Wireless Sensor Networks
Data Science and Analytics
Internet of Things
54
Scopus Publications
786
Scholar Citations
14
Scholar h-index
27
Scholar i10-index
Scopus Publications
ILENET-LINKNET ARCHITECTURE TRAINED ON PATTERN AND COLOR FEATURES FOR SKIN LESION CLASSIFICATION: SEGMENTATION WITH IMPROVED ATTENTION-BASED RCNN MODEL Sadanand S. Howal, S. J. Wagh Biomedical Engineering Applications Basis and Communications, 2025 Skin abnormalities are increasingly prevalent, attributed to various factors such as pandemics and lifestyle changes, with sun exposure emerging as a primary culprit, often leading to the development of melanomas, a form of skin cancer. These abnormalities manifest as skin lesions, which are broadly categorized into melanocytic and non-melanocytic types, each exhibiting a spectrum of diverse characteristics. Skin lesions can range from benign to malignant, highlighting the critical need for accurate classification to guide appropriate treatment decisions. Dermoscopy, an advanced imaging technique, plays a pivotal role in dermatology by facilitating the visualization of deeper skin lesions, thus enhancing diagnostic accuracy beyond what traditional examination methods can offer. Accurate classification of skin lesions is paramount for ensuring timely disease detection and ultimately improving patient outcomes. The advent of deep learning methods has significantly revolutionized the field of dermatology, particularly in skin lesion classification. This study introduces LinkNet-Improved LeNet (LILNet), a novel deep learning architecture that integrates various stages including preprocessing, segmentation, feature extraction, and classification. The Convolutional Neural Autoregressive Density Estimation (ConvNADE) model is employed for preprocessing tasks, while the IA-MRCNN model is utilized for lesion segmentation and precise feature extraction. Classification is accomplished through a hybrid model combining elements of LinkNet and Improved LeNet (ILeNet) models, with score-level fusion techniques further enhancing accuracy. The integration of these stages within the LILNet architecture represents a significant advancement in skin lesion classification, aiming to improve diagnostic accuracy and efficiency in dermatological practice.
Comparative Evaluation of Deep Learning Models for Exhaled Breath-Based Liver Disease Prediction Archana D. Dantakale, Sanjeev J. Wagh 2025 6th International Conference for Emerging Technology Incet 2025, 2025 Liver diseases are on the rise due to factors such as excessive alcohol intake, poor dietary habits, and sedentary lifestyles, along with metabolic disorders like obesity and diabetes. For instance, non-alcoholic fatty liver disease (NAFLD) affects nearly a quarter of the global population, and liver cirrhosis causes over 1.32 million deaths annually, as reported by the WHO. Traditional diagnostic methods, including liver biopsies and imaging, are invasive, expensive, and impractical for large-scale or routine screening. This creates a need for non-invasive, cost-effective, and reliable diagnostic alternatives. One such approach is exhaled breath analysis, which utilizes volatile organic compounds (VOCs) to detect liver dysfunction. However, analyzing this data effectively requires advanced computational techniques capable of handling complex, high-dimensional sequences. This study explores the performance of various deep learning models—LSTM, BiLSTM, GRU, and 1D CNN—in predicting liver disease. Each architecture has distinct advantages: LSTM and BiLSTM efficiently capture long-term dependencies in sequential data, GRU provides computational efficiency while maintaining accuracy, and 1D CNNs are effective in feature extraction from raw input. By evaluating these models based on accuracy, sensitivity, and computational efficiency, this research aims to identify their respective strengths and limitations in liver disease classification. The findings will aid in selecting the most suitable model for real-time applications, ensuring both high predictive accuracy and optimal computational performance. Ultimately, this work contributes to the advancement of non-invasive diagnostic tools, facilitating early and precise liver disease detection while minimizing the need for invasive procedures and enhancing patient care.
INVESTIGATION FOR DIABETIC RETINOPATHY DETECTION USING PSEUDO-LABELING CLASSIFIER Umesh Anandrao Patil International Journal of Applied Mathematics, 2025 As a progressive retinal disease linked to diabetes, Diabetic Retinopathy (DR) continues to be a major contributor to visual impairment and blindness in adults in diabetic persons. Identifying diabetic retinopathy at an early stage is necessary to stop the onset of lasting retinal impairment. Conventional screening techniques often depend on manual assessment by experts. It may be subjective, labor-intensive and limited in scalability. This research presents an automated approach for diabetic retinopathy identification that use a hybrid deep learning architecture. In the methodology advanced image enhancement techniques are applied to improve fundus image quality. Specifically CLAHE [33] is used to correct low contrast regions, while morphological transformations are used to highlight retinal structures. The enhanced retinal images are fed into an EfficientNet-L2 CNN, which is responsible for extracting rich deep features and performing segmentation. To improve generalization and reduce dependence on extensive labeled datasets a pseudo-labeling [34] is incorporated. This enables the framework to leverage both annotated and unannotated samples effectively, thereby strengthening model robustness and training efficiency. Experimental findings on an extensive dataset of 100,000 fundus pictures demonstrate that the proposed method attains a 96.5% classification accuracy and 96.3% F1-score across various phases of diabetic retinopathy. The suggested approach mitigates deficiencies in current diagnostic systems by providing superior resilience, scalability and advanced early-stage illness detection capabilities.
Advancements in Hybrid Deep Learning for Stroke Classification: A Comprehensive Review of Genetic Algorithms and Bilstm Networks Balasaheb S. Waidande, Sanjeev J. Wagh 2025 2nd International Conference on Integration of Computational Intelligent System Icicis 2025, 2025 Timely diagnosis and treatment planning are crucial in improving patient outcomes, making stroke classification a vital area of research. Recent advancements in hybrid deep learning frameworks have shown promise in enhancing classification accuracy by integrating powerful methodologies. This paper comprehensively reviews the integration of Genetic Algorithms (GA) for feature optimization and Bidirectional Long Short-Term Memory (BiLSTM) networks for learning complex temporal dependencies in medical data. GA enables the selection of relevant features from high-dimensional datasets, while BiLSTM improves predictive performance by modeling sequence information in both forward and backward directions. By analyzing existing hybrid models, we identify strengths, limitations, and areas of improvement. This review not only consolidates current progress but also critically examines overlooked challenges in clinical deployment, including high computational costs, lack of interpretability, ethical considerations, and generalizability across diverse datasets. Furthermore, it outlines future directions such as integrating explainable AI, lightweight model architectures, and robust validation protocols. The findings demonstrate that GA-BiLSTM hybrid models hold significant potential for creating reliable, accurate, and clinically viable stroke diagnostic tools.
A Hybrid CNN-SVM Approach for Skin Lesion Classification Using The ISIC 2019 Dataset Sadanand S. Howal, Sanjeev J. Wagh, Siddheshwash V. Patil, Bhushan S. Yelure 2025 IEEE 14th International Conference on Communication Systems and Network Technologies Csnt 2025, 2025 Identifying skin lesions accurately is necessary for immediate diagnosis of skin cancer, particularly melanoma, which can significantly reduce mortality rates. However, automating the categorization of skin lesions poses challenges due to subtle variations in their appearance on the skin. This article presents a hybrid approach that combines Support Vector Machines (SVM) for categorization with Convolution Neural Networks (CNN) for feature extraction. Random Forest (RF) and Decision Tree (DT) methods are also included for comparative analysis. Using ISIC 2019 dataset encompassing dermoscopic images, the evaluation results show that the CNN-SVM hybrid paradigm surpasses other classifiers for accuracy, precision, recall, and F1 score. Experimental findings indicate performance improvements of 3.6% and 6.9% for CNN-SVM model compared to the CNN-RF and CNN-DT models, respectively. These results emphasize the ability of hybrid methods to enhance classification efficiency for medical image analysis tasks.
Potentials of AI in Disease Detection and Medical Image Processing Asif I. Tamboli, Kollur A. B. Revanth, S J Wagh, Jayant Pawar, K Aishwarya Proceedings 2024 International Conference on Healthcare Innovations Software and Engineering Technologies Hiset 2024, 2024 Artificial intelligence (AI) may help clinicians with a wide range of patient care including intelligent systems of healthcare. In healthcare, AI approaches that encompass machine learning (ML) to deep learning (DL) are used for illness diagnosis, medication discovery, especially patient risk detection. Furthermore, AI improved the hospital experience and accelerated the process of preparing sufferers to continue their recovery at home. AI has been used to many picture modalities that are employed at various phases of therapy and specifically, tumor identification and therapy evaluation. AI is the critical boosting capacity for processing vast numbers of medical photos and thereby uncovering illness features that are not visible to the human eye. The goals of this study are to discuss the development of AI in healthcare imaging research, its current function, the problems that must be overcome before AI can be broadly utilized in the hospitals and its possible future.
Realm of Medical Image Processing Under the Light of Artificial Intelligence Asif I. Tamboli, Samarth Shah, Gaurav Saxena, S J Wagh, Addagatla Prashanth, Mamadou Yero Diallo Proceedings 2024 International Conference on Healthcare Innovations Software and Engineering Technologies Hiset 2024, 2024 Over the previous century, a fundamental breakthrough in medical imaging processing as well as storage occurred, with the switch from traditional detectors in radiography to digital detectors. As a result, medical imaging digitalization constitutes a big achievement and promises considerable breakthroughs in cancer. Thus, goal of study is to analyze the advanced imaging process in medical field using artificial intelligence (AI). AI, on the other hand, has the potential to go beyond these applications by producing picture-based biomarkers that are able to accurately predicting survival or response to therapy, thereby extracting far more information from photographic images than used to be conceivable. Such biomarkers might be incorporated into existing prognostic as well as predictive models used in clinical treatment, functioning as integrative biomarkers. So, the study helps in understanding importance of medical imaging processes and further helps in diagnosing minor diseases and eliminates it without human intervention with help of AI.
Analysis on the Integration of Healthcare and Management with Software and Technology Sarita Chaudhary, V C. Patil, Vibha Vyas, S J Wagh, Aparna Patange, A Naveen Krishna Proceedings 2024 International Conference on Healthcare Innovations Software and Engineering Technologies Hiset 2024, 2024 Health information technology has accelerated and gained popularity since the first "Institute of Medicine (IOM)" research was released; yet, data on how health IT affects patient safety remains contradictory. The aim of this article is to present a summary of the most recent studies on the ways in which various health information technologies might enhance patient safety. Technological advancements have a significant impact on the healthcare industry; they have an impact on radiation, medicines, anesthetics, and the use of MRI scanners. Future technical advancements will continue to transform healthcare, but human considerations will always place limitations on the creation of new instruments, medications, and social media platforms. The three primary application areas are diagnosis and treatment suggestions, administrative chores, and patient involvement in conjunction with adherence. While AI can often execute healthcare duties just as well as humans, if not better, there are still implementation challenges that will delay the full automation about medical professional professions. Concerns of ethics surrounding the application of AI in healthcare are also discussed.
Efficient land cover classification for urban planning Vandana Tulshidas Chavan, Sanjeev J. Wagh Object Detection by Stereo Vision Images, 2022 Understanding spatiotemporal urban dynamics is incredibly vital within the context of the speedy urban boom with severe social and environmental challenges, like urban impoverishment, numerous sorts of pollution, vulnerabilities to seasoning activities, climate alternate effects, modifications in native weather, and their probable impacts on water level and so on. Findings of the strategies is expected so that it will facilitate in making plans belonging urban improvement rules and complete framework for its designing and control. Knowledge of land cover, land use, and land change is very essential for understanding human activity and creating plans, policies, and solutions for urban planning. This paper proposes the development of a land cover classification system that can classify images efficiently based on the land cover in an efficient manner without any human intervention.
Improving efficiency of topology control algorithm using RSSI as link metric for wireless sensor network International Journal of Applied Engineering Research, 2014
A quick survey on wireless sensor networks Manisha Bhende, Sanjeev J. Wagh, Amruta Utpat Proceedings 2014 4th International Conference on Communication Systems and Network Technologies Csnt 2014, 2014
AI-Driven Mock Interview Systems: A Comprehensive Survey of Emotion and Performance Evaluation Platforms SJW Piyusha N. Patil Indian Journal of Technical Education (IJTE) 48 (02), 76-82 , 2025 2025
Ml-Based Fertilizer Recommendation: Predicting Crop Response and Optimizing Fertilizer Type & Dosage with Machine Learning MDS Arun M. Patokar, Sanjeev J. Wagh, Rehan I. Mokashi Indian Journal of Technical Education (IJTE) 48 (02), 01-08 , 2025 2025
Comprehensive Review on De-raining of Image & Video Using Deep Learning and Hybrid Approaches AP Tejas P. Shinde, Nikita Shetty, Sanjeev Wagh Journal Indian Journal of Technical Education (IJTE) 48 (02), 261-267 , 2025 2025
Food Waste to Fertilizer: A Systematic Review of Technology Enabled Rapid Composting SJW Rehan I. Mokashi, Manish D. Sandanshiv Journal Indian Journal of Technical Education (IJTE) 48 (02), 299-307 , 2025 2025
Bridging the Bench-to-Bedside Gap: External Validation and Refinement of a YOLO-Based System for Brain Tumor Diagnosis in Clinical Practice SJW Manish D. Sandanshiv, Rehan I. Mokashi Indian Journal of Technical Education (IJTE) 48 (02), 291-298 , 2025 2025
Generating 2D Game Assets using Generative Adversarial Networks AP Mithilesh M. Pawar, Raj Kulkarni, Sanjeev J. Wagh Indian Journal of Technical Education (IJTE) 48 (02), 268-274 , 2025 2025
Emotion-Aware Conversational Agents for Mental Health: A Comprehensive Survey SJW Piyusha V. Urunkar Indian Journal of Technical Education (IJTE) 48 (Special Issue No. 2), 63-71 , 2025 2025
Exploring Machine Learning Strategies for Classifying Online Toxicity P Urunkar, B Yelure, S Wagh, P Shinde 2025 International Conference on Future Technologies (ICFT), 1-6 , 2025 2025
ILENET-LINKNET ARCHITECTURE TRAINED ON PATTERN AND COLOR FEATURES FOR SKIN LESION CLASSIFICATION: SEGMENTATION WITH IMPROVED ATTENTION-BASED RCNN MODEL SS Howal, SJ Wagh Biomedical Engineering: Applications, Basis and Communications 37 (05), 2550007 , 2025 2025 Citations: 1
Advancements in Hybrid Deep Learning for Stroke Classification: A Comprehensive Review of Genetic Algorithms and Bilstm Networks BS Waidande, SJ Wagh 2025 2nd International Conference on Integration of Computational … , 2025 2025
Comparative Evaluation of Deep Learning Models for Exhaled Breath-Based Liver Disease Prediction AD Dantakale, SJ Wagh 2025 6th International Conference for Emerging Technology (INCET), 1-10 , 2025 2025
A Hybrid CNN-SVM Approach for Skin Lesion Classification Using The ISIC 2019 Dataset SS Howal, SJ Wagh, SV Patil, BS Yelure 2025 IEEE 14th International Conference on Communication Systems and Network … , 2025 2025 Citations: 2
Energy Optimization Protocol Design for Sensor Networks in IoT Domains SJ Wagh, MS Bhende, AD Thakare CRC Press , 2022 2022 Citations: 3
Virtual Moratorium System M Bhende, M Badger, P Kumbhar, V Bhatkar, P Chavan Object Detection by Stereo Vision Images, 171-183 , 2022 2022
Efficient Land Cover Classification for Urban Planning VT Chavan, SJ Wagh Object Detection by Stereo Vision Images, 185-194 , 2022 2022 Citations: 1
Data‐Driven Approches for Fake News Detection on Social Media Platforms P Patil, SJ Wagh Object Detection by Stereo Vision Images, 195-206 , 2022 2022 Citations: 1
Object Detection by Stereo Vision Images RA Priya, AV Patil, M Bhende, AD Thakare, S Wagh John Wiley & Sons , 2022 2022 Citations: 4
Cyber Threats: Fears for Industry S Rane, G Devi, S Wagh Cyber Security Threats and Challenges Facing Human Life, 43-54 , 2022 2022 Citations: 6
Privacy threat reduction using modified multi-line code generation algorithm (MMLCGA) for cancelable biometric technique (CBT) PD Ganjewar, SJ Wagh, AL Gilbile International Conference on Intelligent Cyber Physical Systems and Internet … , 2022 2022 Citations: 1
Detection of diabetic retinopathy (DR) using convolutional neural network (CNN) and multiple classifier techniques in machine learning UA Patil, SJ Wagh Handbook of Research on Applied Intelligence for Health and Clinical … , 2022 2022 Citations: 1
MOST CITED SCHOLAR PUBLICATIONS
Detection and prevention of black hole and selective forwarding attack in clustered WSN with Active Trust DC Mehetre, SE Roslin, SJ Wagh Cluster Computing 22 (Suppl 1), 1313-1328 , 2019 2019 Citations: 96
i-learning IoT: An intelligent self learning system for home automation using IoT VH Bhide, S Wagh 2015 international conference on communications and signal processing (iccsp … , 2015 2015 Citations: 95
Monitoring and detection of agricultural disease using wireless sensor network S Datir, S Wagh International Journal of Computer Applications 87 (4) , 2014 2014 Citations: 45
Wireless sensor network based pollution monitoring system in metropolitan cities S Raipure, D Mehetre 2015 international conference on communications and signal processing (ICCSP … , 2015 2015 Citations: 44
Applied machine learning for smart data analysis N Dey, S Wagh, PN Mahalle, MS Pathan CRC Press , 2019 2019 Citations: 41
A quick survey on wireless sensor networks M Bhende, SJ Wagh, A Utpat 2014 fourth international conference on communication systems and network … , 2014 2014 Citations: 39
A hierarchical fractional LMS prediction method for data reduction in a wireless sensor network P Ganjewar, S Barani, SJ Wagh Ad Hoc Networks 87, 113-127 , 2019 2019 Citations: 29
Extending lifetime of wireless sensor networks using multi-sensor data fusion S Das, S Barani, S Wagh, SS Sonavane Sādhanā 42 (7), 1083-1090 , 2017 2017 Citations: 22
Epidemic peak for COVID-19 in India, 2020 S Wagh 2020 Citations: 17
An architectural approach of internet of things in E-Learning M Vharkute, S Wagh 2015 International Conference on Communications and Signal Processing (ICCSP … , 2015 2015 Citations: 17
Trust based energy efficient clustering using genetic algorithm in wireless sensor networks (teecga) NB Nimbalkar, SS Das, SJ Wagh International Journal of Computer Applications 112 (9), 30-33 , 2015 2015 Citations: 17
Food monitoring using adaptive naïve bayes prediction in IoT PD Ganjewar, S Barani, SJ Wagh, SS Sonavane International Conference on Intelligent Systems Design and Applications, 424-434 , 2018 2018 Citations: 16
Secure data transmission using steganography based data hiding in TCP/IP RM Goudar, SJ Wagh, MD Goudar Proceedings of the International Conference & Workshop on Emerging Trends in … , 2011 2011 Citations: 16
Color Image Restoration For An Effective Steganography DP Gaikwad, SJ Wagh I-manager's Journal on Software Engineering 4 (3), 65 , 2010 2010 Citations: 16
Maximizing lifetime of wireless sensor networks using genetic approach S Wagh, R Prasad 2014 IEEE International Advance Computing Conference (IACC), 215-219 , 2014 2014 Citations: 14
Fundamentals of data science SJ Wagh, MS Bhende, AD Thakare Chapman and Hall/CRC , 2021 2021 Citations: 13
Rising issues in vanet communication and security: A state of art survey SP Godse, PN Mahalle, SJ Wagh International Journal of Advanced Computer Science and Applications (IJACSA … , 2017 2017 Citations: 13
Data reduction using incremental Naive Bayes Prediction (INBP) in WSN PD Ganjewar, S Barani, SJ Wagh 2015 international conference on information processing (ICIP), 398-403 , 2015 2015 Citations: 13
Intelligent car park management system using wireless sensor network M Bhende, S Wagh International Journal of Computer Applications 122 (10), 1-6 , 2015 2015 Citations: 13
HFBLMS: Hierarchical fractional bidirectional least-mean-square prediction method for data reduction in wireless sensor network PD Ganjewar, S Barani, SJ Wagh International Journal of Modeling, Simulation, and Scientific Computing 9 … , 2018 2018 Citations: 12