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Adaptive nonuniformity correction for IRFPA sensors based on neural network framework

机译:基于神经网络框架的IRFPA传感器自适应非均匀性校正

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摘要

For infrared focal plane array sensors, imagery is degraded during signal acquisition, particularly nonuniformity. In this paper, an adaptive nonuniformity correction technique is proposed which simultaneously estimates detector-level and readout-channel-level correction parameters using neural network approaches. Firstly, an improved neural network framework is designed to compute the desired output. Secondly, an adaptive learning rate rule is used in the gain and offset parameter estimation process. Experimental results show the proposed algorithm can achieve a faster convergence speed and better stability, remove nonuniformity and track parameters drift effectively, and present a good adaptability to scene changes and nonuniformity conditions.
机译:对于红外焦平面阵列传感器,在信号采集过程中图像质量会下降,尤其是不均匀性。在本文中,提出了一种自适应非均匀性校正技术,该技术同时使用神经网络方法估计检测器级别和读出通道级别的校正参数。首先,设计了一种改进的神经网络框架来计算所需的输出。其次,在增益和偏移参数估计过程中使用自适应学习率规则。实验结果表明,该算法可以达到较快的收敛速度和较好的稳定性,可以有效地消除不均匀性和跟踪参数漂移,对场景变化和不均匀性条件具有良好的适应性。

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