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A Framework for Automatic Tuning of System Parameters and Its Use in Image Registration

机译:系统参数自动调整框架及其在图像配准中的应用

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The performance of most segmentation and registration algorithms depends on the values of internal parameters. Most often, these are set empirically. This is a trial-and-error process in which the developer modifies the values in an attempt to improve performance. This is an implicit form of optimization. In this paper, we present a more intuitive and systematic framework for this type of problem. We then use it to estimate optimal parameter values of a common registration problem. We formulate the performance of the registration problem as a function of its internal parameters, and use optimization techniques to search for an optimal value for these parameters. Registration quality is evaluated using a set of training images in which the anatomy of interest was segmented and comparing the overlap between the segmentations as induced by the registration. As a large number of computationally complex registrations are performed during the optimization, a cluster of MPI-enabled computers are used collaboratively to reduce the computation time. We evaluated the proposed method using ten CT images of the liver from five patients, and evaluated three optimization algorithms. The results showed that, compared with the empirical values suggested in the published literature, our technique was able to obtain parameter values that are tuned for particular applications in a more intuitive and systematic way. In addition, the proposed framework can potentially be used to tune system parameter values appropriate for specific input types.
机译:大多数分割和配准算法的性能取决于内部参数的值。通常,这些是根据经验设置的。这是一个反复试验的过程,在此过程中,开发人员修改了这些值以尝试提高性能。这是优化的隐式形式。在本文中,我们为此类问题提供了一个更为直观和系统的框架。然后,我们使用它来估计常见注册问题的最佳参数值。我们将注册问题的性能公式化为其内部参数的函数,并使用优化技术为这些参数搜索最佳值。使用一组训练图像对注册质量进行评估,在该图像中对感兴趣的解剖结构进行了分割,并比较了由注册引起的分割之间的重叠。由于在优化过程中执行了大量计算复杂的注册,因此协同使用了支持MPI的计算机集群以减少计算时间。我们使用来自五位患者的十张肝脏CT图像评估了所提出的方法,并评估了三种优化算法。结果表明,与已发表文献中建议的经验值相比,我们的技术能够以更直观和系统的方式获得针对特定应用进行调整的参数值。另外,提出的框架可以潜在地用于调整适合于特定输入类型的系统参数值。

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