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An improvement for Scene-Based Nonuniformity Correction of Infrared Image Sequences

机译:基于场景的红外图像序列不均匀校正的一种改进

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Scene-based nonuniformity correction technique for Infrared focal-plane array has been widely concerned as a key technology. However, the existed algorithms are now facing two major problems that is convergence speed and ghosting artifacts. The convergence speed of original constant statistics (CS) method has been demonstrated to be more rapidly than the neural network method but how to reduce ghosting artifacts efficiently is the largest challenge. To solve the ghosting problem, the conventional methods often set a threshold to wipe off the outliers, but the threshold is difficult to choose because it changes complexly for different scene. In this paper, a novel adaptive scene-based nonuniformity correction technique is presented that performs the nonuniformity correction based on CS method. Firstly, an analysis of statistical characteristic in every pixel is taken and the cause of ghosting artifacts is discussed that the underlying distribution does not satisfy the assumptions such as symmetry. For the Gaussian distribution can not describe the statistic property for every pixel's data, a model with mixture distribution is constructed and indicates the different distribution's influence to generate ghosting artifacts. Then, utilizing temporal statistics of infrared image sequences the proposed method applies an alpha-trimmed mean filter to estimate detector parameters instead of the conventional mean filter. The algorithm selects the parameter of the alpha-trimmed mean estimator optimally with minimizing the sample asymptotic variance estimate. Moreover, the alpha-trimmed mean filter is designed to detect the nonsymmetry points and trim out the outlier pixels such as edges or extreme distribution. Finally, the performance of the proposed algorithm is evaluated with infrared image sequences with simulated and real fixed-pattern noise. Compared with other nonuniformity correction techniques, the proposed method inherits the superiority of the CS method that converges rapidly but is more robust and gets little ghosting artifacts. The results of the simulated and the real infrared images experiments show a significantly more reliable ability to compensate for nonuniformity and reducing ghosting artifacts effectively.
机译:基于场景的红外焦平面阵列非均匀性校正技术已作为一种关键技术受到广泛关注。然而,现有的算法现在面临两个主要问题,即收敛速度和重影伪影。已证明原始常数统计(CS)方法的收敛速度比神经网络方法要快,但是如何有效地减少重影伪影是最大的挑战。为了解决重影问题,常规方法通常设置阈值以消除异常值,但是由于对于不同的场景它会复杂地改变,因此难以选择该阈值。本文提出了一种新的基于场景的自适应非均匀性校正技术,该技术基于CS方法进行了非均匀性校正。首先,对每个像素的统计特性进行了分析,并讨论了重影伪影的原因,即底层分布不满足诸如对称性等假设。由于高斯分布无法描述每个像素数据的统计特性,因此构造了一个具有混合分布的模型,并指出了不同分布对生成重影伪影的影响。然后,利用红外图像序列的时间统计数据,所提出的方法代替传统的均值滤波器,应用了alpha修剪的均值滤波器来估计检测器参数。该算法在最小化样本渐近方差估计的情况下,最优选择了alpha修剪的均值估计器的参数。此外,alpha修剪的均值滤波器设计为检测非对称点并修剪掉边缘或极端分布等离群像素。最后,利用具有模拟和真实固定模式噪声的红外图像序列对所提出算法的性能进行了评估。与其他非均匀性校正技术相比,该方法继承了CS方法的优点,该方法收敛迅速,但更鲁棒,并且几乎没有重影伪影。模拟和真实红外图像实验的结果显示出明显更可靠的能力,可以补偿不均匀性并有效减少重影伪影。

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