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A Novel Error Metric for Parametric Fitting of Point Spread Functions

机译:点扩散函数的参数拟合的新型误差度量

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Established work in the literature has demonstrated that with accurate knowledge of the corresponding blur kernel (or point spread function, PSF), an unblurred prior image can be reliably estimated from one or more blurred observations. It has also been demonstrated, however, that an incorrect PSF specification leads to inaccurate image restoration. In this paper, we present a novel metric which relates the discrepancy between a known PSF and a choice of approximate PSF, and the resulting effect that this discrepancy will have on the reconstruction of an unblurred image. Such a metric is essential to the accurate development and application of a parameterized PSF model. Several error measures are proposed, which quantify the inaccuracy of image deblurring using a particular incorrect PSF. Using a set of simulation results, it is shown that the desired metric is feasible even without specification of the unblurred prior image or the radiometric response of the camera. It is also shown that the proposed metric accurately and reliably predicts the resulting deblurring error from the use of an approximate PSF in place of an exact PSF.
机译:在文献中建立的工作已经证明,通过准确地了解相应的模糊内核(或点扩散功能,PSF),可以从一个或多个模糊的观察结果可靠地估计未欺负的先前图像。然而,还证明了不正确的PSF规范导致图像恢复不准确。在本文中,我们提出了一种新的度量,其涉及已知的PSF和近似PSF的选择之间的差异,以及该差异将对未欺负图像的重建的产生效果。这种度量对准确的开发和应用是必不可少的参数化PSF模型。提出了几种误差措施,这使得使用特定不正确的PSF量化图像去孔的不准确性。使用一组模拟结果,表明即使在没有针对相机的未结合的先前图像或辐射算率响应的情况下也是可行的所需度量。还示出了所提出的度量准确且可靠地预测使用近似PSF代替精确的PSF的产生的去孔误差。

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