Enhanced Adaptive Threshold Median Filter For Medical Image Filtering
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Date
2023-06-12
Journal Title
Journal ISSN
Volume Title
Publisher
OURNAL OF SCIENCE TECHNOLOGY AND EDUCATION
Abstract
In the field of medical image processing, mitigating the impact of noise is of paramount importance. Conventional median filters primarily target the elimination of medical image noise occurring as a single layer, characterized by a constant level of noise gray value. However, these filters encounter challenges when faced with images corrupted by noise that extends beyond a single layer. This study presents the Enhanced Adaptive Threshold Median Filter (EATMF) as a solution to naddress the aforementioned challenge. The proposed filter combines the Adaptive Median Filter (AMF) with thresholds (ATMF) and incorporates a Laplacian filter. By introducing changes in the thresholds, the EATMF achieves a balance between effectively removing both low and high density noise while preserving image quality. A comparative analysis between the EATMF and the ATMF is presented, accompanied by visual examples that showcase the performance of the newly introduced filter. The results demonstrate that the EATMF outperforms the ATMF in terms of Peak Signal-to-Noise Ratio (PSNR), indicating its superior noise reduction capabilities. This study highlights the significance of the EATMF in
medical image processing, particularly in scenarios where images are corrupted by multi-layer noise. The proposed filter offers an enhanced approach to noise reduction, contributing to improved image quality
and accuracy in medical diagnostics and analysis.
Description
This paper introduces the Enhanced Adaptive Threshold Median Filter (EATMF) as a novel approach to improving noise reduction in medical images affected by complex, multi-layer noise. Traditional median filters often struggle with such scenarios, as they are typically optimized for single-layer noise with uniform gray values. EATMF addresses this limitation by integrating an Adaptive Median Filter (AMF) with adaptive thresholds and incorporating a Laplacian filter to better handle varying noise densities. Through dynamic threshold adjustments, the proposed method effectively removes both low and high-density noise while preserving image details. Comparative analysis and visual demonstrations reveal that EATMF significantly outperforms the existing Adaptive Threshold Median Filter (ATMF) in terms of Peak Signal-to-Noise Ratio (PSNR), making it a valuable tool for enhancing image quality and diagnostic accuracy in medical imaging.
Keywords
Image Enhancement, Filter, Noise, Peak signal-to-noise ratio
Citation
Adamu, M., Jiro, A.A., Abdul-Malik, U. T., Maliki, D., & Abdullahi, I. M. (2023). Enhanced Adaptive Threshold Median Filter For Medical Image Filtering. Journal of Science Technology and Education (JOSTE), 11(2), pp. 217–224, available at: www.atbuftejoste.com