Department of Electrical and Computer Engineering, University of Iowa, Iowa City, IA 52242, United States.
Comput Med Imaging Graph. 2011 Jan;35(1):64-80. doi: 10.1016/j.compmedimag.2010.09.007. Epub 2010 Oct 18.
Tensor scale (t-scale) is a parametric representation of local structure morphology that simultaneously describes its orientation, shape and isotropic scale. At any image location, t-scale represents the largest ellipse (an ellipsoid in three dimensions) centered at that location and contained in the same homogeneous region. Here, we present an improved algorithm for t-scale computation and study its application to image interpolation. Specifically, the t-scale computation algorithm is improved by: (1) enhancing the accuracy of identifying local structure boundary and (2) combining both algebraic and geometric approaches in ellipse fitting. In the context of interpolation, a closed form solution is presented to determine the interpolation line at each image location in a gray level image using t-scale information of adjacent slices. At each location on an image slice, the method derives normal vector from its t-scale that yields trans-orientation of the local structure and points to the closest edge point. Normal vectors at the matching two-dimensional locations on two adjacent slices are used to compute the interpolation line using a closed form equation. The method has been applied to BrainWeb data sets and to several other images from clinical applications and its accuracy and response to noise and other image-degrading factors have been examined and compared with those of current state-of-the-art interpolation methods. Experimental results have established the superiority of the new t-scale based interpolation method as compared to existing interpolation algorithms. Also, a quantitative analysis based on the paired t-test of residual errors has ascertained that the improvements observed using the t-scale based interpolation are statistically significant.
张量尺度(t-scale)是一种描述局部结构形态的参数表示方法,它同时描述了其方向、形状和各向同性尺度。在任何图像位置,t-scale 代表位于该位置的最大椭圆(三维空间中的椭球),并且位于相同的均匀区域内。在这里,我们提出了一种改进的 t-scale 计算算法,并研究了它在图像插值中的应用。具体来说,通过以下两种方式改进了 t-scale 计算算法:(1)提高了识别局部结构边界的准确性;(2)在椭圆拟合中结合了代数和几何方法。在插值的上下文中,提出了一种确定灰度图像中每个图像位置的插值线的闭式解,该解使用相邻切片的 t-scale 信息来确定。在图像切片的每个位置,该方法从其 t-scale 中导出法向量,该法向量产生局部结构的横向旋转,并指向最近的边缘点。在两个相邻切片上的匹配二维位置上的法向量用于使用闭式方程计算插值线。该方法已应用于 BrainWeb 数据集以及来自临床应用的其他几个图像,并且已经对其准确性以及对噪声和其他图像降质因素的响应进行了检查,并与当前最先进的插值方法进行了比较。实验结果表明,与现有插值算法相比,新的基于 t-scale 的插值方法具有优越性。此外,基于残差配对 t 检验的定量分析证实,基于 t-scale 的插值所观察到的改进在统计学上是显著的。