Analyzing Glucose Levels through Image Processing and Deep Learning Methods

Authors

  • A Aruna Department of Electronics and Communication Engineering, Sri Venkateswara Engineering College, Tirupati, Andhra Pradesh, India Author
  • Dr. Suresh Babu Potladurty Department of Electronics and Communication Engineering, Sri Venkateswara Engineering College, Tirupati, Andhra Pradesh, India Author

Keywords:

Glucose, Gaussian Filter, Convolutional Neural Network, Classification, Deep Learning Technique and Accuracy

Abstract

This study investigates a non-invasive technique for analyzing glucose content by utilizing image processing and Convolutional Neural Networks (CNNs). Conventional glucose monitoring methods typically require invasive procedures, which can pose risks to the immune system, especially with frequent injections. To address these risks, the research focuses on a non-intrusive approach that uses urine samples for glucose analysis. The method includes image processing tasks such as applying a Gaussian filter and resizing images to prepare the input for a CNN. Deep learning, specifically with CNNs, is applied due to its effectiveness in feature extraction and pattern recognition. The aim is to achieve high accuracy in classifying glucose levels into categories like diabetes, pre-diabetes, and normal, providing a reliable and non-invasive alternative to standard glucose monitoring methods. This innovative technique could lead to improved patient compliance and better overall health monitoring for those who need regular glucose assessments.

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Published

08-11-2024

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Section

Research Articles

How to Cite

Analyzing Glucose Levels through Image Processing and Deep Learning Methods. (2024). International Journal of Scientific Research in Science and Technology, 11(6), 40-47. https://ijsrst.com/index.php/home/article/view/IJSRST24116156

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