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非二次惩罚改进近红外漫射光学层析成像。

Nonquadratic penalization improves near-infrared diffuse optical tomography.

作者信息

Jagannath Ravi Prasad K, Yalavarthy Phaneendra K

出版信息

J Opt Soc Am A Opt Image Sci Vis. 2013 Aug 1;30(8):1516-23. doi: 10.1364/JOSAA.30.001516.

Abstract

A new approach that can easily incorporate any generic penalty function into the diffuse optical tomographic image reconstruction is introduced to show the utility of nonquadratic penalty functions. The penalty functions that were used include quadratic (ℓ2), absolute (ℓ1), Cauchy, and Geman-McClure. The regularization parameter in each of these cases was obtained automatically by using the generalized cross-validation method. The reconstruction results were systematically compared with each other via utilization of quantitative metrics, such as relative error and Pearson correlation. The reconstruction results indicate that, while the quadratic penalty may be able to provide better separation between two closely spaced targets, its contrast recovery capability is limited, and the sparseness promoting penalties, such as ℓ1, Cauchy, and Geman-McClure have better utility in reconstructing high-contrast and complex-shaped targets, with the Geman-McClure penalty being the most optimal one.

摘要

为了展示非二次惩罚函数的效用,引入了一种能够轻松地将任何通用惩罚函数纳入扩散光学断层图像重建的新方法。所使用的惩罚函数包括二次(ℓ2)、绝对值(ℓ1)、柯西和吉曼-麦克卢尔函数。在每种情况下,正则化参数都是通过使用广义交叉验证方法自动获得的。通过使用相对误差和皮尔逊相关性等定量指标,系统地比较了重建结果。重建结果表明,虽然二次惩罚可能能够在两个紧密间隔的目标之间提供更好的分离,但其对比度恢复能力有限,而诸如ℓ1、柯西和吉曼-麦克卢尔等促进稀疏性的惩罚函数在重建高对比度和复杂形状的目标方面具有更好的效用,其中吉曼-麦克卢尔惩罚函数是最优化的。

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