Torres Sergio N, Hayat Majeed M
Department of Electrical Engineering, University of Concepcion, Concepcion, Chile.
J Opt Soc Am A Opt Image Sci Vis. 2003 Mar;20(3):470-80. doi: 10.1364/josaa.20.000470.
A novel statistical approach is undertaken for the adaptive estimation of the gain and bias nonuniformity in infrared focal-plane array sensors from scene data. The gain and the bias of each detector are regarded as random state variables modeled by a discrete-time Gauss-Markov process. The proposed Gauss-Markov framework provides a mechanism for capturing the slow and random drift in the fixed-pattern noise as the operational conditions of the sensor vary in time. With a temporal stochastic model for each detector's gain and bias at hand, a Kalman filter is derived that uses scene data, comprising the detector's readout values sampled over a short period of time, to optimally update the detector's gain and bias estimates as these parameters drift. The proposed technique relies on a certain spatiotemporal diversity condition in the data, which is satisfied when all detectors see approximately the same range of temperatures within the periods between successive estimation epochs. The performance of the proposed technique is thoroughly studied, and its utility in mitigating fixed-pattern noise is demonstrated with both real infrared and simulated imagery.
采用一种新颖的统计方法,从场景数据中自适应估计红外焦平面阵列传感器的增益和偏置不均匀性。每个探测器的增益和偏置被视为由离散时间高斯 - 马尔可夫过程建模的随机状态变量。所提出的高斯 - 马尔可夫框架提供了一种机制,用于捕捉随着传感器的操作条件随时间变化,固定模式噪声中的缓慢随机漂移。在掌握每个探测器增益和偏置的时间随机模型的情况下,推导了一种卡尔曼滤波器,该滤波器使用场景数据(包括在短时间内采样的探测器读出值),在这些参数漂移时最优地更新探测器的增益和偏置估计。所提出的技术依赖于数据中的特定时空分集条件,当所有探测器在连续估计周期之间的时间段内看到大致相同的温度范围时,该条件得到满足。对所提出技术的性能进行了深入研究,并通过真实红外图像和模拟图像证明了其在减轻固定模式噪声方面的效用。