Lindop Joel E, Treece Graham M, Gee Andrew H, Prager Richard W
IEEE Trans Ultrason Ferroelectr Freq Control. 2008 Nov;55(11):2363-8. doi: 10.1109/TUFFC.943.
The vast majority of strain imaging systems applies linear filtering to estimate strain from displacement data. Methods such as piecewise-linear least squares regression and staggered strain estimation have come to be widely known and applied, but the properties of these estimators have rarely (or never) been compared quantitatively. Given their tractable properties, careful analysis of linear filters allows us to make numerous observations that are simple, yet valuable. We consider accuracy and resolving power, which raises the question of whether any particular filter offers the best possible accuracy at a given resolution. Our surprising results provide insight at two levels: They highlight general considerations affecting the type of filter that is appropriate for practical applications, and indicate promising avenues for further research.
绝大多数应变成像系统采用线性滤波从位移数据中估计应变。诸如分段线性最小二乘回归和交错应变估计等方法已广为人知并得到应用,但这些估计器的特性很少(或从未)进行过定量比较。鉴于其易于处理的特性,对线性滤波器进行仔细分析使我们能够得出许多简单但有价值的观察结果。我们考虑了精度和分辨能力,这就引出了一个问题:在给定分辨率下,是否有任何特定的滤波器能提供最佳精度。我们令人惊讶的结果在两个层面上提供了见解:它们突出了影响适用于实际应用的滤波器类型的一般考虑因素,并指明了进一步研究的有前景的方向。