首页> 外文会议>Conference on Computational Imaging; 20080128-29; San Jose,CA(US) >Regularized Estimation of Stokes Images from Polarimetric Measurements
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Regularized Estimation of Stokes Images from Polarimetric Measurements

机译:通过极化测量对斯托克斯图像进行正则估计

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In the remote sensing context the goal of imaging polarimetry is to map the state of polarization of a scene of interest. The polarization state of a scene can be represented by the Stokes parameters. Since the Stokes parameters are not directly measurable one must first make several individual measurements and then the infer the Stokes parameters. We approach the Stokes parameter construction problem using penalized-likelihood estimation. Given the measured linearly polarized images, what is the optimal means by which to deblur and denoise and construct the Stokes parameters? In traditional image restoration one attempts to restore the blurred and noise corrupted data directly. In the case of imaging polarimetry we must answer the question of the optimality of restoring the measured data and then forming the Stokes images or restoring the Stokes images directly. An alternative approach is to estimate the Stokes parameters directly. We define our cost function for reconstruction by a weighted least squares data fit penalty and a regularization penalty. We show that for quadratic regularization the estimators of Stokes and intensity images can be made equal by appropriate choice of regularization parameters. It is empirically shown that, when using edge preserving regularization, estimating Stokes parameters directly leads to somewhat lower error.
机译:在遥感方面,成像偏振法的目标是映射感兴趣场景的偏振状态。场景的偏振状态可以由Stokes参数表示。由于无法直接测量斯托克斯参数,因此必须首先进行几次单独的测量,然后再推断斯托克斯参数。我们使用惩罚似然估计来处理斯托克斯参数构造问题。给定测得的线性偏振图像,对Stokes参数进行去模糊,去噪和构造的最佳方法是什么?在传统的图像恢复中,人们试图直接恢复模糊和噪声破坏的数据。在成像偏振计的情况下,我们必须回答以下问题:恢复测量数据的最佳性,然后形成斯托克斯图像或直接恢复斯托克斯图像。另一种方法是直接估计斯托克斯参数。我们通过加权最小二乘数据拟合罚分和正则化罚分来定义用于重建的成本函数。我们表明,对于二次正则化,可以通过适当选择正则化参数来使斯托克斯和强度图像的估计量相等。根据经验表明,当使用边缘保留正则化时,估计斯托克斯参数将直接导致较低的误差。

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