Adaptive Gaussian Wiener Filter for CT-Scan Images with Gaussian Noise Variance

Kai Liang Lew, Chung Yang Kew, Kok-Swee Sim, Shing Chiang Tan
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Abstract

Medical imaging plays an important role in modern healthcare, with Computed Tomography (CT) being essential for high-resolution cross-sectional imaging. However, Gaussian noise often occurs within the CT scan images and makes it difficult for image interpretation and reduces the diagnostic accuracy, creating a significant obstacle to fully utilizing CT scanning technology. Existing denoising techniques have a hard time balance between noise reduction and preserving the important image details, failing to enable the optimal diagnostic precision. This study introduces Adaptive Gaussian Wiener Filter (AGWF), a novel filter aims to denoise CT scan images that have been corrupted with various Gaussian noise variance without compromising the image details. The AGWF combines the Gaussian filter for initial noise reduction, followed by the implementation of Wiener filter, which can adaptively estimate noise variance and signal power in localized regions. This approach not only outperforms other existing techniques but also showcases a remarkable balance between noise reduction and image detail preservation. The experiment evaluates 300 images from the dataset and each image is corrupted with Gaussian noise variance to ensure a comprehensive evaluation of the AGWF’s performance. The evaluation indicated that AGWF can improve the Signal-to-Noise Ratio (SNR) value and reduce the Root Mean Square Error (RMSE) and Mean Square Error (MSE) value, showing a qualitative improvement in CT scan imagery. The proposed method holds promising potential for advancing medical imaging technology with the implementation of deep learning.
用于具有高斯噪声方差的 CT 扫描图像的自适应高斯维纳滤波器
医学成像在现代医疗保健中发挥着重要作用,其中计算机断层扫描(CT)是高分辨率横断面成像的关键。然而,CT 扫描图像中经常出现高斯噪声,给图像判读带来困难,降低了诊断准确性,给充分利用 CT 扫描技术造成了巨大障碍。现有的去噪技术很难在降噪和保留重要图像细节之间取得平衡,无法实现最佳的诊断精度。本研究介绍了自适应高斯维纳滤波器(AGWF),这是一种新型滤波器,旨在对受到各种高斯噪声方差干扰的 CT 扫描图像进行去噪,同时不影响图像细节。AGWF 结合了用于初始降噪的高斯滤波器,然后执行维纳滤波器,它可以自适应地估计局部区域的噪声方差和信号功率。这种方法不仅优于其他现有技术,而且在降噪和保留图像细节之间实现了出色的平衡。实验评估了数据集中的 300 幅图像,每幅图像都受到高斯噪声方差的干扰,以确保全面评估 AGWF 的性能。评估结果表明,AGWF 能提高信噪比(SNR)值,降低均方根误差(RMSE)和均方误差(MSE)值,显示出对 CT 扫描图像的质的改善。随着深度学习的实施,所提出的方法有望推动医学成像技术的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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