy
    Proceedings of the International Conference on Research in Computational Intelligence and Communication Networks Icrcicn, 2025
  • Food Classification Using a Hybrid Framework with Transfer Learning and Machine Learning Models
    Bharathi Panduri, Nagagopiraju Vullam, R S S Raju Battula, Vunnava Dinesh Babu, Venkata Subbaiah Desanamukula, A. Lakshmanarao
    2025 IEEE 2nd International Conference on Advances in Modern Age Technologies for Health and Engineering Science Amathe 2025 Proceedings, 2025
  • Hybrid Deep Learning Framework for Fake News Detection using BERT Embeddings and Context-Aware Metadata Fusion
    Kallepalli Rohit Kumar, P.Sujatha, Modugula Sivajyothi, Vunnava Dinesh Babu, A.Lakshmanarao, P.Varaprasada Rao
    Proceedings of International Conference on Sustainable Communication Networks and Application Icscn 2025, 2025
  • Deep Hybrid Attention Framework Combining CNN and Vision Transformers for Food Category Prediction
    P. Karthi, Jayadeep Pakala, Nagagopiraju Vullam, Vunnava Dinesh Babu, Naladi Ram Babu, P. Varaprasada Rao
    Proceedings of 6th International Conference on Iot Based Control Networks and Intelligent Systems Icicnis 2025, 2025
  • A Systematic Review on the Integration of Blockchain, 5G, and Green Computing
    K. C. Krishnachalitha, Dikshit Sharma, Samaksh Goyal, K. Yuvaraj, V. Dinesh Babu, S. Mithun Kumar
    2025 International Conference on Decision Aid Sciences and Applications Dasa 2025, 2025
  • A Novel Approach to Farm Weather Prediction with Hybrid CNN, LSTM, and Attention Mechanisms
    Kumar Devapogu, Maganti Venkatesh, Nagagopiraju Vullam, Vunnava Dinesh Babu, Chitri Rami Naidu, A. Lakshmanarao
    2025 IEEE International Conference on Interdisciplinary Approaches in Technology and Management for Social Innovation Iatmsi 2025, 2025
  • Accurate classification of forest fires in aerial images using ensemble model
    Ch Raga Madhuri, Sravya Sri Jandhyala, Deepthi Meenakshi Ravuri, Vunnava Dinesh Babu
    Bulletin of Electrical Engineering and Informatics, 2024
  • Integrated CNN and Recurrent Neural Network Model for Phishing Website Detection
    K.Kavya Ramya Sree, Chamarty Anusha, Yuvana Lagadapati, Vunnava Dinesh Babu, Nagagopiraju Vullam, A. Lakshmanarao
    2024 3rd International Conference for Advancement in Technology Iconat 2024, 2024
  • A Robust Methodology for Fruit Quality Prediction and Estimation Using Intelligent Learning Based Image Processing Logic
    Malathi K, Vunnava Dinesh Babu, M. Ramkumar, M. Ayyadurai, Vivek K, Hamzeh J Aljawawdeh
    Proceedings of the 2024 International Conference on Innovative Computing Intelligent Communication and Smart Electrical Systems Icses 2024, 2024
  • A Hybrid Model for Heart Disease Prediction using K-Means Clustering and Semi supervised Label Propagation
    N. L. V. Venugopal, A. Sneha, Vunnava Dinesh Babu, G. Swetha, Sourajit Kumar Banerjee, A. Lakshmanarao
    2024 3rd International Conference for Advancement in Technology Iconat 2024, 2024
  • An Efficient Model for Brain Tumor Classification Through Transfer Learning Approaches
    Yerakamma Chapala, Rayavarapu Sridivya, Nagagopiraju Vullam, Vunnava Dinesh Babu, A. Lakshmanarao, V. Pratyusha
    Proceedings of the 2024 International Conference on Innovative Computing Intelligent Communication and Smart Electrical Systems Icses 2024, 2024
  • A Hybrid Multimodal Biometric Recognition System (HMBRS) based on Fusion of Iris, Face, and Finger Vein Traits
    Vunnava Dinesh Babu, Raghunadha Reddi Dornala, Chamarty Anusha, Popuri Ramesh Babu, Kaja Krishna Mohan, Kari Venkata Sumanth
    Proceedings of the 5th International Conference on Smart Electronics and Communication Icosec 2024, 2024
  • A Novel Trust Assessment System for Online Social Networking Environment Using Learning Assisted Classification Model
    S. Nithya, D. Deepa, Vunnava Dinesh Babu, Pallavi G, Hamed Fawareh, R. D. Kayalvizhy
    Proceedings of the 2024 International Conference on Innovative Computing Intelligent Communication and Smart Electrical Systems Icses 2024, 2024
  • Three-stage multi-objective feature selection with distributed ensemble machine and deep learning for processing of complex and large datasets
    Vunnava Dinesh Babu, K. Malathi
    Measurement Sensors, 2023
  • Large dataset partitioning using ensemble partition-based clustering with majority voting technique
    Vunnava Dinesh Babu, Karunakaran Malathi
    Indonesian Journal of Electrical Engineering and Computer Science, 2023
  • Three-stage multi-objective feature selection for distributed systems
    Vunnava Dinesh Babu, K. Malathi
    Soft Computing, 2023
  • An Automated Epilepsy Seizure Detection System (AESD) Using Deep Learning Models
    Dinesh Babu Vunnava, Ramesh Babu Popuri, Ravi Kiran Daruvuri, Anusha B
    International Conference on Self Sustainable Artificial Intelligence Systems Icssas 2023 Proceedings, 2023
  • Leveraging CNN and LSTM for Identifying Citrus Leaf Disorders
    Dasari Ashok, Neelam Mary Vijaya Nirmala, D Srilatha, K Venkateswara Rao, Vunnava Dinesh Babu, Shaik Johny Basha
    2nd International Conference on Automation Computing and Renewable Systems Icacrs 2023 Proceedings, 2023
  • Dynamic Deep Learning Algorithm (DDLA) for Processing of Complex and Large Datasets
    Vunnava Dinesh Babu, K. Malathi
    Proceedings of the 2nd International Conference on Artificial Intelligence and Smart Energy Icais 2022, 2022

RECENT SCHOLAR PUBLICATIONS

  • Stock market price prediction with efficient generative artificial intelligence with predictor network
    A Balaji, SS Babu, HK Deevi, VD Babu, VA Latha, P Srinivasarao
    Knowledge and Information Systems 68 (1), 158 , 2026
    2026
  • News Article Classification Using Capsule Networks and Transformer-Based Contextual Embeddings
    S Jani, N Vullam, D Vikram, VD Babu, SB Vadde, ALA Lakshmanarao
    2026 International Conference on Smart Futuristic Technology , 2026
    2026
  • An Efficient Spatio-Temporal Deep Learning Framework for Wildfire Detection Using Satellite Imagery
    AVS Asha, G Prasanthi, N Vullam, VD Babu, A Lakshmanarao, ...
    2025 1st International Conference on Advancement in Futuristic Technologies … , 2026
    2026
  • A Multi-Label Fake News Detection Framework Using Undersampling and Transformer-Based Deep Learning Models
    PR Mohapatra, J Pakala, N Vullam, VD Babu, NR Babu, PCS Reddy
    2026 5th International Conference on Communication, Computing and … , 2026
    2026
  • A Robust Methodology for Fruit Quality Prediction and Estimation Using Intelligent Learning Based Image Processing Logic
    M K, VD Babu, M Ramkumar, M Ayyadurai, V K, HJ Aljawawdeh
    2024 International Conference on Innovative Computing, Intelligent … , 2026
    2026
  • A Climate-Aware Transformer Framework for Crop Yield Prediction using Satellite Imagery & Weather Data
    VD Babu
    2026 International Conference on Electronics and Renewable Systems (ICEARS) , 2026
    2026
  • CPS-Enabled Multimodal Health Monitoring Framework with AI-Driven Anomaly Interpretation for Intelligent Clinical Decision Support
    PKR Vunnava Dinesh Babu, Suresha D
    Harbin Gongye Daxue Xuebao/Journal of Harbin Institute of Technology 58 (1) , 2026
    2026
  • Design of Flexible Polygon Shape Compact Patch Antenna with Slit for Biomedical Application
    VD Babu
    2025 5th International Conference on Artificial Intelligence and Signal … , 2026
    2026
  • A Robust Methodology Design for Removing Noise Content in Blurred and Deblurred Images Using Neural Optimization Principle
    VD Babu
    2025 2nd International Conference on Artificial Intelligence and Knowledge … , 2026
    2026
  • ENCS: A Novel Approach for Identifying Pneumonia Using Chest Radiographs Based on Enhanced Neural Classification Scheme
    VD Babu
    2025 2nd International Conference on Artificial Intelligence and Knowledge … , 2026
    2026
  • Efficient Cost Evaluation and Hybrid Optimization-Based Heterogeneous Resource Allocation in Cloud–Edge-IoT Environment
    VD Babu
    2025 2nd International Conference on Artificial Intelligence and Knowledge … , 2026
    2026
  • An Improved Cost-Effective Indoor Air Quality Prediction through Internet of Things Edge Network and Hybrid Model
    VD Babu
    2025 2nd International Conference on Artificial Intelligence and Knowledge … , 2026
    2026
  • An Intellectual Deep Resource Allocation with Task Scheduling for Semi-Synchronous Internet-Based Edge Computing Network
    VD Babu
    2025 Tenth International Conference on Science Technology Engineering and … , 2026
    2026
  • with Self-supervised Learning
    VS Desanamukula, P Sujatha, GP Kumar, VD Babu, K Polanki, AL Rao
    Computing and Machine Learning: Proceedings of CML 2025, Volume 1 1, 61 , 2026
    2026
  • Integrated quantum-classical hybrid architectures for robust lung lesion segmentation in volumetric CT video data samples
    SB Veesam, LK Pappala, AR Satish, SK Chirumamilla, VD Babu, ...
    Engineering Science and Technology, an International Journal 73, 102272 , 2026
    2026
    Citations: 1
  • Deep Hybrid Attention Framework Combining CNN and Vision Transformers for Food Category Prediction
    VD Babu
    2025 6th International Conference on IoT Based Control Networks and … , 2026
    2026
  • Hybrid Autoencoder and Ensemble Deep Learning Model for Stroke Prediction
    VD Babu
    2025 6th International Conference on IoT Based Control Networks and … , 2026
    2026
  • Multi-Scale Transformer–CNN Fusion with Metric Learning for Medicinal Plant Identification
    N Vullam, J Pakala, D Vikram, VD Babu, NR Babu, PCS Reddy
    2025 Seventh International Conference on Research in Computational … , 2025
    2025
  • Hybrid Autoencoder and Ensemble Deep Learning Model for Stroke Prediction
    S Thirunagari, AVL Devi, PS Deepthi, VD Babu, VV Kalyani, ...
    2025 6th International Conference on IoT Based Control Networks and … , 2025
    2025
  • Deep Hybrid Attention Framework Combining CNN and Vision Transformers for Food Category Prediction
    P Karthi, J Pakala, N Vullam, VD Babu, NR Babu, PV Rao
    2025 6th International Conference on IoT Based Control Networks and … , 2025
    2025

MOST CITED SCHOLAR PUBLICATIONS

  • Three-stage multi-objective feature selection with distributed ensemble machine and deep learning for processing of complex and large datasets
    KM VUNNAVA DINESH BABU
    Measurement: Sensors 28, 6 , 2023
    2023
    Citations: 25
  • Dynamic deep learning algorithm (DDLA) for processing of complex and large datasets
    VD Babu, K Malathi
    2022 Second International Conference on Artificial Intelligence and Smart … , 2022
    2022
    Citations: 23
  • A novel trust assessment system for online social networking environment using learning assisted classification model
    S Nithya, D Deepa, VD Babu, H Fawareh, RD Kayalvizhy
    2024 International Conference on Innovative Computing, Intelligent … , 2024
    2024
    Citations: 22
  • Smart Telemedicine Using IoT by Integrating 5G and Block-Chain Techniques
    SL Choudhary, RS Dixit, D Das, KR Singh, VD Babu
    2023 6th International Conference on Contemporary Computing and Informatics … , 2023
    2023
    Citations: 15
  • Large dataset partitioning using ensemble partition-based clustering with majority voting technique
    karunakaran malathi vunnava dinesh babu
    indonesian journal of electrical engineering and computer science 29 (2), 8 , 2023
    2023
    Citations: 9
  • Three-stage multi-objective feature selection for distributed systems
    KM vunnava dinesh babu
    SOFT COMPUTING 27 (3), 16 , 2023
    2023
    Citations: 9
  • Accurate classification of forest fires in aerial images using ensemble model
    CR Madhuri, SS Jandhyala, DM Ravuri, VD Babu
    Bulletin of Electrical Engineering and Informatics 13 (4), 2650-2658 , 2024
    2024
    Citations: 5
  • A Hybrid Multimodal Biometric Recognition System (HMBRS) based on Fusion of Iris, Face, and Finger Vein Traits
    VD Babu
    2024 5th International Conference on Smart Electronics and Communication … , 2024
    2024
    Citations: 4
  • A Novel Approach to Farm Weather Prediction with Hybrid CNN, LSTM, and Attention Mechanisms
    vunnava dinesh babu
    2025 IEEE International Conference on Interdisciplinary Approaches in … , 2025
    2025
    Citations: 3
  • A Hybrid Model for Heart Disease Prediction using K-Means Clustering and Semi supervised Label Propagation
    VD Babu
    2024 3rd International Conference for Advancement in Technology (ICONAT) , 2024
    2024
    Citations: 3
  • Integrated CNN and Recurrent Neural Network Model for Phishing Website Detection
    VD BABU
    2024 3rd International Conference for Advancement in Technology (ICONAT) , 2024
    2024
    Citations: 3
  • An Automated Epilepsy Seizure Detection System (AESD) Using Deep Learning Models
    DB Vunnava, RB Popuri, RK Daruvuri, A B
    ieee xplore, 8 , 2023
    2023
    Citations: 3
  • An Efficient Model for Brain Tumor Classification Through Transfer Learning Approaches
    Y Chapala, R Sridivya, N Vullam, VD Babu, A Lakshmanarao, ...
    2024 International Conference on Innovative Computing, Intelligent … , 2024
    2024
    Citations: 2
  • Integrated quantum-classical hybrid architectures for robust lung lesion segmentation in volumetric CT video data samples
    SB Veesam, LK Pappala, AR Satish, SK Chirumamilla, VD Babu, ...
    Engineering Science and Technology, an International Journal 73, 102272 , 2026
    2026
    Citations: 1
  • Food Classification Using a Hybrid Framework with Transfer Learning and Machine Learning Models
    VD Babu
    2025 International Conference on Advances in Modern Age Technologies for … , 2025
    2025
    Citations: 1
  • A Novel Multistage Approach for Medicinal Plant Classification with Deep Learning Techniques
    VD Babu
    Int. Res. J. multidiscip. Technovation 7 (4), 16 , 2025
    2025
    Citations: 1
  • Integrated Transfer Learning and Traditional ML Model approach for Enhanced Medicinal Plant Recognition
    SR Yarakaraju, PS Chirumamilla, CM Pothula, VD Babu, BS Penmetsa, ...
    2025 International Conference on Knowledge Engineering and Communication … , 2025
    2025
    Citations: 1
  • Designing Neuro-Inspired Architectures for Efficient Signal Processing
    P Baxi, S Asha, AR Nawadkar, VD Babu, N Raj, J Praveena
    2024 International Conference on Recent Advances in Science and Engineering … , 2024
    2024
    Citations: 1
  • Implementation of 5G cloud based technique development using radio access type of networks
    M Almusawi, M Balakrishnan, VD Babu, SS Naveena, A Sharma, ...
    2024 4th International Conference on Advance Computing and Innovative … , 2024
    2024
    Citations: 1
  • A Study on Mobile Banking Services with Special Reference to Ponmalai Area at Tricky
    R Buvaneswari, B Bharathi, P Babu, M Venkatesh, V Babu
    IOSR Journal of Business and Management 16 (4), 66-74 , 2016
    2016
    Citations: 1