Regularization by denoising (RED) is a broadly applicable framework for solving inverse problems by using priors specified as denoisers. While RED has been shown to provide state-of-the-art performance in a number of applications, existing RED algorithms require exact knowledge of the measurement operator characterizing the imaging system, limiting their applicability in problems where the measurement operator has parametric uncertainties. We propose a new method, called Calibrated RED (Cal-RED), that enables joint calibration of the measurement operator along with reconstruction of the unknown image. Cal-RED extends the traditional RED methodology to imaging problems that require the calibration of the measurement operator. We validate Cal-RED on the problem of image reconstruction in computerized tomography (CT) under perturbed projection angles. Our results corroborate the effectiveness of Cal-RED for joint calibration and reconstruction using pre-trained deep denoisers as image priors.
翻译:RED是一个广泛适用的框架,用于通过使用作为缩水器的前科解决反向问题。虽然RED显示在一些应用中提供最先进的性能,但现有的RED算法要求精确了解成象系统特征的测量操作员,限制其在测量操作员有参数不确定性的问题中的适用性。我们提出了一个名为校准RED(Cal-RED)的新方法,使测量操作员能够与重建未知图像一起进行联合校准。Cal-RED将传统的RED方法扩大到需要测量操作员校准的成像问题。我们验证Cal-RED在受渗透的投影角度下对计算机化成像学(CT)图像重建的问题。我们的结果证实了CAL-RED在联合校准和重建方面的有效性,用预先训练的深底基岩仪作为图像前科。