Fang Hai-Tao, Huang De-Shuang, Wu Yong-Hua
Hefei Institute of Intelligent Machines, Chinese Academy of Sciences, Hefei 230031, China.
Appl Opt. 2005 Feb 20;44(6):1077-83. doi: 10.1364/ao.44.001077.
We propose a new, to our knowledge, denoising method for lidar signals based on a regression model and a wavelet neural network (WNN) that permits the regression model not only to have a good wavelet approximation property but also to make a neural network that has a self-learning and adaptive capability for increasing the quality of lidar signals. Specifically, we investigate the performance of the WNN for antinoise approximation of lidar signals by simultaneously addressing simulated and real lidar signals. To clarify the antinoise approximation capability of the WNN for lidar signals, we calculate the atmosphere temperature profile with the real signal processed by the WNN. To show the contrast, we also demonstrate the results of the Monte Carlo moving average method and the finite impulse response filter. Finally, the experimental results show that our proposed approach is significantly superior to the traditional methods.
据我们所知,我们提出了一种基于回归模型和小波神经网络(WNN)的新型激光雷达信号去噪方法,该方法使回归模型不仅具有良好的小波逼近特性,还使神经网络具有自学习和自适应能力,以提高激光雷达信号的质量。具体而言,我们通过同时处理模拟和真实激光雷达信号来研究WNN对激光雷达信号的抗噪逼近性能。为了阐明WNN对激光雷达信号的抗噪逼近能力,我们利用WNN处理后的真实信号计算大气温度剖面。为了进行对比,我们还展示了蒙特卡洛移动平均法和有限脉冲响应滤波器的结果。最后,实验结果表明,我们提出的方法明显优于传统方法。