首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Fusion of LiDAR Orthowaveforms and Hyperspectral Imagery for Shallow River Bathymetry and Turbidity Estimation
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Fusion of LiDAR Orthowaveforms and Hyperspectral Imagery for Shallow River Bathymetry and Turbidity Estimation

机译:LiDAR正交波形与高光谱影像的融合,用于浅河测深和浊度估算

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摘要

We propose an approach to voxelize bathymetric full-waveform LiDAR (Light Detection and Ranging) to generate orthowaveforms and use them to estimate shallow water bathymetry and turbidity with a nonparametric support vector regression (SVR) method. Two distinct shallow rivers were investigated ranging from clear to turbid water; hyperspectral imagery and traditional full-waveform LiDAR processing were also investigated as a baseline for comparison with the proposed orthowaveform strategy. The orthowaveform showed significant correlation to water depth in both scenarios and outperformed hyperspectral imagery for water depth estimation in more turbid water. The orthowaveforms showed similar performance to full-waveform LiDAR point observations for bathymetry estimation in clear water and outperformed the bathymetry performance of full-waveform processing in turbid water. The orthowaveforms also showed similar performance to hyperspectral imagery for predicting water turbidity in turbid water, with a root mean square error (RMSE) of 1.32 NTU. The fusion of both hyperspectral imagery and orthowaveforms was also investigated and gave superior performance to using either data set alone. The fused data set was able to estimate depth in clear and turbid water with an RMSE of 10 and 21 cm, respectively, and turbidity with an RMSE of 1.16 NTU.
机译:我们提出了一种方法来对测深全波形LiDAR(光检测和测距)进行体素化以生成正交波形,并通过非参数支持向量回归(SVR)方法将其用于估算浅水测深和浊度。从清水到浑水,研究了两条截然不同的浅河。高光谱影像和传统的全波形LiDAR处理也作为基线与所提出的正交波形策略进行了比较。在两种情况下,正交波形均显示出与水深的显着相关性,而对于更浑浊的水中的水深估计,正交波形表现优于高光谱图像。在清澈的水中,正交波形显示出与全波形LiDAR点观测值相似的性能,以进行测深法估算,并且在浑浊的水中,其表现优于全波形处理的测深仪性能。正交波形还显示出与高光谱图像相似的性能,可预测浑浊水中的水浊度,均方根误差(RMSE)为1.32 NTU。还研究了高光谱图像和正弦波形的融合,并给出了优于单独使用任一数据集的优异性能。融合后的数据集能够分别在10 cm和21 cm的RMSE下估计清澈和浑浊水中的深度,以及在1.16 NTU的RMSE下估计浑浊度。

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