Li Yiyang, Jin Weiqi, Zhu Jin, Zhang Xu, Li Shuo
School of Optoelectronics, Beijing Institute of Technology, Key Laboratory of Photo-electronic Imaging Technology and System, Ministry of Education of China, Beijing 100081, China.
Sensors (Basel). 2018 Jan 13;18(1):211. doi: 10.3390/s18010211.
The problems of the neural network-based nonuniformity correction algorithm for infrared focal plane arrays mainly concern slow convergence speed and ghosting artifacts. In general, the more stringent the inhibition of ghosting, the slower the convergence speed. The factors that affect these two problems are the estimated desired image and the learning rate. In this paper, we propose a learning rate rule that combines adaptive threshold edge detection and a temporal gate. Through the noise estimation algorithm, the adaptive spatial threshold is related to the residual nonuniformity noise in the corrected image. The proposed learning rate is used to effectively and stably suppress ghosting artifacts without slowing down the convergence speed. The performance of the proposed technique was thoroughly studied with infrared image sequences with both simulated nonuniformity and real nonuniformity. The results show that the deghosting performance of the proposed method is superior to that of other neural network-based nonuniformity correction algorithms and that the convergence speed is equivalent to the tested deghosting methods.
基于神经网络的红外焦平面阵列非均匀性校正算法的问题主要涉及收敛速度慢和重影伪像。一般来说,对重影的抑制越严格,收敛速度就越慢。影响这两个问题的因素是估计的期望图像和学习率。在本文中,我们提出了一种结合自适应阈值边缘检测和时间门的学习率规则。通过噪声估计算法,自适应空间阈值与校正图像中的残余非均匀性噪声相关。所提出的学习率用于有效且稳定地抑制重影伪像,而不会减慢收敛速度。使用具有模拟非均匀性和真实非均匀性的红外图像序列对所提出技术的性能进行了深入研究。结果表明,所提出方法的去重影性能优于其他基于神经网络的非均匀性校正算法,并且收敛速度与测试的去重影方法相当。