Chithra Selvam’s research while affiliated with Vellore Institute of Technology University and other places

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Publications (2)


Pseudo code of proposed technique
Work flow of the proposed model
Optimization process
Comparison of SSIM
Comparison of PSNR

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Interval-valued intuitionistic fuzzy generator based low-light enhancement model for referenced image datasets
  • Article
  • Full-text available

February 2025

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Artificial Intelligence Review

Chithra Selvam

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Image processing is a rapidly evolving research field with diverse applications across science and technology, including biometric systems, surveillance, traffic signal control and medical imaging. Digital images taken in low-light conditions are often affected by poor contrast and pixel detail, leading to uncertainty. Although various fuzzy based techniques have been proposed for low-light image enhancement, there remains a need for a model that can manage greater uncertainty while providing better structural information. To address this, an interval-valued intuitionistic fuzzy generator is proposed to develop an advanced low-light image enhancement model for referenced image datasets. The enhancement process involves a structural similarity index measure (SSIM) based optimization approach with respect to the parameters of the generator. For experimental validation, the Low-Light (LOL), LOLv2-Real and LOLv2-Synthetic benchmark datasets are utilized. The results are compared with several existing techniques using quality metrics such as SSIM, peak signal-to-noise ratio, absolute mean brightness error, mean absolute error, root mean squared error, blind/referenceless image spatial quality evaluator and naturalness image quality evaluator, demonstrating the superiority of the proposed model. Ultimately, the model’s performance is benchmarked against state-of-the-art methods, highlighting its enhanced efficiency.

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Citations (1)


... In order to improve the color poor contrast images using HE and defuzzification approaches, Jebadass and Balasubramaniam (2022) presented a LLIE model using Yager's generator. Recently, Selvam et al. (2024) designed a novel IFG and applied it with CLAHE technique to enhance the low-light images. Additionally, it was compared with various existing approaches to showcase the superiority of the technique. ...

Reference:

Interval-valued intuitionistic fuzzy generator based low-light enhancement model for referenced image datasets
A novel intuitionistic fuzzy generator for low-contrast color image enhancement technique
  • Citing Article
  • March 2024

Information Fusion