Projects

Research projects completed

1. Improving the performance of optimizers in deep learning                                 May 2022 – May 2023

Funder: School of Computer Science and Engineering, Kyungpook National University, South Korea.

Objective(s):

  • Improve model reliability with deep neural networks by accelerating the convergence of gradient descent optimizers.
  • Improving non-linearity representation to model complex relationships by modifying the activation functions in deep learning.

Role: Project Lead

Responsibilities:

  • Designing deep learning models for evaluating the proposed idea.
  • Incorporating the proposed ideas into TensorFlow by overriding the architectural modules.
  • Develop mathematical proofs and theoretical analyses of the intended idea.
  • Setting up a distributed cluster and a sharable GPU for conducting the experiments.
  • Conducting experiments and performing empirical analyses and ablation studies.

2. Abnormal image detection and visualization of fabric products                     Sep 2022 – May 2023

Funder: National Research Foundation (NRF)

Objective(s):

  • Clustering the anomaly objects and localizing the anomaly present in the industrial fabrics.

Role: Project Associate

Responsibilities:

  • Performed data augmentation techniques to increase the number of training images for the model.
  • Implemented pre-processing methods such as noise removal and contrast enhancement to improve image quality.
  • Contributed to model development by exploring autoencoders for anomaly localization.
  • Evaluated model performance on an anomaly detection dataset and supported analysis.
  • Documented experimental details and results in project reports.

3. Real-time fault detection in fused deposition modelling                                                           July 2022

Funder: Department of Mechanical Engineering, National Institute of Technology Calicut, India in collaboration with School of Computer Science and Engineering, Kyungpook National University, South Korea.

Objective(s):

  • Real-time error detection in fused deposition modelling using CNN.

Role: Project Associate

Responsibilities:

  • Collecting sample images under different error categories (staircases, overfill, and void defects) during fused deposition modelling.
  • Generating additional images using data augmentation techniques to avoid overfitting.
  • Devising a suitable CNN model to train and classify defects.
  • Comparing the proposed method with standardized classification algorithms.

4. Gesture recognition system for sign language and music generation             Feb 2022 – May 2023

Funder: School of Computer Science and Engineering, Kyungpook National University, South Korea.

 Objective(s):  

  • Real-time music generation based on hand gesture recognition.
  • Sign language detection through gestures.

Role: Project Coordinator

Responsibilities:

  • Modified GRU model to enhance gesture recognition accuracy and performance.
  • Developed a validation framework to ensure model effectiveness across various gesture types for maintaining project quality standards.
  • Coordinated the technical integration of deep learning models with application interfaces, streamlining the real-time translation of recognized gestures into output.
  • Managed technical documentation and project guidelines, supporting project scalability, and ensuring knowledge transfer for future development.
  • Facilitated collaboration between technical and user experience teams, bridging the gap to optimize user interface design for gesture-based applications, enhancing overall project cohesion and execution.

5. Korean handwritten text recognition                                                                  Dec 2021 – Feb 2022

Funder: Small and medium business technology information promotion agency, Daegu, South Korea.

Objective(s):

  • Generating Korean text from old-fashioned Korean handwriting.

Role: Project Technical Support Specialist

Responsibilities:

  • Assisted in annotating bounding boxes around handwritten text.
  • Engaged in image pre-processing, applying algorithms based on the histogram of gradients to extract features from the handwritten text.
  • Supported the development of the Bi-LSTM model for generating machine-encoded text.
  • Helped evaluate the model’s performance, utilizing metrics like character error rate to rigorously assess OCR accuracy.

6. Small object detection in manufacturing and smart city                                      Mar 2021 – Feb 2022

Funder: Small and medium business technology information promotion agency, Daegu, South Korea.

Objective(s):

  • Identification of illegal parking in the disabled car parking slot.
  • Identification of improperly placed small objects (stickers/badges).

Role: Project Associate

Responsibilities:

  • Conducted on-site data collection by visiting car parking places to capture photos of disabled car parking slots for model training.
  • Pre-processed and annotated the collected images to identify illegal parking and small objects (stickers/badges) inaccuracies.
  • Assisted in finding an appropriate deep learning algorithm for automated detection of illegal parking and improperly placed objects.
  • Performed iterative testing and model adjustments based on initial results and feedback to enhance detection accuracy and system efficiency.