Suresh Palarimath

@sct.edu.om

Senior Lecturer
University of Technology and Applied Sciences, Salalah



                       

https://researchid.co/sureshpmath

I've authored 25 computer science books, including Database Management Systems, Computer Concepts, and C Programming, in addition to Java and Python programming. In India, I own 5 Indian patents, and over the years, I've published numerous research papers in journals. I have 6 industrial certifications in total. I was the head of the school of computing at the Institute of Business Studies in Papua New Guinea from February 2012 until February 2013. My Lawrence School team was selected to represent INDIA at the 2010 World Robot Olympiad. Currently employed as a Senior Lecturer in Information Technology at the University of Technology and Applied Sciences, Salalah in Oman.

RESEARCH INTERESTS

AI, Machine Learning, Natural Language Processing, IoT

22

Scopus Publications

168

Scholar Citations

7

Scholar h-index

5

Scholar i10-index

Scopus Publications

  • Bridging AI and quantum computing in decentralized networks leveraging artificial intelligence for entanglement distribution in quantum networks
    Suresh Palarimath, Diwakar Chaudhary, K. T. Shivaram, Anil Kumar, Venkata Ramana K. (85599b62-d1b2-4ec5-867d-d4aec5cc8c84, and Jayprakash Vijay

    IGI Global
    Quantum information processing depends on entanglement, which is very important for safe communication and more computer power. For reliable and scalable quantum transmission, decentralized quantum networks need to make sure that entanglement links are spread out and maintained well. In addition, our way can improve future efforts to distribute entanglement by using machine learning to look at how networks have interacted in the past. Concerns and possibilities of using AI-enhanced entanglement distribution systems on real quantum networks are also looked at. Our method combines artificial intelligence with quantum technologies to come up with new and exciting ways to solve problems and get the most out of quantum computing and communication in distributed systems. Ultimately, the strategic incorporation of AI with quantum computing in decentralized networks, in conjunction with the strategic utilization of artificial intelligence to enhance and regulate the allocation of entanglements in quantum networks, has the potential to bring about substantial disruption.

  • A Novel Method of Evaluating the Harmonic Power Analyzer's Performance for PC-Based Testing and Measurement Applications Related to Electromagnetic Compatibility
    J Adeline Sneha, N. R Wilfred Blessing, Suresh Palarimath, S Poorana Senthilkumar, Manigandansekar, and G Sutherlin Subitha

    IEEE
    This paper discusses the methods for performance analysis of a PC-based harmonic power analyzer used in EMC testing and measuring applications. According to IEC 61000-3-2, this is an easy-to-use, reasonably priced way to assess how well a harmonics emission measurement system is performing in real time. There is no mention of any alternative approach or calibration method to verify the performance analysis in the IEC 61000-3-2 standard. Different vendor equipment is used to create a single harmonic emission monitoring setup. Thus, getting calibrating services is a highly difficult task that also requires a significant financial investment. Using this straightforward, low-cost analysis technique, it is possible to monitor the operation of the measurement setup locally and address all of these problems. Overall, the paper provides a comprehensive overview of the new approach to performance analysis of a PC-based harmonics power analyzer for EMC test and measurement applications, emphasizing the importance of a simple, cost-effective, and reliable method for maintaining measurement system performance.

  • Optimal Logistic Map with DNA Computing Model for Image Encryption
    Shiny K.V, Wilfred Blessing N. R, Jino R, Suresh Palarimath, Mathumitha V, and Sutherlin Subitha G

    IEEE
    The logistic map with optimization with a novel Deoxyribonucleic Acid (DNA) sequence operation-based novel image encryption scheme is generated. The best mask is obtained by enhancing the excellence of DNA which is the significant advantage of this approach. According to the image decryption and encryption process, correct errors and the similarity of DNA sequences are decreased by the DNA cryptogram becoming an input pace for DNA calculation. The maximum PSNR of encrypted images is obtained by the logistic map function to improve the performance of image security Ant Lion optimization (ALO). The image encryption and decryption process generate optima point DNA sequence rules. DNA coding: utilizing the complementary rule, each nucleotide is then changed into its base pair for a random time or times; the times are produced by Chebyshev maps. The experimental investigations provided better UACI, Number of Pixel Exchange Rate (NPCR), and Peak Signal Noise Ratio (PSNR). This strategy is significant because it increases entropy, which is the fundamental property of randomness, withstands multiple statistical and differential attacks, and produces positive experimental outcomes.

  • Advancing Brain Image Segmentation: A Comprehensive Exploration of Enhanced VGG16 Architecture for Precise Neuroanatomical Mapping
    Sheeja Kumari V, Wilfred Blessing N. R, Suresh Palarimath, Hemalatha Gunasekaran, Poorana Senthilkumar S, and Sutherlin Subitha G

    IEEE
    This study introduces a novel approach to brain image segmentation by enhancing the VGG16 architecture. Neuroanatomical mapping is a critical aspect of understanding brain structures, and our research focuses on refining the VGG16 model to achieve more accurate segmentation results. We address the intricacies of brain image analysis, optimizing the architecture for the nuanced structures inherent in neuroimaging data. Our enhanced VGG16 model is thoroughly evaluated across diverse datasets, demonstrating superior performance compared to state-of-the-art segmentation methods. The framework proves robust and efficient in accurately delineating complex brain regions. We also delve into the interpretability of the segmentation results, shedding light on the learned features that contribute to the model's efficacy. The significance of our work extends beyond improved segmentation, offering valuable insights into the interpretability of deep learning models in neuroimaging. This research contributes to the broader field of biomedical image analysis and holds promise for applications in neuroscience and medical diagnostics. The proposed enhanced VGG16 framework emerges as a potent tool for advancing our understanding of brain structures and enhancing the capabilities of neuroimaging technologies.

  • Uncovering Android Zero-Day Threats: The Zero-Vuln Approach with Deep and Zero-Shot Learning
    Suresh Palarimath, Pyingkodi Maran, Wilfred Blessing N. R, S. J Kavitha, Cibi. A, and Subitha G. Sutherlin

    IEEE
    The growing occurrence of cybersecurity hazards, such as Android zero-day vulnerabilities, poses substantial difficulties because they are unattended and imperceptible. With the increasing popularity of Android smartphones, hackers are taking advantage of these weaknesses to quickly spread advanced malware. Conventional detection approaches frequently prove inadequate due to the absence of shown criteria for emergent threats. In order to address this crucial problem, this article presents the Zero-Vuln method, an advanced technique specifically developed to identify and categorize previously unidentified malware on Android platforms. Zero-Vuln combines sophisticated supervised deep learning methods with zero-shot learning algorithms to accurately detect zero-day threats. Through the utilization of comprehensive datasets, the method attains an average classification metric score of 84.22%, showcasing exceptional accuracy, precision, and recall. This advanced solution significantly improves the ability to identify and handle Android zero-day threats, representing a major progress in cybersecurity research and implementation. The Zero-Vuln strategy provides a strong and adaptable solution for the constantly changing mobile security risks, representing a notable advancement in the sector.

  • Virtual and Augmented Reality in Interactive Entertainment: Unlocking New Dimensions of Immersive Interaction
    Jasim Sharki Ghulam Al Balushi, Malak Ibrahim Ahmed Al Jabri, Suresh Palarimath, Chithik Raja Mohamed, Venkateswaran Radhakrishnan, and Muni Balaji Thumu

    IEEE
    Virtual Reality (VR) offers an immersive experience with position tracking and 3D near-eye displays, enabling users to enter virtual surroundings. Conversely, Augmented Reality (AR) superimposes computer-generated content onto the real world, integrating digital and physical environments through visual, aural, tactile, and other sensory modalities. Both technologies are transforming user engagement with content, providing the opportunity to explore remote locations, communicate with digital characters, or assume leading roles in interactive entertainment events. While VR completely immerses users in simulated surroundings, AR enriches real-world contexts by incorporating interactive elements and contextual data. This study examines the transformative effects of VR and AR in interactive entertainment, emphasizing its various uses, benefits, and constraints. It emphasizes how new technologies have transformed narrative, facilitating enhanced user involvement and a more dynamic feeling of presence. The review analyzes the present and prospective capabilities of VR and AR in transforming social interactions, narrative-centric experiences, and cooperative gameplay. In addition to entertainment, the article examines the ramifications of AR and VR in education, training, and healthcare, where immersive environments demonstrate significant efficacy. The report highlights the crucial impact these technologies have in enhancing human-computer interaction across various industries.

  • Exploring Innovative Design Techniques for Chatbots: A Comprehensive Review
    Fatima Ali Amer Jid Almahri, Venkateswaran Radhakrishnan, and Suresh Palarimath

    Springer Nature Switzerland

  • Leveraging Digital Twins and AI for Enhanced Clinical Decision Support in Endometrial Cancer Treatment
    Suresh Palarimath, Pyingkodi Maran, Wilfred Blessing N. R, Cibi. A, S. J. Kavitha, and Steffi S

    IEEE
    Digital twins are a relatively new concept that have lately garnered interest in the industrial sector. Digital twins are virtual models that mirror actual products. In this research, we suggest using the technology of digital twins to the field of healthcare in order to enhance clinical decision support and to provide more individualized treatment for patients. When artificial intelligence (AI) is combined with digital twins, healthcare professionals are able to more effectively analyze large volumes of varied data and increase their ability to make diagnostic and therapeutic decisions. In this research, we provide a conceptual framework for leveraging digital twins and AI to solve existing limits in cancer care, notably endometrial cancer therapy. This research study mainly focuses on cancer care, and more specifically on endometrial cancer treatment. In addition, we analyze the possible challenges and opportunities that may arise throughout the process of integrating this technology in healthcare settings. Our overarching objective is to improve the standard of treatment as well as the clinical results for people who have cancer.


  • Integrating Artificial Intelligence and Multiple Intelligences for Advanced Educational Models
    Suresh Palarimath, Pyingkodi Maran, R. Venkateswaran, Wilfred Blessing N.R, K. V Shiny, and S. Renuga

    IEEE
    The aim of educational innovation is to foster students' creative and problem-solving skills via the integration of several disciplines, including science, technology, engineering, art, and mathematics. Efficiently identifying and fostering the various abilities of pupils continues to be a crucial obstacle. This research presents a sophisticated educational approach that combines the notion of multiple intelligences with artificial intelligence (AI) technology to tackle this problem. This concept improves the teaching environment by including intelligent auxiliary services for instructors and students via the use of smart speech and picture interaction. Artificial intelligence (AI) integrated into the multiple intelligence’s framework enables the ability to observe, analyze, and implement personalized teaching tactics in real-time using machine learning. The suggested AI-assisted education paradigm aims to enhance teacher-student interactions and facilitate personalized instruction. The study provides evidence that this technique successfully facilitates personalized and captivating learning experiences, promoting students' diverse talents and augmenting their creativity and problem-solving capabilities. This approach seeks to fundamentally transform conventional educational techniques by addressing the disparity between existing educational practices and the future requirements of the workforce.

  • Exploring the Role of Internet of Things in Wireless Sensor Networks for Industry 4.0 Applications
    Suresh Palarimath, Pyingkodi Maran, Wilfred Blessing N.R, T. Sujatha, S. Renuga, and Chithra R.S

    IEEE
    Recent developments in computer networking have made it possible to access information from a faraway location via either wireless or wired networks. The recent advancements in wireless infrastructure are directly responsible for the advent of wireless sensor networks, often known as WSNs. These networks make it easier to keep track of environmental happenings and activities, as well as document them and manage them. In WSNs, data relaying is accomplished through the use of a variety of routing strategies. Industry 4.0, also known as the fourth industrial revolution, is characterized by the incorporation of highly developed physical automation systems. These systems are made up of several pieces of machinery and gadgets that are linked together by sensors and are operated by software. The goal of the fourth industrial revolution is to improve the effectiveness and dependability of business processes. The Internet of Things (IoT) can be leveraged in manufacturing, which gives a means of linking engines, power grids, and sensors to the cloud in an industrial context. This is accomplished through the use of Industrial IoT. The purpose of this paper is to gain an understanding of how the Internet of Things functions in wireless sensor networks and its possible applications in a variety of settings.

  • Empowering Breast Cancer Detection with AI: A Modified Support Vector Machine Approach for Improved Classification Accuracy
    Suresh Palarimath, Pyingkodi Maran, Thenmozhi K, K.V. Shiny, T Sujatha, and Wilfred Blessing N.R

    IEEE
    Breast cancer poses a significant threat to women's health, being a leading cause of cancer-related mortality among female population. In recent years, machine learning has emerged as a promising approach in medical field, particularly in detection and classification tasks. However, existing algorithms often exhibit suboptimal accuracy, necessitating improved methodologies. This research presents a novel approach using a Modified Support Vector Machine (MSVM) for breast cancer classification into benign and malignant categories. Leveraging the Wisconsin Breast Cancer Dataset (WBCD), preprocessing techniques are applied to enhance data quality. Principle Component Analysis (PCA) reduces dimensionality, while linear Discriminant Analysis (LDA) extracts discriminative features crucial for classification. The proposed MSVM classifier achieves exceptional performance, with a classification accuracy of 99.42%, outperforming other existing methods such as Deep Convolutional Neural Networks and Fuzzy Rule-based Systems. These results highlight the efficacy of the MSVM approach in accurately distinguishing between benign and malignant breast cancer cases, showcasing its potential as a reliable tool for medical image analysis and cancer diagnosis.

  • Detection of Alcohol Drug Consumption Among Youngsters using Eye Gazing Movement and Deep Learning Techniques
    Pyingkodi M, Parvathavarthini S, Suresh Palarimath, D Deepa, Karthi D, and Maria John Paul M

    IEEE
    The intake of alcohol and drug consumption among young individuals poses significant societal challenges, necessitating effective preventive measures and early intervention strategies. This study suggests a unique method for predicting youth drug use that makes use of deep learning algorithms and eye gaze movement. This work objective is to use eye gaze movement and deep learning techniques to create a predictive model for young people's use of illicit drugs. The study design involves recruiting a diverse sample of young individuals and collecting their eye gaze data through eye-tracking devices. The collected eye gaze data is preprocessed, segmented, and fed into the deep learning models for feature extraction and prediction. Deep learning algorithms, including ResNet50, VGG19 and Alexnet are employed to extract relevant features and predict the likelihood of drug consumption based on the eye gaze data. The findings of this research highlight the significant relationship between eye gaze movement and illicit drug consumption among young individuals. The developed predictive model shows promising results in identifying high-risk individuals and providing a valuable tool for early intervention and prevention efforts. VGG19 outperforms ResNet 50 and AlexNet with highest accuracy of 0.96. It demonstrates the highest overall performance among the three models for the given task.

  • Incorporating Artificial Intelligence Powered Immersive Realities to Improve Learning using Virtual Reality (VR) and Augmented Reality (AR) Technology
    Jasim Sharki Ghulam Al Balushi, Malak Ibrahim Ahmed Al Jabri, Suresh Palarimath, Pyingkodi Maran, K Thenmozhi, and C. Balakumar

    IEEE
    This study analyzes the transformative potential of combining artificial intelligence (AI) with immersive technologies, specifically virtual reality (VR) and augmented reality (AR), to elevate educational outcomes significantly. The synergy of AI and immersive technologies presents a unique opportunity to enhance students’ motivation, memory retention, and comprehension of complex subjects, creating a distinct and impactful learning experience. The research comprehensively explores the current understanding of the effectiveness of VR and AR in educational settings, placing special emphasis on their applications in diverse fields such as Science, Technology, Engineering, And Mathematics (STEM), medicine, language acquisition, and the development of interpersonal skills. Beyond highlighting the immense potential, the study acknowledges and addresses the obstacles that include the costs associated with equipment, training, and content creation. It underscores the importance of collaborative efforts among technology suppliers, educators, and content producers to overcome these challenges effectively. By recognizing and navigating these hurdles, the study aims to provide practical insights for educational institutions and policymakers, advocating for the integration of AI-powered immersive technology to enhance the overall learning experience for students. The findings underscore the transformative impact of such technologies, emphasizing their role in shaping the future of education and preparing students for the dynamic challenges of the modern world.

  • Exploring Sensor-Based Smart Farming Technologies in the Internet of Things (IoT)
    Suresh Palarimath, Pyingkodi Maran, Thenmozhi K, C. Balakumar, T Sujatha, and Wilfred Blessing N. R

    IEEE
    The Internet of Things (loT) is a new technology trend that is being used in almost every area of human life. IoT is used almost every aspect of people's lives. Significantly, with a projected increase in the world's population to 9.7 billion by 2050, agricultural output would need to increase at an even more rapid rate to fulfill the requirement. Modern tools, notably the Internet of Things, make this a reality. The IoT makes it possible for farms to function without human labor. It has several potential applications in agriculture, including large- scale farming, greenhouse farming and management. The sensors serve as the most crucial component of the loT. Sensing devices are mostly used for the purpose of learning about the soil and its surroundings. The sensor has several applications in agriculture, including but not limited to NPK (nitrogen, phosphorus, and potassium) measurement, disease detection, and soil moisture analysis. This study discusses how IoT applications contribute to efficient farming practices. It shows how the IoT can be applied to agriculture and exhibits the many sensors, applications, problems, strengths, and shortcomings that underpin this field.

  • Deep learning Techniques for Identification of Illicit Drug Identification in Youth
    Pyingkodi M, Parvathavarthini S, Suresh Palarimath, D Deepa, Mohana Prawin. E, and Praveen. R

    IEEE
    Drug consumption poses significant challenges to public health, demanding precise and timely prediction models for efficient intervention and prevention methods. Through the use of deep learning methods combined with ocular image analysis, this work proposes a novel method for predicting drug use. The objective is to develop reliable and understandable model to recognize drug users from their eye pictures. For supervised training, a varied dataset of eye pictures was gathered, including people with various drug use histories. On the dataset, various Convolutional Neural Network designs were chosen, trained, and optimized using the proper hyperparameters. This study proposal compares various Convolutional Neural Network CNN models, including InceptionV3, DenseNet169, and EfficientNetB2, in order to ascertain which one of these models gets the maximum accuracy. These models provide the average accuracy of 93.33%, 97.47% and 85.89% respectively. DenseNet169 outperforms InceptionV3 and EfficientNetB2 with highest accuracy of 97.47%. It demonstrates the highest overall performance among the three models for the given task

  • Powering IoT Systems with 5G Wireless Communication: A Comprehensive Review
    Suresh Palarimath, Pyingkodi M, Thenmozhi K, Mohammed Maqsood, Mohammed Abdul Salam, and Roopa Devi Palarimath

    IEEE
    In today's modern world, IoT plays an important and multifaceted function in all industries. 5th Generation Wireless Systems - 5G is the primary technical platform on which the Internet of Things plays a major role in smart technologies. Incorporating 5G technology into the architecture of an IoT system is now simple. Using plug-and-play technology, remote access to configuration and control is possible. Smart technology always results in faster data transfer rates, more bandwidth, greater capacity, lower latency, and a quicker output response. Based on this notion, IoT brings about a dramatic shift in heterogeneous networks. So, there is a need to implement 5G-IoT technologies. In the age of the Internet of Things, the fifth-generation (5G) cellular networks give the smart and complex technical environment. 5G Cellular Networks offer great growth potential for IoT technologies. This article gives a thorough study of the role of 5G Cellular Networks in the expansion of IoT technologies across all industries. Since the inclusion of renewable energy emerges as a new trend in the digital world, 5G is very beneficial in the age of the Internet of Things. To achieve the link between 'Things and People,' 'Things and Things,' and 'People and People' in power Systems, it is necessary to combine IoT with 5G in power systems to a high degree of success in various power-based industry-based systems. This article demonstrates a smart scenario and provides a thorough analysis of "how 5G drives the IoT System intelligently in every way and how IoT affects as the "most promising technology" with this smart 5G Wireless Communication System." In addition, the IoT era 5G application possibilities were demonstrated.

  • Mining Competitors and Finding Winning Plans Using Feature Scoring and Ranking-Based CMiner++ Algorithm: Finding Top-K Competitors
    Sujatha T., Wilfred Blessing N. R., and Suresh Palarimath

    IGI Global
    For a business to succeed, it is very important to make things speaking more to clients than to rivals. It is more critical to decide on the significant feature of an item which influences its competency. In spite of the works that have been done already, a few algorithms gained efficient solution. This paper proposes the CMiner++ Algorithm to assess the competitive relationship among items in unstructured dataset and finding the Top-K competitors of a given item. Definitively, the nature of the outcomes and the versatility of this methodology utilizing numerous datasets from various areas are assessed, and the efficiency and adaptability of this algorithm on various data sets are improved when compared to existing algorithms. In today's busy world, automatic recommendation systems are emerging because people are looking for the products best suited for them. So, it is very important to analyse the behaviour of people, make a review on large and large unstructured data sets, and make the fully automated deep learning system to ensure the accurate outcome.

  • Barrier-Free Routes in a Geographic Information System for Mobility Impaired People
    Bernard H. Ugalde, Renato R. Maaliw, Suresh Palarimath, Mohammed Bakhit Al Mahri, Albert A. Vinluan, Jennifer T. Carpio, Ace C. Lagman, and Maurine C. Panergo

    IEEE
    It is always difficult to travel alone in a wheelchair without prior knowledge of the accessibility of the planned route. The majority of people prefer the shorter route. On the other hand, those with ambulatory limitations may prefer a longer route with proper ramps and drop curbs. This study aims to design obstacle management so that a registered user can report the accessibility of a ramp. The research includes an algorithm for generating barrier-free routes on the derived graph paths. When a wheelchair user encounters an obstacle while navigating the suggested route, the algorithm redirects them to their destination. A simulation test was performed, and the entire approach was evaluated using the survey method. The results showed that the proposed routing algorithm could find the shortest paths and reroute users to an unobstructed path. Respondents were highly pleased with the proposed navigation system’s performance and thought it was accessible, usable, and reliable. As a result, the study may provide a novel approach to designing a geographic information system for use in a wheelchair navigation system.

  • IoT based Soil Nutrients Analysis and Monitoring System for Smart Agriculture
    M. Pyingkodi, K. Thenmozhi, M. Karthikeyan, T. Kalpana, Suresh Palarimath, and G. Bala Ajith Kumar

    IEEE
    Soil fertility is an important factor in determining soil quality as it reflects how well the soil can support plant growth in agriculture. Soil sensor and Arduino can be used to quickly determine the nutrient content of the soil. Nitrogen, phosphorus, and potassium are all considered as important nutrient source components. These components should be measured in order to determine how much extra nutrient content should be added to the soil in order to increase the crop fertility. Soil fertility can be detected by using NPK sensors. Soil nutrient concentration data can help us to determine whether the soil used to support plant production is nutrition deficient or abundant. The nutrient content of the soil samples can be obtained in various ways by using sensing element or mass spectrogram. However, the spectral analysis method is inconvenient, where the records are only 60-70% accurate. By comparing the spectrum analysis method with classic wet chemistry methods, the accuracy of the products needs to be fully resolved due to a scarcity of data. Hence, to detect soil nitrogen, phosphorous, and potassium, a soil NPK sensor should be used. By utilizing a soil NPK sensor, which is of limited cost, fast and easy, elevated, and transportable. Its advantage over a standard detection approach is that it provides extremely fast measurements with accurate data. This paper analyzes and compares different nutrient levels in soil by using kernel density estimation algorithm and machine learning.

  • Sensor Based Smart Agriculture with IoT Technologies: A Review
    M. Pyingkodi, K. Thenmozhi, K. Nanthini, M. Karthikeyan, Suresh Palarimath, V. Erajavignesh, and G.Bala Ajith Kumar

    IEEE
    The IoT is a new technology trend used in almost every area thing, when connected to the internet and to each other, when you connect to the internet or interconnect, your entire system will be smarter. We have used IoT in all areas of our lives, including smart cities, smart homes, and smart retail. Much more. From 9.6 billion by 2050, agriculture needs to deliver even faster to meet this type of demand. This is possible with the latest technology, especially the IoT. The IoT enables labour free farms. Not only can it be used for large-scale agriculture, but it can also be used for livestock, greenhouse management, and agricultural land management. The most significant tool for the IoT is the sensor. A sensor is a device that collects important data that is interpreted to obtain the required analysis. The important objective of sensors are used to determine the soil's physical qualities and the environment. The main applications of sensors are control and supervise, safety, alarm, diagnostics, and analytics. Sensors make innovative agriculture more effective and trouble-free. In agriculture, the sensor is mainly used for measuring, measuring NPK (Nitrogen, Phosphorus, Potassium) levels, and detecting disease and soil moisture content. The main solution to this problem is smart farming, which modernizes traditional farming practices. This paper narrates the role of IoT application in smart agriculture. Smart farming is also known as precision farming hence it uses accurate information to draw outcomes. It demonstrates the different sensors, applications, challenges, strengths and weaknesses that support the IoT and agriculture.

  • A Robust Authentication and Authorization System Powered by Deep Learning and Incorporating Hand Signals
    Suresh Palarimath, N. R. Wilfred Blessing, T. Sujatha, M. Pyingkodi, Bernard H. Ugalde, and Roopa Devi Palarimath

    Springer Nature Singapore

RECENT SCHOLAR PUBLICATIONS

  • AI Modeling and Water Quality Sensing Technique Proffers Water Security: An Open Review
    WB NR, S Palarimath, H Gunasekaran, SW Haidar
    2025 International Conference on Electronics and Renewable Systems (ICEARS 2025

  • Exploring Innovative Design Techniques for Chatbots: A Comprehensive Review
    FAAJ Almahri, V Radhakrishnan, S Palarimath
    Innovative and Intelligent Digital Technologies; Towards an Increased 2025

  • Leveraging Digital Twins and AI for Enhanced Clinical Decision Support in Endometrial Cancer Treatment
    S Palarimath, P Maran, SJ Kavitha, S Steffi
    2024 International Conference on IoT Based Control Networks and Intelligent 2025

  • Sentiment Analysis of Guardian Metaverse Articles With Leximancer Tool Using HSVMPSo Technique
    S Sasikumar, G Ravishankar, P Poongothai, S Palarimath
    Innovations in Optimization and Machine Learning, 47-74 2025

  • Exploring Deep Learning Algorithms for Skin Disease Classification Using Skin Lesion Images
    M Pyingkodi, G Chandrasekaran, S Palarimath, R Rahul, V Vibin
    2024

  • Deep Learning Techniques for Emotional Classification Using Facial Images Among Youngsters
    M Pyingkodi, G Chandrasekaran, S Palarimath, M Lakshya
    3rd International Conference on Optimization Techniques in the Field of 2024

  • Optimal Logistic Map with DNA Computing Model for Image Encryption
    KV Shiny, R Jino, S Palarimath, V Mathumitha
    2024 2nd International Conference on Computing and Data Analytics (ICCDA), 1-6 2024

  • A Novel Method of Evaluating the Harmonic Power Analyzer's Performance for PC-Based Testing and Measurement Applications Related to Electromagnetic Compatibility
    JA Sneha, NRW Blessing, S Palarimath, SP Senthilkumar, GS Subitha
    2024 2nd International Conference on Computing and Data Analytics (ICCDA), 1-6 2024

  • Advancing Brain Image Segmentation: A Comprehensive Exploration of Enhanced VGG16 Architecture for Precise Neuroanatomical Mapping
    PSSSSG S. K. V, W. B. N. R, S. Palarimath, H. Gunasekaran
    2024 2nd International Conference on Computing and Data Analytics (ICCDA), 1-6 2024

  • Virtual and Augmented Reality in Interactive Entertainment: Unlocking New Dimensions of Immersive Interaction
    JSG Al Balushi, MIA Al Jabri, S Palarimath, CR Mohamed, ...
    2024 2nd International Conference on Computing and Data Analytics (ICCDA), 1-6 2024

  • Uncovering Android Zero-Day Threats: The Zero-Vuln Approach with Deep and Zero-Shot Learning
    S Palarimath, P Maran, SJ Kavitha, SG Sutherlin
    2024 2nd International Conference on Computing and Data Analytics (ICCDA), 1-6 2024

  • Transforming Computer Practice Teaching through Virtual Reality: Trends and Future Directions
    JSG Al Balushi, S Palarimath, CR Mohamed, MIA Al Jabri, ...
    International Journal of Innovative Research in Computer Science and 2024

  • Integrating Artificial Intelligence and Multiple Intelligences for Advanced Educational Models
    S Palarimath, P Maran, R Venkateswaran, WB NR, KV Shiny, S Renuga
    2024 International Conference on Electrical Electronics and Computing 2024

  • Exploring the Role of Internet of Things in Wireless Sensor Networks for Industry 4.0 Applications
    S Palarimath, P Maran, WB NR, T Sujatha, S Renuga, C RS
    2024 First International Conference on Pioneering Developments in Computer 2024

  • O-RAN in Private Network for Digital Health Applications Using Twofish Encryption in the Internet of Things
    R Chennappan, S Nandhakumar, S Palarimath
    Smart Healthcare and Machine Learning, 149-164 2024

  • VIRTUAL SMART ASSISTANT FOR VISUALLY CHALLENGED PEOPLE FOR EMPOWERING INDEPENDENCE
    S Palarimath, T Sujatha, NR Wilfred Blessing, WH SK, S Renuga
    African Journal of Biological Sciences 6 (12) 2024

  • Incorporating artificial intelligence powered immersive realities to improve learning using virtual reality (VR) and augmented reality (AR) technology
    JSG Al Balushi, MIA Al Jabri, S Palarimath, P Maran, K Thenmozhi, ...
    2024 3rd International Conference on Applied Artificial Intelligence and 2024

  • Leveraging Internet of Things (IoT) Sensors and Deep Learning Techniques for Precision Agriculture
    WB NR, M Pyingkodi, WH SK, S Palarimath, S Paravathavarthini, ...
    2024 1st International Conference on Innovative Engineering Sciences and 2024

  • Exploring sensor-based smart farming technologies in the internet of things (IoT)
    S Palarimath, P Maran, C Balakumar, T Sujatha
    2024 International Conference on Computing and Data Science (ICCDS), 1-6 2024

  • Detection of Alcohol Drug Consumption Among Youngsters using Eye Gazing Movement and Deep Learning Techniques
    M Pyingkodi, S Parvathavarthini, S Palarimath, D Deepa, D Karthi
    2024 International Conference on Expert Clouds and Applications (ICOECA 2024

MOST CITED SCHOLAR PUBLICATIONS

  • Sensor based smart agriculture with IoT technologies: a review
    M Pyingkodi, K Thenmozhi, K Nanthini, M Karthikeyan, S Palarimath, ...
    2022 international conference on computer communication and informatics 2022
    Citations: 55

  • IoT based soil nutrients analysis and monitoring system for smart agriculture
    M Pyingkodi, K Thenmozhi, M Karthikeyan, T Kalpana, S Palarimath, ...
    2022 3rd International Conference on Electronics and Sustainable 2022
    Citations: 35

  • Incorporating artificial intelligence powered immersive realities to improve learning using virtual reality (VR) and augmented reality (AR) technology
    JSG Al Balushi, MIA Al Jabri, S Palarimath, P Maran, K Thenmozhi, ...
    2024 3rd International Conference on Applied Artificial Intelligence and 2024
    Citations: 14

  • A Robust Authentication and Authorization System Powered by Deep Learning and Incorporating Hand Signals
    S Palarimath, NRW Blessing, T Sujatha, M Pyingkodi, BH Ugalde, ...
    Intelligent Data Communication Technologies and Internet of Things 2022
    Citations: 14

  • Barrier-free routes in a geographic information system for mobility impaired people
    BH Ugalde, RR Maaliw, S Palarimath, MB Al Mahri, AA Vinluan, JT Carpio, ...
    2022 IEEE 13th Annual Ubiquitous Computing, Electronics & Mobile 2022
    Citations: 11

  • Powering IoT systems with 5g wireless communication: A comprehensive review
    S Palarimath, M Pyingkodi, K Thenmozhi, M Maqsood, MA Salam, ...
    2023 8th International Conference on Communication and Electronics Systems 2023
    Citations: 8

  • Intelligent data communication technologies and Internet of things: Proceedings of ICICI 2021
    DJ Hemanth, D Pelusi, PS Vuppalapati, Chandrasekar
    Springer Singapore 2022
    Citations: 8

  • Humanoid Robots that can be Used in the Real World
    S Palarimath
    Acta Scientific Computer Sciences 5 (1), 86-87 2022
    Citations: 5

  • Exploring sensor-based smart farming technologies in the internet of things (IoT)
    S Palarimath, P Maran, C Balakumar, T Sujatha
    2024 International Conference on Computing and Data Science (ICCDS), 1-6 2024
    Citations: 3

  • Mining competitors and finding winning plans using feature scoring and ranking-based CMiner++ algorithm: finding top-K competitors
    T Sujatha, WB NR, S Palarimath
    International Journal of Intelligent Information Technologies (IJIIT) 19 (1 2023
    Citations: 3

  • AN INTEGRATED ARTIFICIAL NEURAL NETWORK PROTOTYPE ENABLING REAL-TIME OBJECT DETECTION USING RASPBERRY PI
    S Palarimath, DR Ugalde, Bernard H, Palarimath
    Turkish Journal of Physiotherapy and Rehabilitation 32, 3 2022
    Citations: 3

  • Exploring the Role of Internet of Things in Wireless Sensor Networks for Industry 4.0 Applications
    S Palarimath, P Maran, WB NR, T Sujatha, S Renuga, C RS
    2024 First International Conference on Pioneering Developments in Computer 2024
    Citations: 2

  • Empowering Breast Cancer Detection with AI: A Modified Support Vector Machine Approach for Improved Classification Accuracy
    S Palarimath, P Maran, KV Shiny, T Sujatha, WB NR
    2024 International Conference on Expert Clouds and Applications (ICOECA 2024
    Citations: 2

  • Deep learning Techniques for Identification of Illicit Drug Identification in Youth
    M Pyingkodi, S Parvathavarthini, S Palarimath, D Deepa
    2024 International Conference on Cognitive Robotics and Intelligent Systems 2024
    Citations: 2

  • Performance and Improvement of Linguistic Data Analysis on Different Languages Using Deep Learnedness Techniques
    V Radhakrishnan, A Srinivasulu, S Palarimath, R Gutierrez
    International Journal of Innovative Research in Computer Science and 2023
    Citations: 2

  • Transforming Computer Practice Teaching through Virtual Reality: Trends and Future Directions
    JSG Al Balushi, S Palarimath, CR Mohamed, MIA Al Jabri, ...
    International Journal of Innovative Research in Computer Science and 2024
    Citations: 1