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An Improved Quadrilateral Fitting Algorithm for the Water Column Contribution in Airborne Bathymetric Lidar Waveforms

机译:机载测深激光雷达波形水柱贡献的改进四边形拟合算法

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摘要

In this paper, an improved method based on a mixture of Gaussian and quadrilateral functions is presented to process airborne bathymetric LiDAR waveforms. In the presented method, the LiDAR waveform is fitted to a combination of three functions: one Gaussian function for the water surface contribution, another Gaussian function for the water bottom contribution, and a new quadrilateral function to fit the water column contribution. The proposed method was tested on a simulated dataset and a real dataset, with the focus being mainly on the performance of retrieving bottom response and water depths. We also investigated the influence of the parameter settings on the accuracy of the bathymetry estimates. The results demonstrate that the improved quadrilateral fitting algorithm shows a superior performance in terms of low RMSE and a high detection rate in the water depth and magnitude retrieval. What’s more, compared with the use of a triangular function or the existing quadrilateral function to fit the water column contribution, the presented method retrieved the least noise and the least number of unidentified waveforms, showed the best performance in fitting the return waveforms, and had consistent fitting goodness for all different water depths.
机译:本文提出了一种基于高斯函数和四边形函数混合的改进方法来处理机载测深LiDAR波形。在提出的方法中,将LiDAR波形拟合为三个函数的组合:一个用于水面贡献的高斯函数,另一个用于水底贡献的高斯函数,以及一个适合水柱贡献的新四边形函数。在模拟数据集和真实数据集上对提出的方法进行了测试,重点主要在于检索底部响应和水深的性能。我们还研究了参数设置对测深估算精度的影响。结果表明,改进的四边形拟合算法在水深和水位检索中均具有较低的均方根误差和较高的检出率,具有优越的性能。而且,与使用三角函数或现有的四边形函数来拟合水柱贡献相比,所提出的方法检索到的噪声最少且未识别波形的数量最少,在拟合返回波形方面表现出最佳性能,并且具有对于所有不同的水深,始终如一的贴合度。

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