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Noniterative MAP Reconstruction Using Sparse Matrix Representations

机译:使用稀疏矩阵表示的非迭代MAP重构

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We present a method for noniterative maximum a posteriori (MAP) tomographic reconstruction which is based on the use of sparse matrix representations. Our approach is to precompute and store the inverse matrix required for MAP reconstruction. This approach has generally not been used in the past because the inverse matrix is typically large and fully populated (i.e., not sparse). In order to overcome this problem, we introduce two new ideas. The first idea is a novel theory for the lossy source coding of matrix transformations which we refer to as matrix source coding. This theory is based on a distortion metric that reflects the distortions produced in the final matrix-vector product, rather than the distortions in the coded matrix itself. The resulting algorithms are shown to require orthonormal transformations of both the measurement data and the matrix rows and columns before quantization and coding. The second idea is a method for efficiently storing and computing the required orthonormal transformations, which we call a sparse-matrix transform (SMT). The SMT is a generalization of the classical FFT in that it uses butterflies to compute an orthonormal transform; but unlike an FFT, the SMT uses the butterflies in an irregular pattern, and is numerically designed to best approximate the desired transforms. We demonstrate the potential of the noniterative MAP reconstruction with examples from optical tomography. The method requires offline computation to encode the inverse transform. However, once these offline computations are completed, the noniterative MAP algorithm is shown to reduce both storage and computation by well over two orders of magnitude, as compared to a linear iterative reconstruction methods.
机译:我们提出了一种基于稀疏矩阵表示的非迭代最大后验(MAP)层析成像重建方法。我们的方法是预先计算并存储MAP重建所需的逆矩阵。过去通常没有使用这种方法,这是因为逆矩阵通常很大且已完全填充(即不稀疏)。为了克服这个问题,我们引入了两个新的想法。第一个想法是矩阵变换的有损源编码的一种新颖理论,我们称其为矩阵源编码。该理论基于一种失真度量,该度量反映的是最终矩阵矢量乘积中产生的失真,而不是编码矩阵本身中的失真。结果表明,在量化和编码之前,需要对测量数据以及矩阵行和列进行正交变换。第二个想法是一种有效存储和计算所需正交变换的方法,我们称其为稀疏矩阵变换(SMT)。 SMT是经典FFT的概括,它使用蝴蝶计算正交变换。但是与FFT不同的是,SMT使用不规则图案的蝶形,并进行了数字设计以最好地近似所需的变换。我们用光学层析成像的例子证明了非迭代MAP重建的潜力。该方法需要离线计算以对逆变换进行编码。但是,一旦完成了这些离线计算,与线性迭代重建方法相比,非迭代MAP算法就可以将存储和计算量减少两个数量级。

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