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Improved Model for Depth Bias Correction in Airborne LiDAR Bathymetry Systems

机译:机载LiDAR测深系统中深度偏差校正的改进模型

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Airborne LiDAR bathymetry (ALB) is efficient and cost effective in obtaining shallow water topography, but often produces a low-accuracy sounding solution due to the effects of ALB measurements and ocean hydrological parameters. In bathymetry estimates, peak shifting of the green bottom return caused by pulse stretching induces depth bias, which is the largest error source in ALB depth measurements. The traditional depth bias model is often applied to reduce the depth bias, but it is insufficient when used with various ALB system parameters and ocean environments. Therefore, an accurate model that considers all of the influencing factors must be established. In this study, an improved depth bias model is developed through stepwise regression in consideration of the water depth, laser beam scanning angle, sensor height, and suspended sediment concentration. The proposed improved model and a traditional one are used in an experiment. The results show that the systematic deviation of depth bias corrected by the traditional and improved models is reduced significantly. Standard deviations of 0.086 and 0.055 m are obtained with the traditional and improved models, respectively. The accuracy of the ALB-derived depth corrected by the improved model is better than that corrected by the traditional model.
机译:机载LiDAR水深测量(ALB)在获得浅水地形方面是高效且具有成本效益的,但由于ALB测量和海洋水文参数的影响,通常会产生低精度的测深解决方案。在测深法估计中,由脉冲拉伸引起的绿色底端返回的峰值偏移会引起深度偏差,这是ALB深度测量中最大的误差源。传统的深度偏差模型通常用于减少深度偏差,但是当与各种ALB系统参数和海洋环境一起使用时,它是不够的。因此,必须建立一个考虑所有影响因素的精确模型。在这项研究中,考虑到水深,激光束扫描角度,传感器高度和悬浮泥沙浓度,通过逐步回归建立了改进的深度偏差模型。实验中使用了提出的改进模型和传统模型。结果表明,通过传统模型和改进模型校正后的深度偏差的系统偏差明显减小。传统模型和改进模型的标准偏差分别为0.086和0.055 m。改进模型校正后的ALB派生深度的精度优于传统模型校正后的精度。

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