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A Method for Solving LiDAR Waveform Decomposition Parameters Based on a Variable Projection Algorithm

机译:一种基于可变投影算法求解LIDAR波形分解参数的方法

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Light detection and ranging (LiDAR) is commonly used to create high-resolution maps; however, the efficiency and convergence of parameter estimation are difficult. To address this issue, we evaluated the structural characteristics of received LiDAR signals by decomposing them into Gaussian functions and applied the variable projection algorithm of the separable nonlinear least-squares problem to the process of waveform fitting. First, using a variable projection algorithm, we separated the linear (amplitude) and nonlinear (center position and width) parameters in the Gaussian function model; the linear parameters are expressed with nonlinear parameters by the function. Thereafter, the optimal estimation of the characteristic parameters of the Gaussian function components was transformed into a least-squares problem only comprising nonlinear parameters. Finally, the Levenberg–Marquardt algorithm was used to solve these nonlinear parameters, whereas the linear parameters were calculated simultaneously in each iteration, and the estimation results satisfying the nonlinear least-square criterion were obtained. Five groups of waveform decomposition simulation data and ICESat/GLAS satellite LiDAR waveform data were used for the parameter estimation experiments. During the experiments, for the same accuracy, the separable nonlinear least-squares optimization method required fewer iterations and lesser calculation time than the traditional method of not separating parameters; the maximum number of iterations was reached before the traditional method converged to the optimal estimate. The method of separating variables only required 14 iterations to obtain the optimal estimate, reducing the computational time from 1128?s to 130?s. Therefore, the application of the separable nonlinear least-squares problem can improve the calculation efficiency and convergence speed of the parameter solution process. It can also provide a new method for parameter estimation in the Gaussian model for LiDAR waveform decomposition.
机译:光检测和测距(LIDAR)通常用于创建高分辨率地图;然而,参数估计的效率和收敛性很难。为了解决这个问题,我们通过将它们分解成高斯函数来评估接收的LIDAR信号的结构特征,并将可分离非线性最小二乘问题的可变投影算法应用于波形配件的过程。首先,使用可变投影算法,我们在高斯函数模型中分开了线性(幅度)和非线性(中心位置和宽度)参数;线性参数通过该功能以非线性参数表示。此后,将高斯函数分量的特征参数的最佳估计转换为仅包括非线性参数的最小二乘问题。最后,使用Levenberg-Marquardt算法来解决这些非线性参数,而在每次迭代中同时计算线性参数,并且获得满足非线性最小二乘标准的估计结果。五组波形分解模拟数据和ICESAT / GLAS卫星激光雷达波形数据用于参数估计实验。在实验期间,为了相同的精度,可分离的非线性最小二乘优化方法优化方法比不分离参数的传统方法需要较少的迭代和较小的计算时间;在传统方法融合到最佳估计之前,达到了最大迭代次数。分离变量的方法仅需要14次迭代以获得最佳估计,从1128秒降低到130℃的计算时间。因此,可分离非线性最小二乘问题的应用可以提高参数解决方法的计算效率和收敛速度。它还可以为LIDAR波形分解的高斯模型中的参数估计提供一种新方法。

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