Gravel Pierre, Beaudoin Gilles, De Guise Jacques A
Laboratoire de recherche en Imagerie et orthopédie, Ecole de technologie supérieure, Montréal, QC H3C 1K3, Canada.
IEEE Trans Med Imaging. 2004 Oct;23(10):1221-32. doi: 10.1109/TMI.2004.832656.
We have developed a method to study the statistical properties of the noise found in various medical images. The method is specifically designed for types of noise with uncorrelated fluctuations. Such signal fluctuations generally originate in the physical processes of imaging rather than in the tissue textures. Various types of noise (e.g., photon, electronics, and quantization) often contribute to degrade medical images; the overall noise is generally assumed to be additive with a zero-mean, constant-variance Gaussian distribution. However, statistical analysis suggests that the noise variance could be better modeled by a nonlinear function of the image intensity depending on external parameters related to the image acquisition protocol. We present a method to extract the relationship between an image intensity and the noise variance and to evaluate the corresponding parameters. The method was applied successfully to magnetic resonance images with different acquisition sequences and to several types of X-ray images.
我们开发了一种方法来研究各种医学图像中噪声的统计特性。该方法专门针对具有不相关波动的噪声类型设计。此类信号波动通常源于成像的物理过程,而非组织纹理。各种类型的噪声(例如光子噪声、电子噪声和量化噪声)常常会导致医学图像质量下降;总体噪声通常假定为具有零均值、恒定方差的高斯分布的加性噪声。然而,统计分析表明,根据与图像采集协议相关的外部参数,噪声方差可以通过图像强度的非线性函数得到更好的建模。我们提出了一种方法来提取图像强度与噪声方差之间的关系,并评估相应的参数。该方法已成功应用于具有不同采集序列的磁共振图像以及几种类型的X射线图像。