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  1. Home
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  4. Publications 2023
  5. Feature Targeted Image Enhancement for Acute Myeloid Leukemia
 
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Feature Targeted Image Enhancement for Acute Myeloid Leukemia

Journal
IWAIIP 2023 - Conference Proceeding: International Workshop on Artificial Intelligence and Image Processing
Date Issued
2023-01-01
Author(s)
Rahman R.A.
Mashor M.Y.
Rafikha Aliana A Raof
Universiti Malaysia Perlis
Hassan R.
Nazahah Mustafa
Universiti Malaysia Perlis
Kanafiah S.N.A.B.M.
Rahman K.S.B.A.
Zulkeflee R.H.
DOI
10.1109/IWAIIP58158.2023.10462885
Handle (URI)
https://hdl.handle.net/20.500.14170/8858
Abstract
Image enhancement is one of the pre-processing steps in various computer vision applications. The current image enhancement algorithm typically applies uniform enhancements across the entire image where this approach often falls short of accurately highlighting or enhancing the specific features due to the influence of the background color. Therefore, this paper proposes a feature-targeted image enhancement technique. Feature-targeted image enhancement (FTIE) algorithm is the improvement over the conventional technique. This method will only enhance the targeted feature instead of the entire image. Therefore, the targeted feature will be enhanced accurately without the influence of the background image. The FTIE method was done by extracting the target feature from the original images and then applying the enhancement method to that region only. Based on the 80 acute myeloid leukemia images, the proposed method showed a promising result, where the comparative analysis shows that the image produced from the proposed method surpasses other conventional methods in terms of structural similarity index (0.995), universal image quality index (0.996), peak signal-to-noise ratio (30.803), mean absolute error (0.002), correlation coefficient (0.997) and contrast enhancement-based image quality (1.743) values.
Funding(s)
Department of Haematology, Christian Medical College, Vellore
Subjects
  • Acute myeloid leukemi...

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