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An algebraic restoration method for estimating fixed-pattern noise in infrared imagery from a video sequence

机译:一种从视频序列估计红外图像中固定模式噪声的代数恢复方法

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The inherent nonuniformity in the photoresponse and readout-circuitry of the individual detectors in infrared focal-plane-array imagers result in the notorious fixed-pattern noise (FPN). FPN generally degrades the performance of infrared imagers and it is particularly problematic in the midwavelength and longwavelength infrared regimes. In many applications, employing signal-processing techniques to combat FPN may be preferred over hard calibration (e.g., two-point calibration), as they are less expensive and, more importantly, do not require halting the operation of the camera. In this paper, a new technique that uses knowledge of global motion in a video sequence to restore the true scene in the presence of FPN is introduced. In the proposed setting, the entire video sequence is regarded as an output of a motion-dependent linear transformation, which acts collectively on the true scene and the unknown bias elements (which represent the FPN) in each detector. The true scene is then estimated from the video sequence according to a minimum mean-square-error criterion. Two modes of operation are considered. First, we consider non-radiometric restoration, in which case the true scene is estimated by performing a regularized minimization, since the problem is ill-posed. The other mode of operation is radiometric, in which case we assume that only the perimeter detectors have been calibrated. This latter mode does not require regularization and therefore avoids compromising the radiometric accuracy of the restored scene. The algorithm is demonstrated through preliminary results from simulated and real infrared imagery.
机译:红外焦平面阵列成像器中各个检测器的光响应和读出电路固有的不均匀性会导致臭名昭著的固定模式噪声(FPN)。 FPN通常会降低红外成像仪的性能,这在中波长和长波长红外条件下尤其成问题。在许多应用中,与硬校准(例如,两点校准)相比,采用信号处理技术来对抗FPN可能更可取,因为它们更便宜,并且更重要的是,不需要停止照相机的操作。在本文中,介绍了一种新技术,该技术利用视频序列中的全局运动知识在FPN存在的情况下还原真实场景。在建议的设置中,将整个视频序列视为与运动有关的线性变换的输出,该线性变换共同作用于每个探测器中的真实场景和未知偏置元素(代表FPN)。然后根据最小均方误差标准从视频序列估计真实场景。考虑了两种操作模式。首先,我们考虑非辐射恢复,在这种情况下,由于问题不适当,因此通过执行规则化的最小化来估计真实场景。另一种操作模式是辐射测量,在这种情况下,我们假设只有周界检测器已经过校准。后一种模式不需要正规化,因此可以避免损害恢复场景的辐射精确度。通过模拟和真实红外图像的初步结果证明了该算法。

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