Deepfake Face Detection System for Differentiating Real and Authentic Images B. Narendra Kumar Rao AI Driven Approaches for Fully Automated Smart Engineering, 2025 The application of deepfake technology poses a significant threat to the authenticity of multimedia content, as it enables the creation of remarkably realistic yet altered photographs and videos. The present study introduces an innovative approach to identify deepfakes through the utilization of advanced deep learning methodologies. The proposed model employs convolutional neural networks (CNNs) and recurrent neural networks (RNNs) to analyze multimedia content for minute patterns that indicate tampering to detect the fake and authentic images in media. By being exposed to a diverse dataset comprising authentic and altered visual content, the model gains the capability to discern between legitimate and profoundly erroneous information. The performance of the model is evaluated utilizing a range of comprehensive assessment metrics, including accuracy, precision, and recall. The research contributes to ongoing efforts to combat the dissemination of profoundly false information by enhancing the ability to identify and mitigate the potential risks associated with deceptive multimedia.
Food image recognition and calorie estimation B. Narendra Kumar Rao, Nidyanand Yuvaraj Singh, P. Sathvik Chowdari, Mallela Nikhil Kumar Reddy, Murthy Chetty Muni Sreenivas Optimizing Smart and Sustainable Agriculture for Sustainability, 2025 Given the escalating health challenges associated with obesity, there is a heightened focus on adopting healthier eating habits. With 2.8 million people succumbing to overweight-related issues annually, individuals are increasingly prioritizing food choices to prevent conditions like high blood pressure, diabetes, and heart problems. A key element in any dietary plan is vigilant calorie monitoring. To facilitate this, there is a proposal to leverage deep learning (DL) technology for calorie calculation based on user-captured food images. The process involves identifying the food category and employing DL algorithms to predict calorie content. Machine learning techniques, including convolutional neural networks, play a pivotal role in image recognition and food classification. The system incorporates segmentation and imaging parameters to enhance accurate food image analysis. Ultimately, this system empowers individuals to make informed decisions about their daily calorie intake, fostering awareness of both nutritional and cost aspects of the food they consume.
Detection of partially occluded area in face image using U-Net model Cherapanamjeri Jyothsna, Bangole Narendra Kumar Rao Iaes International Journal of Artificial Intelligence, 2025 <span lang="EN-US">Occluded face recognition is important task in computer vision. To complete the occluded face recognition efficiently, first we need to identify the occluded region in face. Identifying the occluded region in face is a challenging task in computer vision. One case of face occlusion is nothing but wearing masks, sunglasses, and scarves. Another case of face occlusion is face is hiding the other objects like books, things, or other faces. In our research, identifying the occluded area which is corona virus disease of 2019 (COVID-19) masked area in face and generate segmentation map. In semantic segmentation, deep learning-based techniques have demonstrated promising outcomes. We have employed one of the deep learning-based<br />U-Net models to generate a binary segmentation map on masked region of a human face. It achieves reliable performance and reducing network complexity. We train our model on MaskedFace-CelebA dataset and accuracy is 97.7%. Results from experiments demonstrate that, in comparison to the most advanced semantic segmentation models, our approach achieves a promising compromise between segmentation accuracy and computing efficiency.</span>
Child Mortality Prediction Using Machine Learning Techniques B. Narendra Kumar Rao Ethics Justice and Governance in the Age of AI and Digital Societies, 2025 This project explores the application of machine learning techniques to predict child mortality by analyzing a dataset of 2,126 cardiotocogram (CTG) measurements, which detail fetal heart rate and uterine contraction patterns and have been meticulously classified by expert obstetricians. The study employs and compares various machine learning models, including logistic regression, decision trees, and neural networks, to assess their efficacy in identifying high-risk pregnancies. By leveraging these advanced predictive models, the research aims to enhance the accuracy of risk assessments and uncover critical patterns in fetal health data that may not be detectable through conventional methods. The ultimate goal is to support early interventions and improve child survival rates through data-driven decision-making in healthcare. This project has significant implications for enhancing predictive modeling and risk assessment in obstetrics, contributing to more effective and personalized maternal and child health care strategies.
Improving Cervical Cancer Recurrence Prediction Through Multi-Source Data Integration and Advanced Deep Learning Approaches Prathap Sathyavedu, B.Narendra Kumar Rao 3rd IEEE International Conference on Industrial Electronics Developments and Applications Icidea 2025, 2025 Cervical cancer recurrence prediction is a very crucial point in treatment because needing as much accuracy and speed as possible calls for better patient care. This research work presents the design of a high-performance predictive model that integrates multi-modal clinical data, such as imaging, genetic profiles, and health records of patients, to enhance accuracy in predicting recurrence. This can enable the capture of intricate factors of recurrence risk with the help of this kind of multimodal data integration. Deep learning techniques like convolutional neural networks and transformers are applied to each independent data source, with this model emphasizing attention mechanisms for interpretability that will inspire greater clinical trust and usability. In contrast to many conventional approaches that often use a single data source, this integrated methodology overcomes the critical limitations of using a broader spectrum of clinical inputs. It is further strengthened by data augmentation and generation of synthetic data, overcoming problems of data imbalance. Extensive validation on various datasets yielded a predictive accuracy of 95.7%, demonstrating its high performance. This holistic approach presented them with a valid and accurate method for predicting cervical cancer recurrence, thus equipping the clinicians with the necessary insight into informed decision-making that could lead to improved patient care and outcomes.
Metaverse for Indian palm leaf manuscripts Basaraboyina Yohoshiva, Nagendra Panini Challa, Narendra Kumar Rao, Beebi Naseeba, Venkata Sasi Deepthi Ch Engineering the Metaverse Enabling Technologies Platforms and Use Cases, 2025
Diabetic Prediction Using Deep Learning Techniques B. Narendra Kumar Rao, Nagendra Panini Challa, S. Sreenivasa Chakravarthi, R. Ranjana, B. Bhaskar Kumar Rao Lecture Notes in Networks and Systems, 2025
Machine learning for real-time stress analysis in IT teams N. Balakrishna, Khwaja Moinuddin Basha S., T. Rajasree, P. Vinitha, C. Gnanaprakash, K. Ghamya, Narendra Kumar Rao Bangole Impact of Corporate Social Responsibility on Employee Wellbeing, 2024
Human migration analysis using machine learning Narendra Kumar Rao Bangole, Lingam Thanvitha, T. Benazir Suraiya, Y. N. V. Shashank, N. Loka Harshith Media Representation of Migrants and Refugees, 2024
Making healthcare decisions: An evolution Venkata Tulasiramu Ponnada, Venkata Tulasikrishna Ponnada, Narendra Kumar Rao B., Rama Krishna Raju Sammeta, Hymavathi Jasti Intelligent Decision Making Through Bio Inspired Optimization, 2024
Deep Learning Approaches for Occlusion Removal in Medical Images Kaluva Jaya Deepthi, B. Narendra Kumar Rao Proceedings of 2024 2nd International Conference on Recent Trends in Microelectronics Automation Computing and Communications Systems Exploration and Blend of Emerging Technologies for Future Innovation Icmacc 2024, 2024
Crop Disease Analysis and Detection using GoogleNet Model Bollapalli Althaph, Nagendra Panini Challa, Beebi Naseeba, Narendra Kumar Rao Proceedings of the 18th Indiacom 2024 11th International Conference on Computing for Sustainable Global Development Indiacom 2024, 2024
Crop Growth Prediction using Ensemble KNN-LR Model Attaluri Harshitha, Beebi Naseeba, Narendra Kumar Rao, Abbaraju Sai Sathwik, Nagendra Panini Challa Eai Endorsed Transactions on Internet of Things, 2024
TRENDS AND FUTURE RESEARCH DIRECTIONS OF INNOVATIONS IN COMPUTATIONAL INTELLIGENCE, BIG DATA ANALYTICS, AND INTERNET OF THINGS Innovations in Computational Intelligence Big Data Analytics and Internet of Things, 2024
Early Alzheimer’s Disease Detection Using Deep Learning Kokkula Lokesh, Nagendra Panini Challa, Abbaraju Sai Satwik, Jinka Chandra Kiran, Narendra Kumar Rao, Beebi Naseeba Eai Endorsed Transactions on Pervasive Health and Technology, 2023
Convolutional Neural Network Model for Traffic Sign Recognition B Narendra Kumar Rao, R Ranjana, Nagendra Panini Challa, S. Sreenivasa Chakravarthi 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering Icacite 2023, 2023
Machine learning and computer vision - beyond modeling, training, and algorithms Explainable Artificial Intelligence Xai Concepts Enabling Tools Technologies and Applications, 2023
Speech Emotion Recognizer Using CNN B. N. Kumar Rao, Rekhasree Manthu, Kovuri Praveen Kumar, G. Madhukar, K. Madhavi, Ganpat Joshi 5th IEEE International Conference on Cybernetics Cognition and Machine Learning Applications Icccmla 2023, 2023
Object detection techniques for real-time applications Streaming Analytics Concepts Architectures Platforms Use Cases and Applications, 2022
Movie Recommendation System using Machine Learning Narendra Kumar Rao, Nagendra Panini Challa, S Sreenivasa Chakravarthi, R Ranjana 4th International Conference on Inventive Research in Computing Applications Icirca 2022 Proceedings, 2022
ML Approaches to Detect Email Spam Anamoly B Narendra Kumar Rao, P. Partheeban, Beebi Naseeba, Hemadri Prasad Raju 2022 International Conference on Data Science Agents and Artificial Intelligence Icdsaai 2022, 2022
Grand challenges scholars program in indian context Journal of Engineering Education Transformations, 2020
Predictive maintenance for monitoring heritage buildings and digitization of structural information International Journal of Innovative Technology and Exploring Engineering, 2019
Block chain based implementation of electronic medical health record International Journal of Innovative Technology and Exploring Engineering, 2019
Clustering based test suite selection for ranking of program execution sequence using improved precision in regression testing International Journal of Innovative Technology and Exploring Engineering, 2019
Deep Learning Approaches for Occlusion Removal in Medical Images BNK rao 2024 2nd International Conference on Recent Trends in Microelectronics … , 2025 2025
The metaverse as an educational tool: enhancing learning with blockchain technology Engineering the Metaverse: Enabling technologies, platforms and use cases , 2025 2025
Auto Proctoring on Tab Switch Monitoring for Online Examinations in Scalable Web Interface Design 15th International Conference on Soft Computing and Pattern Recognition … , 2025 2025
Enhancing Event Organization Efficiency Through Intelligent Chatbot: A Study on Automated Assistance and Engagement 15th International Conference on Soft Computing and Pattern Recognition … , 2025 2025
Harnessing deep learning for the early detection of COVID-19 using chest X-rays BNK Rao Big Data Analytics and Intelligent Applications for Smart and Secure … , 2025 2025
Human Migration Analysis Using Machine Learning, Media Representation of Migrants and Refugees BNK Rao Media Representation of Migrants and Refugees , 2025 2025
Crafting Shopping Experiences Using Artificial Intelligence BNK Rao Synergy of AI and Fintech in the Digital Gig Economy , 2025 2025
A Machine Learning-Based Crop Diseases Detection and Management System BNK Rao Advanced Computational Methods for Agri-Business Sustainability , 2025 2025
Bone Fracture Detection and Classification Using Deep Learning Techniques BNK Rao AI-Driven Innovations in Digital Healthcare: Emerging Trends, Challenges … , 2025 2025 Citations: 6
Brain Interaction Assessment using EEG Source localization –sLORETA BNK Rao Medical Robotics and AI-Assisted Diagnostics for a High-Tech Healthcare Industry , 2025 2025 Citations: 1
Factors Influencing Mental Health and the Role of Artificial Intelligence (AI) in the Era of Climate Change BNK Rao AI and IoT Technology and Applications for Smart Healthcare Systems , 2025 2025
Detection of Partially Occluded Area in Images Using Image Segmentation Technique Fourth Congress on Intelligent Systems. CIS 2023. Lecture Notes in Networks … , 2024 2024
Brain Interaction Assessment using EEG Source localization –sLORETA Medical Robotics and AI-Assisted Diagnostics for a High-Tech Healthcare Industry , 2024 2024
Recommendation System for E-Commerce Using Collaborative Filtering BNK Rao Journal Européen des Systèmes Automatisés 57 (4), 1145-1153 , 2024 2024 Citations: 13
Building Tomorrow: Navigating Sustainable Construction with Artificial Intelligence et.al. Dr.B.Narendra Kumar Rao 2024 International Conference on Social and Sustainable Innovations in … , 2024 2024
Enabling Smart Farming Through Edge Artificial Intelligence (AI) Agriculture and Aquaculture Applications of Biosensors and Bioelectronics , 2024 2024
Enhancing Smart Agriculture Applications Utilizing Deep Learning Models and Computer Vision Techniques Agriculture and Aquaculture Applications of Biosensors and Bioelectronics , 2024 2024
Bone Fracture Detection and Classification Using Deep Learning Techniques AI-Driven Innovations in Digital Healthcare: Emerging Trends, Challenges … , 2024 2024
Crafting Shopping Experiences in Digital World Artificial Intelligence The Synergy of AI and Fintech in the Digital Gig Economy , 2024 2024
Diabetic Analysis and Prediction Using Deep Learning AI-Driven Innovations in Digital Healthcare: Emerging Trends, Challenges … , 2024 2024
MOST CITED SCHOLAR PUBLICATIONS
Facial Landmarks Detection System with OpenCV Mediapipe and Python using Optical Flow (Active) Approach ESPKSSC N. Kumar Rao B, N. Panini Challa 3rd International Conference on Advance Computing and Innovative … , 2023 2023 Citations: 23
Movie recommendation system using machine learning NK Rao, NP Challa, SS Chakravarthi, R Ranjana 2022 4th International Conference on Inventive Research in Computing … , 2022 2022 Citations: 19
Early Alzheimer’s Disease Detection Using Deep Learning B Lokesh, K. , Challa, N.P. , Satwik, A.S. , ... Rao, N.K. , Naseeba EAI Endorsed Transactions on Pervasive Health and Technology 9 (1) , 2023 2023 Citations: 17
Web scraping (imdb) using python NK Rao, B Naseeba, NP Challa, S Chakrvarthi Telematique 21 (1), 235-247 , 2022 2022 Citations: 14
Recommendation System for E-Commerce Using Collaborative Filtering BNK Rao Journal Européen des Systèmes Automatisés 57 (4), 1145-1153 , 2024 2024 Citations: 13
Neural networks based object detection techniques in computer vision J Cherapanamjeri, BNK Rao 2022 4th International Conference on Inventive Research in Computing … , 2022 2022 Citations: 13
Feature Matching in Iris Recognition System using MATLAB. N Imran, Narendra Kumar Rao B. J. Multim. Process. Technol. 11 (2), 43-59 , 2020 2020 Citations: 13
Predictive maintenance for monitoring heritage buildings and digitization of structural information BNK Rao, BBK Rao, NP Challa Int. J. Innov. Technol. Explor. Eng.(IJITEE) 8, 2278-3075 , 2019 2019 Citations: 12
Block chain based implementation of electronic medical health record BNK Rao, BBK Rao, J Vellingiri International Journal of Innovative Technology and Exploring Engineering 8 (8) , 2019 2019 Citations: 11
Gesture Recognition for Enhancing Human Computer Interaction SS Chakravarthi, BNK Rao, NP Challa, R Ranjana, A Rai Journal of Scientific and Industrial Research (JSIR) 82 (4), 438-443 , 2023 2023 Citations: 10
Fine-tuning for transfer learning of ResNet152 for disease identification in tomato leaves LR Burra, J Bonam, P Tumuluru, B Narendra Kumar Rao Intelligent Computing and Applications: Proceedings of ICDIC 2020, 295-302 , 2022 2022 Citations: 9
Hyperparameter Optimization for Transfer Learning-based Disease Detection in Cassava Plants JBNKRB Kalyani G1 *, Sai Sudheer K2 Journal of Scientific and Industrial Research (JSIR) 82, 536-545 , 2023 2023 Citations: 8
ML approaches to detect email spam anamoly BNK Rao, P Partheeban, B Naseeba, HP Raju 2022 International Conference on Data Science, Agents & Artificial … , 2022 2022 Citations: 8
Virtual alphabet recognition using deep convolution neural networks NP Challa, R Ranjana, SS Chakravarthi, NK Rao 2022 4th International Conference on Inventive Research in Computing … , 2022 2022 Citations: 8
Text Recognition from Images using Deep Learning Techniques MC B. Narendra Kumar Rao, Kondra Pranitha, Ranjana, C. V. Krishnaveni ICDIC 2020 315, 265-279 , 2022 2022 Citations: 7
Cognitive science and artificial intelligence: Advances and applications S Gurumoorthy, BNK Rao, XZ Gao Springer Singapore , 2018 2018 Citations: 7
Bone Fracture Detection and Classification Using Deep Learning Techniques BNK Rao AI-Driven Innovations in Digital Healthcare: Emerging Trends, Challenges … , 2025 2025 Citations: 6
A Wellness Mobile Application for Smart Health BNK Rao Designing and Developing Innovative Mobile Applications, 21-37 , 2023 2023 Citations: 5
Broad learning and hybrid transfer learning system for face mask detection R Ranjana, BNK Rao, P Nagendra, S Chakravarthy Telematique 21 (1), 182-196 , 2022 2022 Citations: 5
Automated Detection Of Skin Lesions Using Back Propagation Neural Network BBB Nagendra Panini Challa, A. Mohan, Narendra Kumar Rao, Bhaskar Kumar Rao ... ICDIC 2022 315 (978-9-81-194161-0), 127-133 , 2022 2022 Citations: 4