IEEE Trans Ultrason Ferroelectr Freq Control. 2019 Jan;66(1):79-90. doi: 10.1109/TUFFC.2018.2874720. Epub 2018 Oct 16.
An efficient procedure for experimental-based quantification of statistical distributions of both the random and microstructural speckle noise within an ultrasonic image is presented. This is of particular interest in the multiview total focusing method, which enables many images (views) of the same region to be obtained by utilizing alternative ray paths and mode conversions. For example, in an immersion configuration, 21 separate views of the same region of a sample can be formed by exploiting direct and skip paths. These views can be combined through some form of data fusion algorithm to improve defect detection and characterization performance. However, the noise level is different in different views and this should be accounted for in any data fusion algorithm. It is shown that by using only one set of experimental data from a single measurement location, rather than numerous independent locations, it is possible to obtain accurate noise parameters at an imaging level. This is achieved by accounting for the spatial variation in the noise parameters within the image, due to beam spread, directivity, and attenuation with a simple empirical correction. An important feature of the process is the suppression of image artifacts caused by signal responses from other ray paths with the use of image masking. This masking process incorporates knowledge of the expected autocorrelation length (ACL) of image speckle noise and high-amplitude cluster suppression. The expected ACL is determined via a simple ray-based forward model of a single point scatterer. Compared to the estimates obtained using multiple independent locations, the speckle noise parameters estimated from a single measurement location were within 0.4 dB.
提出了一种高效的程序,用于实验定量统计分布的随机和微观结构的散斑噪声在超声图像。这在多视图全聚焦方法中特别感兴趣,该方法可以通过利用替代射线路径和模式转换来获得同一区域的多个图像(视图)。例如,在浸没法配置中,可以通过利用直接和跳过路径形成同一样本区域的 21 个单独视图。可以通过某种形式的数据融合算法来组合这些视图,以提高缺陷检测和特征化性能。然而,不同视图中的噪声水平不同,任何数据融合算法都应该考虑到这一点。结果表明,通过仅使用单个测量位置的一组实验数据,而不是许多独立的位置,就有可能在成像水平获得准确的噪声参数。这是通过在图像中由于波束扩展、指向性和衰减而导致的噪声参数的空间变化来实现的,这可以通过使用简单的经验修正来实现。该过程的一个重要特征是使用图像掩蔽来抑制由其他射线路径的信号响应引起的图像伪影。该掩蔽过程结合了图像散斑噪声的预期自相关长度(ACL)和高振幅簇抑制的知识。通过单点散射体的简单射线基础正向模型确定了预期的 ACL。与使用多个独立位置获得的估计值相比,从单个测量位置估计的散斑噪声参数在 0.4dB 以内。