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首页> 外文期刊>Review of Scientific Instruments >Minimization of fixed pattern noise in photon event counting imaging
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Minimization of fixed pattern noise in photon event counting imaging

机译:在光子事件计数成像中最小化固定模式噪声

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Low light-level ultraviolet and optical imaging with a photon counting image intensifier coupled to a charge coupled device camera generally results in varying levels of fixed pattern noise in the image. Here, we demonstrate that this can be minimized by the appropriate choice of photon event centroiding algorithm. We compare the fixed pattern noise generated by a center of gravity centroiding algorithm, a Gaussian centroiding algorithm, and a hybrid centroiding algorithm which uses center of gravity centroiding when one wing is zero, and Gaussian centroiding otherwise. This approach yields the best image quality with a lower fixed pattern noise parameter (9.99) than the sole use of Gaussian centroiding (16.4), and there is no need for a look-up table correction. In addition, the hybrid algorithm also yields maximum detective quantum efficiency by overcoming small pulse centroiding failure associated with Gaussian centroiding. The digitization error when recording the events is modeled with a Monte Carlo simulation and discussed. It is found that a center of gravity algorithm produces not only significant fixed pattern noise, but also pulse height dependent x positions. For a Gaussian centroiding algorithm the x positions are independent of the pulse height, the fixed pattern noise is low and the digitization error only yields a small increase of the fixed pattern noise parameter. This shows that while there is a limit to centroiding accuracy due to the digitization error, the appropriate choice of centroiding algorithm is a much more important factor to minimize fixed pattern noise.
机译:将光子计数图像增强器耦合到电荷耦合器件相机的低光度紫外和光学成像通常会导致图像中出现不同程度的固定图案噪声。在这里,我们证明了这可以通过适当选择光子事件质心算法来最小化。我们比较了重心质心算法、高斯质心算法和混合质心算法产生的固定模式噪声,该算法在一翼为零时使用重心质心,否则使用高斯质心。与单独使用高斯质心(16.4%)相比,这种方法以更低的固定图案噪声参数(9.99%)产生最佳图像质量,并且无需查找表校正。此外,混合算法还通过克服与高斯质心相关的小脉冲质心故障,产生了最大的检测量子效率。使用蒙特卡罗模拟对记录事件时的数字化误差进行建模并进行了讨论。研究发现,重心算法不仅会产生显著的固定模式噪声,还会产生与脉冲高度相关的x位置。对于高斯质心算法,x 位置与脉冲高度无关,固定模式噪声较低,数字化误差仅产生固定模式噪声参数的小幅增加。这表明,虽然由于数字化误差,质心精度受到限制,但适当选择质心算法是最小化固定图案噪声的一个更重要的因素。

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