Matching of irreversibly deformed images in microscopy based on piecewise monotone subgradient optimization using parallel processing

J. Michálek, M. Capek, J. Janáček, X. Mao, L. Kubínová
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Abstract

Image registration tasks are often formulated in terms of minimization of a functional consisting of a data fidelity term penalizing the mismatch between the reference and the target image, and a term enforcing smoothness of shift between neighboring pairs of pixels (a min-sum problem). For registration of neighboring physical slices of microscopy specimens with discontinuities, Janacek [1] proposed earlier an L1-distance data fidelity term and a total variation (TV) smoothness term, and used a graph-cut based iterative steepest descent algorithm for minimization. The L1-TV functional is in general non-convex, and thus a steepest descent algorithm is not guaranteed to converge to the global minimum. Schlesinger et. aI. [10] presented an equivalent transformation of max-sum problems to the problem of minimizing a dual quantity called problem power, which is - contrary to the original max-sum (min-sum) functional - convex (concave). We applied Schlesinger's approach to develop an alternative, multi-label, L1-TV minimization algorithm by maximization of the dual problem. We compared experimentally results obtained by the multi-label dual solution with a graph cut based minimization. For Schlesinger's subgradient algorithm we proposed a step control heuristics which considerably enhances both speed and accuracy compared with known stepsize strategies for subgradient methods. The registration algorithm is easily parallelizable, since the dynamic programming maximization of the functional along a horizontal (resp. vertical) gridline is independent of maximization along any other horizontal (resp. vertical) gridlines. We have implemented it both on Core Quad or Core Duo PCs and CUDA Graphic Processing Unit, thus significantly speeding up the computation.
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基于并行处理的分段单调亚梯度优化的显微镜不可逆变形图像匹配
图像配准任务通常是根据一个函数的最小化来制定的,该函数包括一个数据保真度项,用于惩罚参考图像和目标图像之间的不匹配,以及一个执行相邻像素对之间移动的平滑性的项(最小和问题)。对于具有不连续的显微镜标本相邻物理切片的配准,Janacek[1]早前提出了l1距离数据保真度项和总变差(TV)平滑度项,并使用基于图切的迭代最陡下降算法进行最小化。一般来说,L1-TV函数是非凸的,因此最陡下降算法不能保证收敛到全局最小值。施莱辛格等。[10]提出了一个最大和问题到最小化一个被称为问题幂的对偶量问题的等价变换,它与原来的最大和(最小和)泛函相反,是凸(凹)泛函。我们应用施莱辛格的方法通过对偶问题的最大化来开发一种替代的多标签L1-TV最小化算法。我们将多标签对偶解的实验结果与基于图割的最小化方法进行了比较。对于Schlesinger的子梯度算法,我们提出了一种阶跃控制启发式算法,与已知的子梯度算法的步长策略相比,该算法在速度和精度上都有显著提高。该配准算法易于并行化,因为动态规划使函数沿水平方向最大化。垂直网格线独立于沿任何其他水平(例如)的最大化。垂直网格线。我们已经在酷睿四核或酷睿双核pc和CUDA图形处理单元上实现了它,从而大大加快了计算速度。
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