LPI, ETSI Telecomunicación, Universidad de Valladolid, Spain.
AGH University of Science and Technology, Krakow, Poland.
Med Image Anal. 2015 Feb;20(1):184-97. doi: 10.1016/j.media.2014.11.005. Epub 2014 Nov 24.
The reliable estimation of noise characteristics in MRI is a task of great importance due to the influence of noise features in extensively used post-processing algorithms. Many methods have been proposed in the literature to retrieve noise features from the magnitude signal. However, most of them assume a stationary noise model, i.e., the features of noise do not vary with the position inside the image. This assumption does not hold when modern scanning techniques are considered, e.g., in the case of parallel reconstruction and intensity correction. Therefore, new noise estimators must be found to cope with non-stationary noise. Some methods have been recently proposed in the literature. However, they require multiple acquisitions or extra information which is usually not available (biophysical models, sensitivity of coils). In this work we overcome this drawback by proposing a new method that can accurately estimate the non-stationary parameters of noise from just a single magnitude image. In the derivation, we considered the noise to follow a non-stationary Rician distribution, since it is the most common model in real acquisitions (e.g., SENSE reconstruction), though it can be easily generalized to other models. The proposed approach makes use of a homomorphic separation of the spatially variant noise in two terms: a stationary noise term and one low frequency signal that correspond to the x-dependent variance of noise. The non-stationary variance of noise is then estimated by a low pass filtering with a Rician bias correction. Results in real and synthetic experiments evidence the better performance and the lowest error variance of the proposed methodology when compared to the state-of-the-art methods.
由于噪声特征在广泛使用的后处理算法中的影响,可靠地估计 MRI 中的噪声特征是一项非常重要的任务。文献中已经提出了许多从幅度信号中提取噪声特征的方法。然而,它们中的大多数都假设噪声是一个静止的模型,即噪声的特征不会随着图像内部的位置而变化。当考虑现代扫描技术时,这种假设并不成立,例如在并行重建和强度校正的情况下。因此,必须找到新的噪声估计器来处理非平稳噪声。文献中最近提出了一些方法。然而,它们需要多次采集或额外的信息,这些信息通常是不可用的(生物物理模型、线圈的灵敏度)。在这项工作中,我们通过提出一种新的方法来克服这一缺点,该方法仅从单个幅度图像即可准确估计噪声的非平稳参数。在推导过程中,我们考虑噪声遵循非平稳的瑞利分布,因为它是实际采集(例如,SENSE 重建)中最常见的模型,尽管它可以很容易地推广到其他模型。所提出的方法利用同态分离空间变化噪声为两个项:一个是静止噪声项,另一个是低频信号,对应于噪声的 x 相关方差。然后,通过具有瑞利偏差校正的低通滤波来估计噪声的非平稳方差。真实和合成实验的结果表明,与最先进的方法相比,所提出的方法在性能和误差方差方面表现更好。