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Reconstructions of truncated projections using an optimal basis expansion derived from the cross-correlation of a 'Knowledge Set' of a priori cross-sections

机译:利用先验横截面的“知识集”的“知识集”的互相关来重建截断投影的重建

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An algorithm was developed to obtain reconstructions from truncated projections by utilizing cross-correlation of a "knowledge set" of a priori nontruncated cross-sections with a similar structure. A cross-correlation matrix was constructed for the known set of cross-sectional images. The eigenvectors of this matrix form a set of orthogonal basis vectors for the reconstructed image. The basis set is optimal in the sense that the average of the differences between members of a given set of a priori images, and their truncated linear expansion for any basis set, is minimal for this particular basis set. A procedure for finding optimal basis vectors is fundamental for deriving the Karhunen-Loeve (K-L) transform. Therefore, one can represent an image not in the "knowledge set" but of similar structure by a linear combination of basis vectors corresponding to the larger eigenvalues; thus, the number of basis vectors is reduced to a number less than the total number of pixels. The projection of an image represented by this linear combination of basis vectors is a linear combination of projected basis vectors which are not necessarily orthogonal. A constrained least-squares method was used to evaluate the coefficients of this expansion by minimizing the sum of squares difference between the expansion and the projection measurements taking into account the distribution of coefficients over basis vectors. The constrained least-squares estimates of the coefficients were used in an expansion of the orthogonal basis to obtain the reconstructed image. The constrained solution has a reduced noise level in this inverse problem. It is shown that the reconstruction of truncated projections can be significantly improved over that of commonly used iterative reconstruction algorithms.
机译:开发了一种算法,通过利用具有类似结构的先验非截图的“知识集”的“知识集”的互相关来获得从截断投影的重建。为已知的一组横截面图像构建互相关矩阵。该矩阵的特征向量形成了一组正交基向量,用于重建图像。基础集是在意义上是最佳的,即给定集合的先验图像的成员之间的差异和任何基础集的截断线性扩展的平均值对于该特定基础集最小。寻找最佳基础矢量的程序是导出Karhunen-Loeve(K-L)变换的基础。因此,可以代表不在“知识集”中的图像,而是通过对应于较大特征值的基础矢量的线性组合来表示类似的结构;因此,基矢量的数量减少到小于像素总数的数字。由基础向量的这种线性组合表示的图像的投影是未定是正交的投影基向量的线性组合。约束最小二乘法用于通过最小化扩展与投影测量之间的平方和考虑到基向量的分布来评估该扩展的系数。在正交基础的扩展中使用系数的约束最小二乘估计以获得重建图像。受约束的解决方案在该逆问题中具有降低的噪声水平。结果表明,在常用的迭代重建算法的情况下,可以显着提高截断的投影的重建。

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