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Adaptive neural network non-uniformity correction based on edge detection

机译:基于边缘检测的自适应神经网络非均匀性校正

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The fixed pattern noise (FPN) of the infrared focal plane array severely limits the system performance, and the non-uniformity correction algorithm is a key technique of thermal imaging system. The scene-based non-uniformity correction algorithm does not require a shutter to block the field of view, but utilizes the scene information of image sequences to calculate the infrared focal plane array non-uniformity parameters. This paper introduces an improved neural network non-uniformity correction algorithm, which speeds up the convergence rate of the conventional neural network algorithm. The improved algorithm employs the edge detection method to overcome the ghosting artifacts generated by the conventional algorithm. In the test of infrared image sequences, the algorithm introduced in this paper is proved to be reasonable and effective‥
机译:红外焦平面阵列的固定模式噪声(FPN)严重限制了系统性能,非均匀性校正算法是热成像系统的关键技术。基于场景的非均匀性校正算法不需要快门来遮挡视场,而是利用图像序列的场景信息来计算红外焦平面阵列的非均匀性参数。本文介绍了一种改进的神经网络非均匀性校正算法,可以提高传统神经网络算法的收敛速度。改进的算法采用边缘检测方法来克服常规算法产生的重影伪影。在红外图像序列测试中,证明了本文提出的算法是合理有效的‥

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