水深测量
激光雷达
波形
遥感
反演(地质)
均方误差
激光器
地质学
环境科学
计算机科学
光学
数学
电信
物理
地震学
海洋学
统计
构造学
雷达
作者
Xinglei Zhao,Jianfei Gao,Hui Xia,Fengnian Zhou
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2022-12-19
卷期号:22 (24): 10005-10005
被引量:2
摘要
In addition to depth measurements, airborne LiDAR bathymetry (ALB) has shown usefulness in suspended sediment concentration (SSC) inversion. However, SSC retrieval using ALB based on waveform decomposition or near-water-surface penetration by green lasers requires access to full-waveform data or infrared laser data, which are not always available for users. Thus, in this study we propose a new SSC inversion method based on the depth bias of ALB. Artificial neural networks were used to build an empirical inversion model by connecting the depth bias and SSC. The proposed method was verified using an ALB dataset collected through Optech coastal zone mapping and imaging LiDAR systems. The results showed that the mean square error of the predicted SSC based on the empirical model of ALB depth bias was less than 2.564 mg/L in the experimental area. The proposed method was compared with the waveform decomposition and regression methods. The advantages and limits of the proposed method were analyzed and summarized. The proposed method can effectively retrieve SSC and only requires ALB-derived and sonar-derived water bottom points, eliminating the dependence on the use of green full-waveforms and infrared lasers. This study provides an alternative means of conducting SSC inversion using ALB.
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