Advancing Visible Spectroscopy through Integrated Machine Learning and Image Processing Techniques

Author:

Patra Aman1ORCID,Kumari Kanchan1ORCID,Barua Abhishek234ORCID,Pradhan Swastik5ORCID

Affiliation:

1. Department of Mechanical Engineering, Parala Maharaja Engineering College, Berhampur 761003, India

2. Department of Automobile Engineering, Parala Maharaja Engineering College, Berhampur 761003, India

3. Department of Advanced Materials Technology, CSIR-Institute of Minerals and Materials Technology, Bhubaneswar 751013, India

4. Academy of Scientific and Innovative Research, CSIR-HRD Centre Campus, Ghaziabad 201002, India

5. School of Mechanical Engineering, Lovely Professional University, Phagwara 144001, India

Abstract

This research introduces an approach to visible spectroscopy leveraging image processing techniques and machine learning (ML) algorithms. The methodology involves calculating the hue value of an image and deriving the corresponding dominant wavelength. Initially, a six-degree polynomial regression supervised machine learning model is trained to establish a relationship between the hue values and dominant wavelengths. Subsequently, the ML model is employed to analyse the visible wavelengths emitted by various sources, including sodium vapour, neon lamps, mercury vapour, copper vapour lasers, and helium vapour. The performance of the proposed method is evaluated through error analysis, revealing remarkably low error percentages of 0.04%, 0.01%, 3.7%, 1%, and 0.07% for sodium vapour, neon lamp, copper vapour laser, and helium vapour, respectively. This approach offers a promising avenue for accurate and efficient visible spectroscopy, with potential applications in diverse fields such as material science, environmental monitoring, and biomedical research. This research presents a visible spectroscopy method harnessing image processing and machine learning algorithms. By calculating hue values and identifying dominant wavelengths, the approach demonstrates consistently low error rates across diverse light sources.

Publisher

MDPI AG

Reference53 articles.

1. Progress in Field Spectroscopy;Milton;Remote Sens. Environ.,2009

2. Metasurface-Enhanced Infrared Spectroscopy: An Abundance of Materials and Functionalities;Tittl;Adv. Mater.,2022

3. Classification of Longan Fruit Bruising Using Visible Spectroscopy;Pholpho;J. Food Eng.,2011

4. Wang, N., and ElMasry, G. (2010). Hyperspectral Imaging for Food Quality Analysis and Control, Academic Press.

5. High-Speed 3D Digital Image Correlation Vibration Measurement: Recent Advancements and Noted Limitations;Beberniss;Mech. Syst. Signal Process.,2017

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