VPS Naidu

@nal.res.in

Chief Scientist
CSIR-National Aerospace Laboratories

VPS Naidu

EDUCATION

DECE
B.Tech
ME
PhD

RESEARCH, TEACHING, or OTHER INTERESTS

Electrical and Electronic Engineering, Artificial Intelligence, Signal Processing, Biomedical Engineering
80

Scopus Publications

2958

Scholar Citations

20

Scholar h-index

36

Scholar i10-index

Scopus Publications

  • Simulation and Fault Classification of Rolling Element Bearings for Precision Machinery Health Monitoring
    Anju Sharma, Taruv Harshita Priya, V. Shanmukha Priya, V. P. S. Naidu
    Springer Proceedings in Materials, 2025
  • Fault Detection in Machine Bearings Using Deep Learning
    A. Vaishnavi, Anju Sharma, VPS Naidu
    SAE Technical Papers, 2024
    <div class="section abstract"><div class="htmlview paragraph">In the contemporary industrial landscape, machinery stands as the cornerstone of various sectors. Over time, these machines undergo wear and tear due to extensive use, leading to the introduction of subtle faults into the machine readings. Recognizing the pivotal role of machinery in diverse industries, the timely detection of these faults becomes imperative. Early fault detection is crucial for preventing costly downtimes, ensuring operational efficiency, and enhancing overall safety. This paper addresses the need for an effective condition monitoring and fault detection system, focusing specifically on the application of the Long Short-Term Memory (LSTM) deep learning model for fault detection in bearings using accelerometer data. The preprocessing phase involves extracting time domain features, encompassing normal, differentiated, integrated, and carefully selected signals, to create an informative dataset tailored for the LSTM model. This model is then meticulously trained on the dataset to discern and accurately diagnose faults within the machinery. The research meticulously observes and reports that the LSTM model achieves an impressive 100% accuracy in fault detection, showcasing its robust capabilities in identifying subtle anomalies within the machine vibrations. In conclusion, the study underscores the critical importance of early fault detection in industrial machinery and highlights the efficacy of the LSTM model in this domain. The singular focus on the LSTM model demonstrates its proficiency in achieving accurate fault detection, contributing significantly to the predictive maintenance field. This research not only advances fault detection methodologies but also fosters a more reliable and sustainable industrial landscape, emphasizing the potential of deep learning techniques, particularly the LSTM model, in ensuring the optimal performance and longevity of machinery in diverse industrial settings.</div></div>
  • Optimizing bearing health condition monitoring: exploring correlation feature selection algorithm
    Anju Sharma, Taruv Harshita Priya, VPS Naidu
    Engineering Research Express, 2024
    Vibration signals are a critical source of information for detecting and diagnosing bearing faults, making this research particularly relevant to the condition monitoring of industrial machinery, particularly bearings using vibration signals. This study delves into how feature selection can be done using Pearson’s Correlation Co-efficient within the context of monitoring bearing health conditions, utilizing two distinct approaches. Approach-1 involves feature selection without considering labels, while Approach-2 incorporates labels for feature selection. Comparative analysis is conducted against outcomes obtained when all features are selected. The research scrutinizes the impact of feature selection on classifier performance, accuracy, and execution times, utilizing various machine learning algorithms such as Decision Tree (DT), K Nearest Neighbor (KNN), Support Vector Machine (SVM), and Naïve Bayes (NB). The findings underscore that feature selection significantly enhances classifier accuracy while reducing execution times. Specifically, only DT and KNN with 50 neighbors achieved 100% accuracy when all features were considered. However, with feature selection using Approach-1 (without labels), DT, KNN, SVM (excluding 100 neighbors), and NB (with Normal/Gaussian kernel) attained 100% accuracy. Employing Approach-2 (with labeled features), DT with 0.7 and 0.9 thresholds, SVM-G with all thresholds (0.6, 0.7, and 0.9), KNN with all thresholds (except 100 neighbors), and NB-n (with all thresholds) achieved 100% accuracy. The study emphasizes the pivotal role of feature selection using Pearson’s Correlation Coefficient in enhancing machine learning classifier performance, offering promising avenues for future research and practical applications across diverse domains.
  • Machine Learning-based Bearing Fault Classification Using Higher Order Spectral Analysis
    Anju Sharma, G.K. Patra, V.P.S. Naidu
    Defence Science Journal, 2024
    In the defense sector, where mission success often hinges on the reliability of complex mechanical systems, the health of bearings within aircraft, naval vessels, ground vehicles, missile systems, drones, and robotic platforms is paramount. Different signal processing techniques along with Higher Order Spectral Analysis (HOSA) have been used in literature for the fault diagnosis of bearings. Bispectral analysis offers a valuable means of finding higher-order statistical associations within signals, thus proving to detect the nonlinearities among Gaussian and non-Gaussian data. Their resilience to noise and capacity to unveil concealed information render them advantageous across a range of applications. Therefore, this research proposesa novel approach of utilizing the features extracted directly from the Bispectrum for classifying the bearing faults, departing from the common practice in other literature where the Bispectrum is treated as an image for fault classification. In this work vibration signalsare used to detect the bearing faults. The features from the non-redundant region and diagonal slice of the Bispectrum are used to capture the statistical and higher-order spectral characteristics of the vibration signal. A set of sixteen machine learning models, viz., Decision Trees, K-Nearest Neighbors, Naive Bayes, and Support Vector Machine, is employed to classify the bearing faults. The evaluation process involves a robust 10-fold cross-validation technique. The results reveal that the Decision Tree algorithm outperformed all others, achieving a remarkable accuracy rate of 100 %. The naive Bayes algorithm also demonstrated the least performance, with an accuracy score of 99.68 %. The results obtained from these algorithms have been compared with those achieved using Convolutional Neural Network (CNN), revealing that the training time of these algorithms is significantly shorter in comparison to CNN.
  • Bispectral analysis and information fusion technique for bearing fault classification
    Anju Sharma, G K Patra, V P S Naidu
    Measurement Science and Technology, 2024
    The feasibility and effectiveness of data fusion for the fault classification of bearing faults have been very well iterated in the literature. However, all previous endeavors have been limited to time, frequency, and time-frequency domain techniques. The use of higher-order spectral analysis (HOSA), especially Bispectrum and Trispectrum, for fault detection is gaining importance in recent studies due to the many advantages of HOSA. Bispectral features provide a valuable tool for capturing higher-order statistical relationships in signals, making them particularly effective in detecting nonlinearities and distinguishing between Gaussian and non-Gaussian data. Their robustness to noise and ability to reveal hidden information make them advantageous in applications such as vibration analysis, speech recognition, and image processing, where complex signal interactions and nonlinearity play a significant role in data interpretation and pattern recognition. This paper proposes a methodology for the fusion of the data from the vibration and the acoustic sensors for the fault detection of roller element bearings using bispectral features. Higher-order spectral characteristics are derived from vibration and acoustic sensor data, and they are fused using artificial neural networks and various other machine learning algorithms like support vector machine, K nearest neighbor, Naïve Bayes algorithm, and decision tree. This work primarily aims to evaluate the performance of each classifier when applied to the fused data, in contrast to the performance when using individual sensor data alone. The outcomes revealed that, even though the accuracy of the acoustic sensor data was lower in comparison to the vibration sensor data, which exhibited the highest performance of 100% accuracy with nearly all the classifiers, the fused data achieved remarkable results of 100% accuracy with artificial neural networks and decision trees. However, the Naïve Bayes algorithm yielded the lowest accuracy when applied to the fused data. The primary objective of this paper is to demonstrate the application of bispectrum analysis for data fusion and to enhance confidence in fault detection. It achieves this by maintaining the capability to accurately and dependably detect faults, even when a single sensor encounters issues or falls short of anticipated performance standards.
  • Exploration of an unconventional validation tool to investigate aero engine transonic fan flutter signature
    A.N. Viswanatha Rao, T.N. Satish, V.P.S. Naidu, Soumendu Jana
    International Journal of Turbo and Jet Engines, 2023
    Flutter, an aeroelastic blade vibration phenomena, experienced by the fan of an developmental aero gas turbine engine, result in blade failure. Hence, suitable flutter detection instrumentation is required during engine testing. Flutter signature capture from revolving blades is a challenging task that necessitates either a complicated strain gauge-based rotating instrumentation or a noncontact tip timing system. Authors investigated a unique way for identifying, measuring, and validating flutter signature by assessing wall static pressure pulsations produced during blade tip transit across a casing mounted high bandwidth sensor during this research. The authors devised a mathematical model to explain signal spectrum components that feature both amplitude and angle modulation properties at the same time. The theory was tested using first-stage fan rotor blades that were fluttering in the first flexural mode (1F) and forming the second nodal diameter (2ND). The approach’s estimated blade deflection was compared to measurements taken using a traditional tip timing method up to 7 mm and determined to be within 1% inaccuracy. This research provides a low-cost, easy alternative technique for measuring flutter during engine development testing.
  • Machine learning augmented multi-sensor data fusion to detect aero engine fan rotor blade flutter
    A. N. Viswanatha Rao, T. N. Satish, V. P. S. Naidu, Soumendu Jana
    International Journal of Turbo and Jet Engines, 2023
    Flutter-induced fatigue failure investigation of the fan blades of aero-engines necessitates extensive testing. During engine ground testing, strain gauges on rotor fan blades and casing vibration sensors were employed to investigate structural dynamic aspects. The correlation between strain sensor signals and fan casing vibration signals allowed the diagnosis of fluttering fan blades. For automated flutter detection during engine development testing, a machine learning-augmented information fusion methodology was developed. The method analyses casing vibration signals by extracting time-domain statistical features, intrinsic mode function characteristics through empirical mode decomposition, and recurrence quantification features. Feature vectors obtained from a relatively large set of engine tests were subjected to dimension reduction by applying machine learning techniques to rank them. Reduced feature vector space was labelled as “flutter” or “normal” based on the correlation of rotor strain gauge signals. In addition, the labelled feature vectors were employed to train classifier models using supervised learning-based algorithms such as Support Vector Machines, Linear Discriminant Analysis, K-means Clustering, and Artificial Neural Networks. Using only vibration signals from the casing, the trained and validated classifiers were able to detect flutter in fan baldes with a 99% probability during subsequent testing.
  • Machine Learning Algorithms for Phonocardiogram Signal Classification
    Chaitra Nijalingappa, VPS Naidu
    4th International Conference on Communication Computing and Industry 6 0 C216 2023, 2023
    Cardiac conditions remain a significant cause of illness and mortality worldwide. Early and accurate diagnosis is crucial for prompt therapies and improved patient outcomes. Phonocardiography, which analyses heart sounds graphically, can assist in identifying various pathologies such as valvar disorders, myocardial infarction, heart murmurs, and abnormal heart rhythms. In this study, we utilised two databases. Dataset 1 has two categories: normal and murmur heart sounds. Dataset 2 has five categories, including one normal and four abnormal types. This report extracts time domain features, frequency domain features, MFCCs, and DWT-based features, which leads to extracting the 77 features in total from phonocardiogram signals. Feature selection techniques were applied and identified the best 21 features out of 77 features with Dataset 1 and the best 14 out of 77 features with Dataset 2. Disease classification uses k-nearest neighbour (KNN), cubic support vector machine (SVM), Kernel SVM, Logistic Regression, and Fine Tree algorithms in MATLAB. The proposed methodology achieved a training accuracy of 94.1% and a testing accuracy of 100% for dataset 1. Similarly, a training accuracy of 98.3% and testing accuracy of 100 <sup xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">%</sup> for dataset 2. This report demonstrates its potential for clinical applications.
  • Blur Removal and Image Merging for Image Enhancement on Python
    Chaitanya Patange, VPS Naidu
    2023 International Conference on Network Multimedia and Information Technology Nmitcon 2023, 2023
    Image Fusion is important to retrieve useful information from a set of images that are given by the user and merge/fuse these images to generate a single output image which is very informative and useful when compared to the input images. In the present work, the blurred images were fused to make clear and informative images. Humans and machines will have good use of the resulting processed image for understanding the details of the captured images through image processing or image fusion methods. In this paper, the image fusion techniques were developed and tested on the Python platform. The image fusion techniques were carried out by suitable algorithms for blur detection and image correction. Another work was carried out to merge images with user-defined parameters to have enhanced image parameters. Image fusion is used in artificial intelligence (AI), intelligent robots, stereo camera fusion, medical imaging, manufacturing process monitoring, electronic circuit design and inspection etc.
  • Performance Evaluation of Classifiers for ECG Signal Analysis
    Sundari Tribhuvanam, H C Nagaraj, V P S Naidu
    2023 International Conference on Artificial Intelligence and Applications Icaia 2023 and Alliance Technology Conference Atcon 1 2023 Proceeding, 2023
    The cardiac well-being of humans can be monitored by non-invasive electrocardiogram (ECG) to a greater extent. Subtle changes in ECG waveform can be identified by computer-assisted tools. Machine learning algorithms play an important role in arrhythmia classification. This paper presents a comparative analysis of various classifiers to support ECG classification. The classification model detects seven arrhythmia types from the generated dataset derived from arrhythmia database of MIT-BIH. The proposed technique considers ECG beat features in time domain based on ECG morphology and statistics. Arrhythmia classification is carried out for seven classes. Performance evaluation is carried out for different classifiers with accuracy, sensitivity, specificity, and F1-score as the evaluation metrics. Classification accuracy up to 97%, Recall up to 92%, F1-score up to 91% and precision up to 91% is achieved with specific classifiers across various arrhythmia classes under consideration.
  • Development of NN-Based Ball Bearing Fault Diagnosis Techniques
    Anju Sharma, Taruv Harshita Priya, G. K. Patra, V. P. S. Naidu
    Smart Innovation Systems and Technologies, 2023
  • Passive Ranging with a Team of Aircraft using Angle only Tracks
    Sanketh Ailneni, Sudesh K Kashyap, V.P.S Naidu, Amitabh Saraf, N.K. Sinha
    2023 9th Indian Control Conference Icc 2023 Proceedings, 2023
  • Airborne Multi Target Track to Track Fusion of Radar and IRST for Advanced Multi Role Combat Aircrafts
    Sanketh Ailneni, Sudesh Kumar Kashyap, VPS Naidu, Amitabh Saraf, Nandan K Sinha
    IFAC Papersonline, 2022
  • Mahalanobis-ANOVA criterion for optimum feature subset selection in multi-class planetary gear fault diagnosis
    Setti Suresh, VPS Naidu
    JVC Journal of Vibration and Control, 2022
  • Vibration analysis of gearbox fault diagnosis using DWT and statistical features
    Setti Suresh, M. Srinivas, V.P.S. Naidu
    Journal of Engineering Research Kuwait, 2022
  • Bearing Health Condition Monitoring- A Brief Exposition
    Anju Sharma, VPS Naidu
    4th International Conference on Circuits Control Communication and Computing I4c 2022, 2022
  • Bearing Fault Classification using Acoustic Features and Artificial Neural Network
    Anju Sharma, G K Patra, VPS Naidu
    4th International Conference on Circuits Control Communication and Computing I4c 2022, 2022
  • Bispectrum and Convolution Neural Network Based Bearing Fault Diagnosis
    Jahnavi Bollineni, Anju Sharma, VPS Naidu
    4th International Conference on Circuits Control Communication and Computing I4c 2022, 2022
  • Passive ranging for infrared search and track system mounted on an aircraft
    Sanketh. Ailneni, Sudesh. K. Kashyap, V. P. S Naidu, Amit K Agarwal, Ajay Kumar
    2nd International Conference on Range Technology Icort 2021, 2021
  • Gearbox Health Condition Monitoring Using DWT Features
    Setti Suresh, V. P. S. Naidu
    Lecture Notes in Mechanical Engineering, 2021
  • Gas Turbine Engine Fan Blade Flutter Detection Using Casing Vibration Signals by Application of Recurrence Plots and Recurrence Quantification Analysis
    A. N. Viswanatha Rao, V. P. S. Naidu, Soumendu Jana
    Lecture Notes in Mechanical Engineering, 2021
  • ECG Abnormality Classification and Analysis with SVM Classifier
    Sundari Tribhuvanam, H. C. Nagaraj, V.P.S. Naidu
    2021 IEEE Mysore Sub Section International Conference Mysurucon 2021, 2021
  • Angle only Tracking for Infrared Search and Track (IRST) System Mounted on an Aircraft
    Sanketh Ailneni, Sudesh K Kashyap, VPS Naidu, Ajay Kumar
    2021 7th Indian Control Conference Icc 2021 Proceedings, 2021
  • Bearing Health Condition Monitoring using Time-Domain Acoustic Signal Features
    Taruv Harshita Priva, Brijeshkumar J Shah, Sadanand S Kulkarni, VPS Naidu
    2021 IEEE 2nd International Conference on Technology Engineering Management for Societal Impact Using Marketing Entrepreneurship and Talent Temsmet 2021, 2021
  • Challenges in engine health monitoring instrumentation during developmental testing of gas turbine engines
    A. N. Vishwanatha Rao, T. N. Satish, Anagha S. Nambiar, Soumemndu Jana, V. P. S. Naidu, G. Uma, M. Umapathy
    Lecture Notes in Mechanical Engineering, 2021
  • UAS Simulator: A Laboratory Set-Up
    Abhishek Kasana, Ajay Misra, VPS Naidu
    International Conference on Emerging Trends in Information Technology and Engineering Ic Etite 2020, 2020
  • Automated Cardiac Health Diagnosis: A Time-Domain Approach
    Sundari Tribhuvanam, HC Nagaraj, VPS Naidu
    International Conference on Emerging Trends in Information Technology and Engineering Ic Etite 2020, 2020
  • Stress detection from EEG using power ratio
    Taruv Harshita Priya, P. Mahalakshmi, VPS Naidu, M. Srinivas
    International Conference on Emerging Trends in Information Technology and Engineering Ic Etite 2020, 2020
  • Vibration Analysis of Heterogeneous Gearbox Faults using EMD Features and SVM Classifier
    Setti Suresh, VPS Naidu
    Iop Conference Series Materials Science and Engineering, 2019
  • Arrhythmia classification with single beat ECG evaluation and support vector machine
    Department of Electronics, University of Mysore, Mysore, India., Sundari Tribhuvanam*, H. C. Nagaraj, Department of Electronics, Nitte Research, Education Academy, Bengaluru-India., V.P.S. Naidu, MSDF, FMCD, CSIR-NAL, Bengaluru-India.
    International Journal of Innovative Technology and Exploring Engineering, 2019
  • ECG Abnormality Classification with Single Beat Analysis
    Sundari Tribhuvanam, H C Nagaraj, V P S Naidu
    Proceedings International Conference on Vision Towards Emerging Trends in Communication and Networking Vitecon 2019, 2019
  • Geo-Localization of Target in 3-Dimensional Coordinate Using SRTM Data
    Prashanth Pai, P. L. Pratyusha, V. P. S. Naidu
    Journal of the Institution of Engineers India Series B, 2019
  • Moving towards a more multiethnic Fiji Military Forces
    Vijay Naidu
    Guns Roses Comparative Civil Military Relations in the Changing Security Environment, 2019
  • Coverage of extreme weather events and natural hazards in Pacific Island Countries: The need for media capacity-building
    Shailendra Singh, Vijay Naidu
    Pacific Journalism Review, 2018
  • Target geo-localization based on camera vision simulation of UAV
    Prashanth Pai, V. P. S. Naidu
    Journal of Optics India, 2017
  • Design and development of LabVIEW based environmental test chamber controller
    M. Sendil Murugan, L. Srikanth, V. P. S. Naidu
    International Conference on Electrical Electronics Communication Computer Technologies and Optimization Techniques Iceeccot 2017, 2017
  • Sense and avoid technology in unmanned aerial vehicles: A review
    B Nikhil Chand, P Mahalakshmi, V P S Naidu
    International Conference on Electrical Electronics Communication Computer Technologies and Optimization Techniques Iceeccot 2017, 2017
  • Survey on UAV navigation in GPS denied environments
    G Balamurugan, J Valarmathi, V P S Naidu
    International Conference on Signal Processing Communication Power and Embedded System Scopes 2016 Proceedings, 2017
  • Sensor network performance and reliability evaluation algorithms
    Durai Arun P., Sathyanarayana C. N., Raja S., Naidu V. P. S.
    Proceedings of SPIE the International Society for Optical Engineering, 2017
  • Damage identification in plate and shell structures by trilateration method using Lamb waves
    Durai Arun P., Sathyanarayana C. N., Raja S., Naidu V. P. S.
    Proceedings of SPIE the International Society for Optical Engineering, 2017
  • Application of vision based techniques for UAV position estimation
    K. C. Saranya, V P S Naidu, Vutsal Singhal, B. M. Tanuja
    International Conference on Research Advances in Integrated Navigation Systems Rains 2016, 2016
  • A pattern recognition approach for identification of transducer-structure debonding using Lamb waves
    P Durai Arun, C. N. Sathyanarayana, S. Raja, V P S Naidu
    Proceedings of the 3rd International Conference on Devices Circuits and Systems Icdcs 2016, 2016
  • Vulnerability, resilience and dynamism of the custom economy in Melanesia
    Household Vulnerability and Resilience to Economic Shocks Findings from Melanesia, 2016
  • Synthetic aerial image generation for miniature aerial system
    Srikanth A, L Krishnamurthy, L P Prathyusha, VPS Naidu
    International Conference on Trends in Automation Communication and Computing Technologies I Tact 2015, 2016
  • Multi-Sensor Image Fusion Using Discrete Cosine Transform
    V. P. S. Naidu
    Mobile Intelligent Autonomous Systems, 2016
  • Determination of Impact and Launch Points of a Mobile Vehicle Using Kalman Filter and Smoother
    Jitendra R. Raol, V. P. S. Naidu
    Mobile Intelligent Autonomous Systems, 2016
  • Six object tracking algorithms: A comparative study
    Vaibhav Kumar Agarwal, N. Sivakumaran, V. P. S. Naidu
    Indian Journal of Science and Technology, 2016
  • Multi-spectrum-based enhanced synthetic vision system for aircraft DVE operations
    Sudesh K. Kashyap, V.P.S. Naidu, Shanthakumar N.
    Proceedings of SPIE the International Society for Optical Engineering, 2016
  • MAS simulator: A laboratory set up
    B. Indhu, N. Sivakumaran, A Srikanth, V P S Naidu
    Proceedings 2015 International Conference on Cognitive Computing and Information Processing Ccip 2015, 2015
  • Bearing health condition monitoring: Wavelet decomposition
    V. Shanmukha Priya, P. Mahalakshmi, V. P. S. Naidu
    Indian Journal of Science and Technology, 2015
  • Vulnerability, resilience and dynamism of the custom economy in Melanesia
    Household Vulnerability and Resilience to Economic Shocks Findings from Melanesia, 2014
  • Hybrid DDCT-PCA based multi sensor image fusion
    V. P. S. Naidu
    Journal of Optics India, 2014
  • Integrated enhanced and synthetic vision system for transport aircraft
    N. Kumar, Sudesh Kashyap, V. Naidu, Girija Gopalratnam
    Defence Science Journal, 2013
  • Aircraft Altitude Estimation Using Un-calibrated Onboard Cameras
    V. P. S. Naidu, J. Mukherjee
    Journal of the Institution of Engineers India Series C, 2012
  • Multi focus image fusion using the measure of focus
    V. P. S. Naidu
    Journal of Optics India, 2012
  • Multi-resolution image fusion by FFT
    VPS Naidu
    Iciip 2011 Proceedings 2011 International Conference on Image Information Processing, 2011
  • Experimental study with enhanced vision system prototype unit
    VPS Naidu, P. Narayana Rao, Sudesh K Kashyap, N. Shanthakumar, G. Girija
    Iciip 2011 Proceedings 2011 International Conference on Image Information Processing, 2011
  • Image fusion technique using multi-resolution singular value decomposition
    V.P.S. Naidu
    Defence Science Journal, 2011
  • Gender security and trade: The millennium development goals in the Pacific
    Development in an Insecure and Gendered World the Relevance of the Millennium Goals, 2010
  • Discrete cosine transform-based image fusion
    V. Naidu
    Defence Science Journal, 2010
  • Fusion of IRST and radar measurements for 3D target tracking
    Journal of the Institution of Engineers India Aerospace Engineering Journal, 2009
  • Fusion of radar and IRST sensor measurements for 3D target tracking using extended Kalman filter
    V. Naidu
    Defence Science Journal, 2009
  • Decentralized multi passive sensor system for 3D target tracking
    46th AIAA Aerospace Sciences Meeting and Exhibit, 2008
  • Evaluation of acceleration and jerk models in radar and IRST data fusion for tracking evasive maneuvering target
    46th AIAA Aerospace Sciences Meeting and Exhibit, 2008
  • Pixel-level image fusion using wavelets and principal component analysis
    V. Naidu, J. Raol
    Defence Science Journal, 2008
  • Three model IMM-EKF for tracking targets executing evasive maneuvers
    Collection of Technical Papers 45th AIAA Aerospace Sciences Meeting, 2007
  • Target tracking with multi acoustic array sensors data
    V.P.S. Naidu, J.R. Raol
    Defence Science Journal, 2007
  • Data fusion for identity estimation and tracking of centroid using imaging sensor data
    V.P.S. Naidu, Girija G., J. R. Raol
    Defence Science Journal, 2007
  • Estimation of launch and impact points of a flight trajectory using U-D Kalman filter/smoother
    V.P.S. Naidu, Girija G., J.R. Raol
    Defence Science Journal, 2006
  • Target tracking and fusion using imaging sensor and ground based radar data
    Collection of Technical Papers AIAA Guidance Navigation and Control Conference, 2005
  • Data association and fusion algorithms for tracking in presence of measurement loss
    Journal of the Institution of Engineers India Aerospace Engineering Journal, 2005
  • Mathematical Modelling of Aerospace Dynamic Systems with Practical Applications
    Jitendra R. Raol, V.P.S. Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical Applications, 2005
  • Target location and identity estimation and fusion using disparate sensor data
    Parthsarathy Naidu, Mohammed Mudassar, G Girija, Jitendra Raol
    Collection of Technical Papers AIAA Guidance Navigation and Control Conference, 2005
  • Time-frequency analysis of heart rate time series
    IEEE Region 10 Annual International Conference Proceedings TENCON, 2004
  • Economic cost of human capital loss from Fiji: Implications for sustainable development
    Mahendra Reddy, Manoranjan Mohanty, Vijay Naidu
    International Migration Review, 2004
  • Autoregressive (AR) based power spectral analysis of heart rate time series signal (HRTS signal)
    IEEE Region 10 Annual International Conference Proceedings TENCON, 2003
  • Evaluation of data association and fusion algorithms for tracking in the presence of measurement loss
    AIAA Guidance Navigation and Control Conference and Exhibit, 2003
  • Time-variant power spectral analysis of heart-rate time series by autoregressive moving average (ARMA) method
    V P S Naidu, M R S Reddy
    Sadhana Academy Proceedings in Engineering Sciences, 2003
  • Bispectrum analysis of phase locking in the heart rate time series signal
    V P S Naidu
    IETE Technical Review Institution of Electronics and Telecommunication Engineers India, 2002
  • Time-frequency distribution of HRV signal by wigner-ville spectral analysis in MI patients
    V P S Naidu
    IETE Technical Review Institution of Electronics and Telecommunication Engineers India, 2001

RECENT SCHOLAR PUBLICATIONS

  • Data fusion mathematics: theory and practice
    JR Raol, SS Selvi, SK Kashyap, A Sanketh
    CRC Press , 2025
    2025
    Citations: 70
  • Feature Tracking/Mapping Using a Vision and GPS/INS System on a UAV Platform
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Satellite Orbit Determination
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Object Detection and Tracking from UAV with Thermal Camera
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Terrain-Assisted Underwater Vehicle Navigation
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Models Used in Target Tracking and Data Fusion
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Flight Mechanics Models
    JR Raol, VPS Naidu
    Mathematical Modelling of Aerospace Dynamic Systems with Practical … , 2025
    2025
  • Mathematical Modelling of Aerospace Dynamic Systems with Practical Applications
    JR Raol, VPS Naidu
    CRC Press , 2025
    2025
  • Gearbox fault detection in industrial and wind turbine applications using a deterministic GMF parameter and SVM algorithm
    S Suresh, TN Reddy, VPS Naidu, G Chakaravarthi
    Manufacturing Technology Today 24 (3-4), 1-11 , 2025
    2025
  • MULTI-SCALE RECURRENCE QUANTIFICATION ANALYSIS OF TIME SERIES FOR BEARING HEALTH MONITORING
    A SHARMA, VPS NAIDU
    SCIENCE AND CULTURE 91, 73-82 , 2025
    2025
  • Optimizing bearing health condition monitoring: exploring correlation feature selection algorithm
    A Sharma, TH Priya, VPS Naidu
    Engineering Research Express 6 (2), 025511 , 2024
    2024
    Citations: 4
  • Fault Detection in Machine Bearings Using Deep Learning
    A Vaishnavi, A Sharma, VPS Naidu
    AeroCON 2024 , 2024
    2024
  • Machine learning based bearing fault classification using higher order spectral analysis
    A Sharma, GK Patra, VPS Naidu
    Defence Science Journal 74 (4), 505-516 , 2024
    2024
    Citations: 7
  • Simulation and Fault Classification of Rolling Element Bearings for Precision Machinery Health Monitoring
    A Sharma, TH Priya, VS Priya, VPS Naidu
    ISAMPE National Conference on Composites, 117-136 , 2024
    2024
  • Exploration of an unconventional validation tool to investigate aero engine transonic fan flutter signature
    AN Viswanatha Rao, TN Satish, VPS Naidu, S Jana
    International Journal of Turbo & Jet-Engines 40 (s1), s155-s168 , 2024
    2024
    Citations: 3
  • Machine learning augmented multi-sensor data fusion to detect aero engine fan rotor blade flutter
    ANV Rao, TN Satish, VPS Naidu, S Jana
    International Journal of Turbo & Jet-Engines 40 (s1), s485-s506 , 2024
    2024
    Citations: 8
  • Bispectral analysis and information fusion technique for bearing fault classification
    A Sharma, GK Patra, VPS Naidu
    Measurement Science and Technology 35 (1), 015124 , 2024
    2024
    Citations: 12
  • Passive Ranging with a Team of Aircraft using Angle Only Tracks
    S Ailneni, SK Kashyap, VPS Naidu, A Saraf, NK Sinha
    2023 Ninth Indian Control Conference (ICC), 108-113 , 2023
    2023
    Citations: 1
  • Machine Learning Algorithms for Phonocardiogram Signal Classification
    C Nijalingappa, VPS Naidu
    2023 4th International Conference on Communication, Computing and Industry 6 … , 2023
    2023
    Citations: 2
  • Modeling of Underwater Acoustic signal propagation of LFM and HFM pulse: An Active Sonar Communication systems
    VS Naidu, PR Kumar, KS Babu
    2023 International Symposium on Ocean Technology (SYMPOL), 1-7 , 2023
    2023
    Citations: 3

MOST CITED SCHOLAR PUBLICATIONS

  • Pixel-level image fusion using wavelets and principal component analysis
    VPS Naidu, JR Raol
    Defence science journal 58 (3), 338-352 , 2008
    2008
    Citations: 633
  • Image fusion technique using multi-resolution singular value decomposition
    VPS Naidu
    Defence Science Journal 61 (5), 479-484 , 2011
    2011
    Citations: 378
  • Multi-sensor data fusion with MATLAB
    JR Raol
    CRC press , 2009
    2009
    Citations: 356
  • Survey on UAV navigation in GPS denied environments
    G Balamurugan, J Valarmathi, VPS Naidu
    2016 International conference on signal processing, communication, power and … , 2016
    2016
    Citations: 293
  • Discrete cosine transform-based image fusion
    VPS Naidu
    Defence Science Journal 60 (1), 48-54 , 2010
    2010
    Citations: 113
  • Discrete cosine transform based image fusion techniques
    VPS Naidu
    Journal of Communication, Navigation and Signal Processing 1 (1), 35-45 , 2012
    2012
    Citations: 104
  • Hybrid DDCT-PCA based multi sensor image fusion
    VPS Naidu
    Journal of Optics 43 (1), 48-61 , 2014
    2014
    Citations: 73
  • Data fusion mathematics: theory and practice
    JR Raol, SS Selvi, SK Kashyap, A Sanketh
    CRC Press , 2025
    2025
    Citations: 70
  • A novel image fusion technique using DCT based Laplacian pyramid
    VPS Naidu, B Elias
    International Journal of Inventive Engineering and Sciences (IJIES) ISSN … , 2013
    2013
    Citations: 65
  • Stress detection from EEG using power ratio
    TH Priya, P Mahalakshmi, VPS Naidu, M Srinivas
    2020 International conference on emerging trends in information technology … , 2020
    2020
    Citations: 58
  • Sense and avoid technology in unmanned aerial vehicles: A review
    BN Chand, P Mahalakshmi, VPS Naidu
    2017 International Conference on Electrical, Electronics, Communication … , 2017
    2017
    Citations: 40
  • Multi-resolution image fusion by FFT
    VPS Naidu
    2011 International Conference on Image Information Processing, 1-6 , 2011
    2011
    Citations: 38
  • Novel image fusion techniques using DCT
    VPS Naidu
    International Journal of computer science and business informatics 5 (1), 1-18 , 2013
    2013
    Citations: 35
  • Three model IMM-EKF for tracking targets executing evasive maneuvers
    VPS Naidu, G Gopalaratnam, N Shanthakumar
    45th AIAA Aerospace Sciences Meeting and Exhibit, 1204 , 2007
    2007
    Citations: 35
  • Multi-modal medical image fusion using multi-resolution discrete sine transform
    VPS Naidu, M Divya, P Mahalakshmi
    Control and Data Fusion e-Journal 1 (2), 13-26 , 2017
    2017
    Citations: 26
  • Evaluation of data association and fusion algorithms for tracking in the presence of measurement loss
    VP Naidu, G Girija, J Raol
    AIAA Guidance, Navigation, and Control Conference and Exhibit, 5733 , 2003
    2003
    Citations: 26
  • Application of vision based techniques for UAV position estimation
    KC Saranya, VPS Naidu, V Singhal, BM Tanuja
    2016 International Conference on Research Advances in Integrated Navigation … , 2016
    2016
    Citations: 23
  • Fusion of out of focus images using principal component analysis and spatial frequency
    VPS Naidu, JR Raol
    Journal of Aerospace Sciences and Technologies, 216-225 , 2008
    2008
    Citations: 23
  • Bearing health condition monitoring: time domain analysis
    L Pratyusha, S Priya, VPS Naidu
    International Journal of Advanced Research in Electrical, Electronics and … , 2014
    2014
    Citations: 21
  • Geo-fencing for unmanned aerial vehicle
    P Pratyusha, V Naidu
    International Journal of Computer Applications 975, 8887 , 2013
    2013
    Citations: 21