神经网络在肺部CT图像去噪中的应用

E. Turajlić
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引用次数: 4

摘要

图像去噪是数字图像处理领域最具挑战性的问题之一。在处理医学图像时,在保留诊断相关信息的同时,提高图像的感知质量具有特别重要的意义。本文研究了神经网络框架对医学图像去噪的能力。具体地说,使用各种图像质量指标(如峰值信噪比和均方误差)在肺部计算机断层扫描图像数据库上评估了所提出的图像去噪方法的性能。图像去噪依赖于对噪声和低通滤波后的图像进行块分割,生成神经网络训练的输入数据和目标数据。本文研究了当图像被加性高斯噪声退化时,块大小、网络结构和训练方法的选择对图像去噪性能的影响。本文提出使用Kohonen的自组织映射来分割特征空间,并使用多个精细调整的多层感知器来实现改进的去噪性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of neural networks to denoising of CT images of lungs
One of the most challenging problems in the field of digital image processing is image denoising. When processing medical images, it is of particular relevance to improve the perceived quality of images, while preserving the diagnostically relevant information. This paper investigates the capacity of a neural network framework for medical image denoising. Specifically, the performance of the proposed image denoising method is evaluated on a database of computed tomography images of lungs using various image quality metrics, such as peak signal-to-noise ratio and mean squared error. Image denoising relies on block segmentation of noisy and low-pass filtered images to generate the input and the target data for the neural network training. This paper investigates how the choice of block size, network architecture, and the training method affect the denoising performance when image is degraded with additive Gaussian noise. The paper proposes the use of Kohonen's self-organizing maps for segmentation of feature space and the use of multiple, finely tuned multi-layer perceptrons to achieve an improved denoising performance.
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