Key Laboratory of Instrumentation Science and Dynamic Measurement, Ministry of Education, School of Instrument and Electronics, North University of China, Taiyuan 030051, People's Republic of China.
State Grid Shanxi Electric Power Research Institute, Taiyuan 030051, People's Republic of China.
Rev Sci Instrum. 2021 Nov 1;92(11):113703. doi: 10.1063/5.0056983.
The quality of polarization images is easy to be affected by the noise in the image acquired by a polarization camera. Consequently, a de-noising method optimized with a Pulse Coupled Neural Network (PCNN) for polarization images is proposed for a Field-Programmable Gate Array (FPGA)-based polarization camera in this paper, in which the polarization image de-noising is implemented using an adaptive PCNN improved by Gray Wolf Optimization (GWO) and Bi-Dimensional Empirical Mode Decomposition (BEMD). Unlike other artificial neural networks, PCNN does not need to be trained, but the parameters of PCNN such as the exponential decay time constant, the synaptic junction strength factor, and the inherent voltage constant play a critical influence on its de-noising performance. GWO is able to start optimization by generating a set of random solutions as the first population and saves the optimized solutions of PCNN. In addition, BEMD can decompose a complicated image into different Bi-Dimensional Intrinsic Mode Functions with local stabilized characteristics according to the input source image, and the decomposition result is able to lower the complexity of heavy noise image analysis. Moreover, the circuit in the polarization camera is accomplished by FPGA so as to obtain the polarization image with higher quality synchronously. These two schemes are combined to attenuate different types of noises and improve the quality of the polarization image significantly. Compared with the state-of-the-art image de-noising algorithms, the noise in the polarization image is suppressed effectively by the proposed optimized image de-noising method according to the indices of peak signal-to-noise ratio, standard deviation, mutual information, structural similarity, and root mean square error.
偏振图像的质量很容易受到偏振相机获取的图像噪声的影响。因此,本文针对基于现场可编程门阵列(FPGA)的偏振相机,提出了一种基于脉冲耦合神经网络(PCNN)的偏振图像去噪优化方法,该方法利用灰度狼优化(GWO)和二维经验模态分解(BEMD)改进的自适应 PCNN 实现偏振图像去噪。与其他人工神经网络不同,PCNN 不需要训练,但其参数,如指数衰减时间常数、突触结强度因子和固有电压常数,对其去噪性能起着关键影响。GWO 能够通过生成一组随机解作为初始种群来启动优化,并保存 PCNN 的优化解。此外,BEMD 可以根据输入源图像将复杂图像分解成具有局部稳定特征的不同二维固有模态函数,分解结果能够降低重噪声图像分析的复杂性。此外,偏振相机中的电路由 FPGA 完成,以便同步获得更高质量的偏振图像。这两种方案结合使用,可以衰减不同类型的噪声,显著提高偏振图像的质量。与最先进的图像去噪算法相比,根据峰值信噪比、标准差、互信息、结构相似性和均方根误差等指标,所提出的优化图像去噪方法有效地抑制了偏振图像中的噪声。