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Faculty Dr V Udaya Sankar

Dr V Udaya Sankar

Assistant Professor

Department of Electronics and Communication Engineering

Contact Details

udayasankar.v@srmap.edu.in

Office Location

AGA and Hardware Securities Lab, 209,JC Bose Research Block

Education

2018
Ph.D.
Indian Institute of Science
India
2004
Masters
Indian Institute of Technology
India
2000
Bachelors
Sreevidyaniketan Engineering College
India

Experience

  • May 2018 - November 2018, Research Executive | K2O Consulting, Bangalore
  • April 2016 - January 2017, Baseband Systems Lead | Astrome Technologies, Bangalore
  • December 2006 - July 2009, Software Engineer | L&T Infotech, Bangalore
  • May 2005 - April 2006, Member Technical Staff | Sarayu Softtech, Chennai
  • July 2000 - January 2001, Lecturer | Sreenivasa Institute of Technology and Management studies, Chittoor (AP)

Research Interest

  • Resource allocation in femtocells via Game theory: In this thesis work, we worked on interference mitigation between Femtocells and Macrocell for the case where both user and Femto Basestation (FBS) has single antenna. Eventhough we obtain efficient algorithm for the case where QoS of all users within a Femtocell satisfied, but in the case of where QoS not satisfied for some/all users within a Femtocell we obtained fair allocation of algorithms. Here I will be investigating various mechanisms (for example usage of multiple antennas at both user and FBS) to get effective algorithms for interference mitigation but still all user’s rate requirements are satisfied within a Femtocell.
  • IoT for Agriculture: Main objective is to get end to end solution for Agriculture using Internet of Things. In the first phase we are considering disease prediction using images from leafs predicting whether a particular plant needs water or not based on input from soil moister sensor, weather sensor and temperature sensor. Later, we extend this to the case by considering disease as input to predict needful of water and extending to multiple plants (large area of agriculture land) and also using advance algorithms such as Deep learning Main objective is to obtain papers and prototype.
  • IoT application to Structural Health Monitoring of Roads: In the first phase we consider distress detection of roads with following steps. Given an image how to predict distress for road using simple image processing techniques. Later we will be extending to complex algorithms such as Machine learning and Deep learning. Next step is to collecting image using cameras: Since we have to take pictures from large areas hence we will be investigating and proposing various methods to obtain images. Main objective is to obtain papers and prototype
  • Transceiver design for 5G Wireless Communications: In the first phase we are considering channel models & simulations using Matlab and Python for various scenarios. Later we will be considering Digital beam forming algorithms as well as various modulation formats to design communication link for few use cases such as fixed transmitter & receiver, moving transmitter & fixed receiver etc.. Main objective is to obtain papers and prototype.

Awards

  • 2002-Gate-MHRD
  • 2008-AOTS Scholar-Hindu-Hitachi (Technical scholarship programme)

Memberships

  • Senior Member, IEEE
  • Associate Member, IETE
  • Member, SIAM
  • Member, The Institution of Engineers (India)

Publications

  • Deep Transfer-Learning Model for COVID-19 Diagnosis with Feature Extraction-Based SVM and KNN Classifiers

    Dr V Udaya Sankar, Rahul Goutam Poola, Siva Sankar Yellampalli

    Source Title: Data-Centric AI Solutions and Emerging Technologies in the Healthcare Ecosystem, DOI Link

    View abstract ⏷

    Due to the augmented rise of COVID-19, clinical specialists are looking for fast faultless diagnosis strategies to restrict COVID spread while attempting to lessen the computational complexity. In this way, swift diagnosis techniques for COVID-19 with high precision can offer valuable aid to clinical specialists. RT-PCR test is an expensive and tedious COVID diagnosis technique in practice. Medical imaging is feasible to diagnose COVID-19 by X-ray chest radiography to get around the shortcomings of RT-PCR. Through a variety of deep transfer-learning models, this research investigates the potential of AI-based early diagnosis of COVID-19 via X-ray chest radiographs. With 13000 normal and 3000 COVID X-ray chest radiographs, the deep transfer-learning models are optimized to further the accurate diagnosis. By using contrast variation and picture scaling techniques during the image pre-processing phase, the quality of the input x-ray chest radiographs is altered to improve the diagnosis accuracy. The altered x-ray chest radiographs undergo a data augmentation phase before developing a modified dataset to train the deep transfer-learning models (Khang et al., 2023a). The deep transfer-learning architectures are trained using a feature extraction/edge detection-based decision boundary. During training, the classification of X-ray chest radiographs based on feature extraction algorithm values is converted into a feature label set containing the classified image data with a feature string value representing the number of edges detected after edge detection (Morris et al., 2023). The feature label set is further tested with the SVM classifier and KNN classifier to audit the quality metrics of the proposed model. The quality metrics include confusion matrix, accuracy, precision, F1 score, recall, and ROC-AUC. The Inception-V3 dominates the six deep transfer-learning models, according to the assessment results, with a training accuracy of 84.79 % and a loss function of 2.4%. The performance of Cubic SVM was superior to that of the other SVM classifiers, with an AUC score of 0.99, precision of 0.983, recall of 0.8977, accuracy of 95.8%, and F1 score of 0.9384. Cosine KNN fared better than the other KNN classifiers with an AUC score of 0.95, precision of 0.974, recall of 0.777, accuracy of 90.8%, and an F1 score of 0.864. The performance assessment metrics uncover that the proposed methodology can aid in preliminary COVID diagnosis.
  • A Survey of PCB Defect Detection Algorithms

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed circuit boards (PCBs) are the first stage in manufacturing any electronic product. The reliability of the electronic product depends on the PCB. The presence of manufacturing defects in PCBs might affect the performance of the PCB and thereby the reliability of the electronic products. In this paper, the various challenges faced in identifying manufacturing defects along with a review of various learning methods employed for defect detection are presented. We compare the various techniques available in the literature for further understanding of the accuracy of these techniques in defect detection.
  • A Review of Various Defects in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) are the building blocks for all electronic products. Fabrication of a PCB involves various mechanical and chemical processes. As obtaining accuracy in the mechanical and chemical processes is very difficult, various defects/faults are formed during PCBs fabrication. These fabrication defects lead to performance degradation of electronic products. In this review, we describe various defects present in PCBs under the Through hole and SMD categories. To understand the frequency of occurrence and reason for the occurrence of defects in both manual and machine, PCB fabrication data was collected and analysed from April 2017 to July 2020 as a part of industry collaboration.
  • NETWORK RESOURCE ALLOCATION FOR EMERGENCY MANAGEMENT BASED ON CLOSED-LOOP ANALYSIS

    Dr V Udaya Sankar, Ibrahim Aliyu., Sai Jnaneswar Juvvisetty., V M V S Aditya., Guda Blessed., Shabnam Sultana

    Source Title: ITU Journal on Future and Evolving Technologies, DOI Link

    View abstract ⏷

    -
  • Empirical Study on Citation Count Prediction of Research Articles

    Dr Murali Krishna Enduri, Dr V Udaya Sankar, Mr Koduru Hajarathaiah

    Source Title: Journal of Scientometric Research, Quartile: Q2, DOI Link

    View abstract ⏷

    Citation is a measure that quantifies the impact of the researcher, research article and journal’s quality. Investigating the citation of articles and/or researchers is one of the important tasks in the research community. So, understanding and predicting citation patterns of research articles has become popular in scientific research fields. In this work, we give a machine learning approach to predict the citations of research articles using the keywords. We study the citation impact based on keywords motioned in the articles using the data set of publications which are published in the various physical review journals from 1985-2012. In this dataset, for each publication is allocated some PACS codes (keywords) by their authors which represent a sub-field of Physics. In this work, we are investigating the impact of PACS codes of article on article’s citation. We are performing our analysis on the first (sub-field of physics), second (sub area of sub-field of physics) and third level of PACS codes. We observed that compared to the first level, every pair of citation patterns of the second level is highly correlated. We also obtained a universal approximation curve for the third level that matches with the average value of the first level. This curve looks like a shifted and scaled version of the Gaussian function and is right skewed. We can also predict the citations based on the keywords by using this universal curve.
  • Image based Road distress detection

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON), DOI Link

    View abstract ⏷

    Infrastructure plays an important role in the development of any nation. Roads are very important for the movement of humans and goods. Good road infrastructure reduces travel time and cost. Poor road infrastructure can cause an increase in travel time, more consumption of fuel and lead to accidents due to difficulty in driving. All these factors will have a cascading effect on the economy as the prices of essential commodities are directly related to the easy of transportation. Hence, it is necessary to detect the distresses on roads like potholes and do regular repairs. Initially, manual inspection was done by the concerned employers, who go check the roads and take note of the areas where there is a requirement of repair. This method involves a lot of time and labor. With the development in technology, the focus on implementing a smart method of inspection increased. To build an accurate and quick detection system, an Earth Mover's Distance (EMD) based model is proposed in this paper. This algorithm finds the presence of road distress by comparing the image of the current testing road with that of the reference image. The experiment also considers the chance of occurrence of Gaussian noise and Salt and Pepper noise while capturing the images, to fit the real-world situations.
  • A Reference Based Approach to Detect Short Faults in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 Fifth International Conference On Intelligent Computing in Data Sciences (ICDS), DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) have become an inevitable component in all electronic devices, including the gadgets that we use in our day-to-day life. To maintain the quality of a product it is necessary to make sure the PCB is void of defects. To identify whether PCB has defects or not, it has to undergo tests in various stages. In this paper, we propose a reference-based model using Wasserstein distance metric to detect short faults in PCBs. The study includes the effect of Gaussian and Salt-Pepper Noise have on fault detection, which usually occurs in the images procured by digital cameras.

Patents

  • A system and method with matrix enabled road distress classification with reduced computational complexity and reduced memory requirements

    Dr V Udaya Sankar

    Patent Application No: 202141056542, Date Filed: 06/12/2021, Date Published: 10/12/2021, Status: Published

  • A mobile phone assisted image based attendance system and a method thereof

    Dr V Udaya Sankar

    Patent Application No: 202241052169, Date Filed: 13/09/2022, Date Published: 14/10/2022, Status: Published

  • An ai-enabled sensor system and method for identifying quality of bio samples in liquid state

    Dr V Udaya Sankar, Dr Sreenivasulu Tupakula

    Patent Application No: 202341085523, Date Filed: 14/12/2023, Date Published: 12/01/2024, Status: Published

  • A Hybrid Deep Learning System for Classifying Nutrient Deficiencies in Soil and a method thereof

    Dr V Udaya Sankar, Dr M Ramakrishnan, Dr Vaddi Ramesh

    Patent Application No: 202541053470, Date Filed: 02/06/2025, Date Published: 13/06/2025, Status: Published

Projects

  • Data driven Mechanism for design Mechanism

    Dr V Udaya Sankar

    Funding Agency: Sponsored projects - DST-SERB TARE, Budget Cost (INR) Lakhs: 18.30, Status: On Going

Scholars

Doctoral Scholars

  • Arepalli Sathi Babu

Interests

  • Game Theory
  • Machine Learning
  • Signal Processing

Thought Leaderships

There are no Thought Leaderships associated with this faculty.

Top Achievements

Education
2000
Bachelors
Sreevidyaniketan Engineering College
India
2004
Masters
Indian Institute of Technology
India
2018
Ph.D.
Indian Institute of Science
India
Experience
  • May 2018 - November 2018, Research Executive | K2O Consulting, Bangalore
  • April 2016 - January 2017, Baseband Systems Lead | Astrome Technologies, Bangalore
  • December 2006 - July 2009, Software Engineer | L&T Infotech, Bangalore
  • May 2005 - April 2006, Member Technical Staff | Sarayu Softtech, Chennai
  • July 2000 - January 2001, Lecturer | Sreenivasa Institute of Technology and Management studies, Chittoor (AP)
Research Interests
  • Resource allocation in femtocells via Game theory: In this thesis work, we worked on interference mitigation between Femtocells and Macrocell for the case where both user and Femto Basestation (FBS) has single antenna. Eventhough we obtain efficient algorithm for the case where QoS of all users within a Femtocell satisfied, but in the case of where QoS not satisfied for some/all users within a Femtocell we obtained fair allocation of algorithms. Here I will be investigating various mechanisms (for example usage of multiple antennas at both user and FBS) to get effective algorithms for interference mitigation but still all user’s rate requirements are satisfied within a Femtocell.
  • IoT for Agriculture: Main objective is to get end to end solution for Agriculture using Internet of Things. In the first phase we are considering disease prediction using images from leafs predicting whether a particular plant needs water or not based on input from soil moister sensor, weather sensor and temperature sensor. Later, we extend this to the case by considering disease as input to predict needful of water and extending to multiple plants (large area of agriculture land) and also using advance algorithms such as Deep learning Main objective is to obtain papers and prototype.
  • IoT application to Structural Health Monitoring of Roads: In the first phase we consider distress detection of roads with following steps. Given an image how to predict distress for road using simple image processing techniques. Later we will be extending to complex algorithms such as Machine learning and Deep learning. Next step is to collecting image using cameras: Since we have to take pictures from large areas hence we will be investigating and proposing various methods to obtain images. Main objective is to obtain papers and prototype
  • Transceiver design for 5G Wireless Communications: In the first phase we are considering channel models & simulations using Matlab and Python for various scenarios. Later we will be considering Digital beam forming algorithms as well as various modulation formats to design communication link for few use cases such as fixed transmitter & receiver, moving transmitter & fixed receiver etc.. Main objective is to obtain papers and prototype.
Awards & Fellowships
  • 2002-Gate-MHRD
  • 2008-AOTS Scholar-Hindu-Hitachi (Technical scholarship programme)
Memberships
  • Senior Member, IEEE
  • Associate Member, IETE
  • Member, SIAM
  • Member, The Institution of Engineers (India)
Publications
  • Deep Transfer-Learning Model for COVID-19 Diagnosis with Feature Extraction-Based SVM and KNN Classifiers

    Dr V Udaya Sankar, Rahul Goutam Poola, Siva Sankar Yellampalli

    Source Title: Data-Centric AI Solutions and Emerging Technologies in the Healthcare Ecosystem, DOI Link

    View abstract ⏷

    Due to the augmented rise of COVID-19, clinical specialists are looking for fast faultless diagnosis strategies to restrict COVID spread while attempting to lessen the computational complexity. In this way, swift diagnosis techniques for COVID-19 with high precision can offer valuable aid to clinical specialists. RT-PCR test is an expensive and tedious COVID diagnosis technique in practice. Medical imaging is feasible to diagnose COVID-19 by X-ray chest radiography to get around the shortcomings of RT-PCR. Through a variety of deep transfer-learning models, this research investigates the potential of AI-based early diagnosis of COVID-19 via X-ray chest radiographs. With 13000 normal and 3000 COVID X-ray chest radiographs, the deep transfer-learning models are optimized to further the accurate diagnosis. By using contrast variation and picture scaling techniques during the image pre-processing phase, the quality of the input x-ray chest radiographs is altered to improve the diagnosis accuracy. The altered x-ray chest radiographs undergo a data augmentation phase before developing a modified dataset to train the deep transfer-learning models (Khang et al., 2023a). The deep transfer-learning architectures are trained using a feature extraction/edge detection-based decision boundary. During training, the classification of X-ray chest radiographs based on feature extraction algorithm values is converted into a feature label set containing the classified image data with a feature string value representing the number of edges detected after edge detection (Morris et al., 2023). The feature label set is further tested with the SVM classifier and KNN classifier to audit the quality metrics of the proposed model. The quality metrics include confusion matrix, accuracy, precision, F1 score, recall, and ROC-AUC. The Inception-V3 dominates the six deep transfer-learning models, according to the assessment results, with a training accuracy of 84.79 % and a loss function of 2.4%. The performance of Cubic SVM was superior to that of the other SVM classifiers, with an AUC score of 0.99, precision of 0.983, recall of 0.8977, accuracy of 95.8%, and F1 score of 0.9384. Cosine KNN fared better than the other KNN classifiers with an AUC score of 0.95, precision of 0.974, recall of 0.777, accuracy of 90.8%, and an F1 score of 0.864. The performance assessment metrics uncover that the proposed methodology can aid in preliminary COVID diagnosis.
  • A Survey of PCB Defect Detection Algorithms

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed circuit boards (PCBs) are the first stage in manufacturing any electronic product. The reliability of the electronic product depends on the PCB. The presence of manufacturing defects in PCBs might affect the performance of the PCB and thereby the reliability of the electronic products. In this paper, the various challenges faced in identifying manufacturing defects along with a review of various learning methods employed for defect detection are presented. We compare the various techniques available in the literature for further understanding of the accuracy of these techniques in defect detection.
  • A Review of Various Defects in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) are the building blocks for all electronic products. Fabrication of a PCB involves various mechanical and chemical processes. As obtaining accuracy in the mechanical and chemical processes is very difficult, various defects/faults are formed during PCBs fabrication. These fabrication defects lead to performance degradation of electronic products. In this review, we describe various defects present in PCBs under the Through hole and SMD categories. To understand the frequency of occurrence and reason for the occurrence of defects in both manual and machine, PCB fabrication data was collected and analysed from April 2017 to July 2020 as a part of industry collaboration.
  • NETWORK RESOURCE ALLOCATION FOR EMERGENCY MANAGEMENT BASED ON CLOSED-LOOP ANALYSIS

    Dr V Udaya Sankar, Ibrahim Aliyu., Sai Jnaneswar Juvvisetty., V M V S Aditya., Guda Blessed., Shabnam Sultana

    Source Title: ITU Journal on Future and Evolving Technologies, DOI Link

    View abstract ⏷

    -
  • Empirical Study on Citation Count Prediction of Research Articles

    Dr Murali Krishna Enduri, Dr V Udaya Sankar, Mr Koduru Hajarathaiah

    Source Title: Journal of Scientometric Research, Quartile: Q2, DOI Link

    View abstract ⏷

    Citation is a measure that quantifies the impact of the researcher, research article and journal’s quality. Investigating the citation of articles and/or researchers is one of the important tasks in the research community. So, understanding and predicting citation patterns of research articles has become popular in scientific research fields. In this work, we give a machine learning approach to predict the citations of research articles using the keywords. We study the citation impact based on keywords motioned in the articles using the data set of publications which are published in the various physical review journals from 1985-2012. In this dataset, for each publication is allocated some PACS codes (keywords) by their authors which represent a sub-field of Physics. In this work, we are investigating the impact of PACS codes of article on article’s citation. We are performing our analysis on the first (sub-field of physics), second (sub area of sub-field of physics) and third level of PACS codes. We observed that compared to the first level, every pair of citation patterns of the second level is highly correlated. We also obtained a universal approximation curve for the third level that matches with the average value of the first level. This curve looks like a shifted and scaled version of the Gaussian function and is right skewed. We can also predict the citations based on the keywords by using this universal curve.
  • Image based Road distress detection

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON), DOI Link

    View abstract ⏷

    Infrastructure plays an important role in the development of any nation. Roads are very important for the movement of humans and goods. Good road infrastructure reduces travel time and cost. Poor road infrastructure can cause an increase in travel time, more consumption of fuel and lead to accidents due to difficulty in driving. All these factors will have a cascading effect on the economy as the prices of essential commodities are directly related to the easy of transportation. Hence, it is necessary to detect the distresses on roads like potholes and do regular repairs. Initially, manual inspection was done by the concerned employers, who go check the roads and take note of the areas where there is a requirement of repair. This method involves a lot of time and labor. With the development in technology, the focus on implementing a smart method of inspection increased. To build an accurate and quick detection system, an Earth Mover's Distance (EMD) based model is proposed in this paper. This algorithm finds the presence of road distress by comparing the image of the current testing road with that of the reference image. The experiment also considers the chance of occurrence of Gaussian noise and Salt and Pepper noise while capturing the images, to fit the real-world situations.
  • A Reference Based Approach to Detect Short Faults in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 Fifth International Conference On Intelligent Computing in Data Sciences (ICDS), DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) have become an inevitable component in all electronic devices, including the gadgets that we use in our day-to-day life. To maintain the quality of a product it is necessary to make sure the PCB is void of defects. To identify whether PCB has defects or not, it has to undergo tests in various stages. In this paper, we propose a reference-based model using Wasserstein distance metric to detect short faults in PCBs. The study includes the effect of Gaussian and Salt-Pepper Noise have on fault detection, which usually occurs in the images procured by digital cameras.
Contact Details

udayasankar.v@srmap.edu.in

Scholars

Doctoral Scholars

  • Arepalli Sathi Babu

Interests

  • Game Theory
  • Machine Learning
  • Signal Processing

Education
2000
Bachelors
Sreevidyaniketan Engineering College
India
2004
Masters
Indian Institute of Technology
India
2018
Ph.D.
Indian Institute of Science
India
Experience
  • May 2018 - November 2018, Research Executive | K2O Consulting, Bangalore
  • April 2016 - January 2017, Baseband Systems Lead | Astrome Technologies, Bangalore
  • December 2006 - July 2009, Software Engineer | L&T Infotech, Bangalore
  • May 2005 - April 2006, Member Technical Staff | Sarayu Softtech, Chennai
  • July 2000 - January 2001, Lecturer | Sreenivasa Institute of Technology and Management studies, Chittoor (AP)
Research Interests
  • Resource allocation in femtocells via Game theory: In this thesis work, we worked on interference mitigation between Femtocells and Macrocell for the case where both user and Femto Basestation (FBS) has single antenna. Eventhough we obtain efficient algorithm for the case where QoS of all users within a Femtocell satisfied, but in the case of where QoS not satisfied for some/all users within a Femtocell we obtained fair allocation of algorithms. Here I will be investigating various mechanisms (for example usage of multiple antennas at both user and FBS) to get effective algorithms for interference mitigation but still all user’s rate requirements are satisfied within a Femtocell.
  • IoT for Agriculture: Main objective is to get end to end solution for Agriculture using Internet of Things. In the first phase we are considering disease prediction using images from leafs predicting whether a particular plant needs water or not based on input from soil moister sensor, weather sensor and temperature sensor. Later, we extend this to the case by considering disease as input to predict needful of water and extending to multiple plants (large area of agriculture land) and also using advance algorithms such as Deep learning Main objective is to obtain papers and prototype.
  • IoT application to Structural Health Monitoring of Roads: In the first phase we consider distress detection of roads with following steps. Given an image how to predict distress for road using simple image processing techniques. Later we will be extending to complex algorithms such as Machine learning and Deep learning. Next step is to collecting image using cameras: Since we have to take pictures from large areas hence we will be investigating and proposing various methods to obtain images. Main objective is to obtain papers and prototype
  • Transceiver design for 5G Wireless Communications: In the first phase we are considering channel models & simulations using Matlab and Python for various scenarios. Later we will be considering Digital beam forming algorithms as well as various modulation formats to design communication link for few use cases such as fixed transmitter & receiver, moving transmitter & fixed receiver etc.. Main objective is to obtain papers and prototype.
Awards & Fellowships
  • 2002-Gate-MHRD
  • 2008-AOTS Scholar-Hindu-Hitachi (Technical scholarship programme)
Memberships
  • Senior Member, IEEE
  • Associate Member, IETE
  • Member, SIAM
  • Member, The Institution of Engineers (India)
Publications
  • Deep Transfer-Learning Model for COVID-19 Diagnosis with Feature Extraction-Based SVM and KNN Classifiers

    Dr V Udaya Sankar, Rahul Goutam Poola, Siva Sankar Yellampalli

    Source Title: Data-Centric AI Solutions and Emerging Technologies in the Healthcare Ecosystem, DOI Link

    View abstract ⏷

    Due to the augmented rise of COVID-19, clinical specialists are looking for fast faultless diagnosis strategies to restrict COVID spread while attempting to lessen the computational complexity. In this way, swift diagnosis techniques for COVID-19 with high precision can offer valuable aid to clinical specialists. RT-PCR test is an expensive and tedious COVID diagnosis technique in practice. Medical imaging is feasible to diagnose COVID-19 by X-ray chest radiography to get around the shortcomings of RT-PCR. Through a variety of deep transfer-learning models, this research investigates the potential of AI-based early diagnosis of COVID-19 via X-ray chest radiographs. With 13000 normal and 3000 COVID X-ray chest radiographs, the deep transfer-learning models are optimized to further the accurate diagnosis. By using contrast variation and picture scaling techniques during the image pre-processing phase, the quality of the input x-ray chest radiographs is altered to improve the diagnosis accuracy. The altered x-ray chest radiographs undergo a data augmentation phase before developing a modified dataset to train the deep transfer-learning models (Khang et al., 2023a). The deep transfer-learning architectures are trained using a feature extraction/edge detection-based decision boundary. During training, the classification of X-ray chest radiographs based on feature extraction algorithm values is converted into a feature label set containing the classified image data with a feature string value representing the number of edges detected after edge detection (Morris et al., 2023). The feature label set is further tested with the SVM classifier and KNN classifier to audit the quality metrics of the proposed model. The quality metrics include confusion matrix, accuracy, precision, F1 score, recall, and ROC-AUC. The Inception-V3 dominates the six deep transfer-learning models, according to the assessment results, with a training accuracy of 84.79 % and a loss function of 2.4%. The performance of Cubic SVM was superior to that of the other SVM classifiers, with an AUC score of 0.99, precision of 0.983, recall of 0.8977, accuracy of 95.8%, and F1 score of 0.9384. Cosine KNN fared better than the other KNN classifiers with an AUC score of 0.95, precision of 0.974, recall of 0.777, accuracy of 90.8%, and an F1 score of 0.864. The performance assessment metrics uncover that the proposed methodology can aid in preliminary COVID diagnosis.
  • A Survey of PCB Defect Detection Algorithms

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed circuit boards (PCBs) are the first stage in manufacturing any electronic product. The reliability of the electronic product depends on the PCB. The presence of manufacturing defects in PCBs might affect the performance of the PCB and thereby the reliability of the electronic products. In this paper, the various challenges faced in identifying manufacturing defects along with a review of various learning methods employed for defect detection are presented. We compare the various techniques available in the literature for further understanding of the accuracy of these techniques in defect detection.
  • A Review of Various Defects in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi., Siva Sankar Yellampalli

    Source Title: Journal of Electronic Testing: Theory and Applications (JETTA), Quartile: Q3, DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) are the building blocks for all electronic products. Fabrication of a PCB involves various mechanical and chemical processes. As obtaining accuracy in the mechanical and chemical processes is very difficult, various defects/faults are formed during PCBs fabrication. These fabrication defects lead to performance degradation of electronic products. In this review, we describe various defects present in PCBs under the Through hole and SMD categories. To understand the frequency of occurrence and reason for the occurrence of defects in both manual and machine, PCB fabrication data was collected and analysed from April 2017 to July 2020 as a part of industry collaboration.
  • NETWORK RESOURCE ALLOCATION FOR EMERGENCY MANAGEMENT BASED ON CLOSED-LOOP ANALYSIS

    Dr V Udaya Sankar, Ibrahim Aliyu., Sai Jnaneswar Juvvisetty., V M V S Aditya., Guda Blessed., Shabnam Sultana

    Source Title: ITU Journal on Future and Evolving Technologies, DOI Link

    View abstract ⏷

    -
  • Empirical Study on Citation Count Prediction of Research Articles

    Dr Murali Krishna Enduri, Dr V Udaya Sankar, Mr Koduru Hajarathaiah

    Source Title: Journal of Scientometric Research, Quartile: Q2, DOI Link

    View abstract ⏷

    Citation is a measure that quantifies the impact of the researcher, research article and journal’s quality. Investigating the citation of articles and/or researchers is one of the important tasks in the research community. So, understanding and predicting citation patterns of research articles has become popular in scientific research fields. In this work, we give a machine learning approach to predict the citations of research articles using the keywords. We study the citation impact based on keywords motioned in the articles using the data set of publications which are published in the various physical review journals from 1985-2012. In this dataset, for each publication is allocated some PACS codes (keywords) by their authors which represent a sub-field of Physics. In this work, we are investigating the impact of PACS codes of article on article’s citation. We are performing our analysis on the first (sub-field of physics), second (sub area of sub-field of physics) and third level of PACS codes. We observed that compared to the first level, every pair of citation patterns of the second level is highly correlated. We also obtained a universal approximation curve for the third level that matches with the average value of the first level. This curve looks like a shifted and scaled version of the Gaussian function and is right skewed. We can also predict the citations based on the keywords by using this universal curve.
  • Image based Road distress detection

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 International Conference on Smart Generation Computing, Communication and Networking (SMART GENCON), DOI Link

    View abstract ⏷

    Infrastructure plays an important role in the development of any nation. Roads are very important for the movement of humans and goods. Good road infrastructure reduces travel time and cost. Poor road infrastructure can cause an increase in travel time, more consumption of fuel and lead to accidents due to difficulty in driving. All these factors will have a cascading effect on the economy as the prices of essential commodities are directly related to the easy of transportation. Hence, it is necessary to detect the distresses on roads like potholes and do regular repairs. Initially, manual inspection was done by the concerned employers, who go check the roads and take note of the areas where there is a requirement of repair. This method involves a lot of time and labor. With the development in technology, the focus on implementing a smart method of inspection increased. To build an accurate and quick detection system, an Earth Mover's Distance (EMD) based model is proposed in this paper. This algorithm finds the presence of road distress by comparing the image of the current testing road with that of the reference image. The experiment also considers the chance of occurrence of Gaussian noise and Salt and Pepper noise while capturing the images, to fit the real-world situations.
  • A Reference Based Approach to Detect Short Faults in PCB

    Dr V Udaya Sankar, Gayathri Lakshmi Ch., Siva Sankar Yellampalli

    Source Title: 2021 Fifth International Conference On Intelligent Computing in Data Sciences (ICDS), DOI Link

    View abstract ⏷

    Printed Circuit Boards (PCBs) have become an inevitable component in all electronic devices, including the gadgets that we use in our day-to-day life. To maintain the quality of a product it is necessary to make sure the PCB is void of defects. To identify whether PCB has defects or not, it has to undergo tests in various stages. In this paper, we propose a reference-based model using Wasserstein distance metric to detect short faults in PCBs. The study includes the effect of Gaussian and Salt-Pepper Noise have on fault detection, which usually occurs in the images procured by digital cameras.
Contact Details

udayasankar.v@srmap.edu.in

Scholars

Doctoral Scholars

  • Arepalli Sathi Babu