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Comparative Study of Different Machine Learning Models for Remote Sensing Bathymetry Inversion

机译:不同机器学习模型对遥感沐浴性反演的不同机器学习模型的比较研究

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Water depth is an essential element of oceanographic research and marine surveying. Bathymetry inversion based on remote sensing is a time-effective, low-cost, and wide-coverage solution for shallow sea. Using World-ViewII multi-spectral remote sensing imagery and laser sounding data, Back Propagation neural network model (BP), random forest model (RF) and extreme learning machine model (ELM) were used to inverse water depth Surrounding the Chinese Ganquan island, and the inversion accuracy was compared and evaluated. The results show that among the BP, RF and ELM, the RF has the highest water depth inversion accuracy. The root mean square error (RMSE)of the check point is 0.85, the mean absolute error (MAE) is 0.60, and the mean relative error (MRE) is 3.54%. The coefficient determination R~2 reaches 0.97; within the range of 0-10 m and 15-20 m water depth, the inversion of the ELM is the best; in the range of 10-15 m water depth, the RF has the better inversion effect.
机译:水深是海洋学研究和海洋测量的基本要素。 基于遥感的沐浴术反演是浅海的时间有效,低成本和宽覆盖的解决方案。 使用World-ViewII多光谱遥感图像和激光探测数据,回到传播神经网络模型(BP),随机森林模型(RF)和极端学习机模型(ELM)用于围绕中国甘泉岛的水深, 并进行比较和评估反转精度。 结果表明,在BP,RF和ELM中,RF具有最高的水深反转精度。 检查点的根均方误差(RMSE)为0.85,平均绝对误差(MAE)为0.60,平均相对误差(MRE)为3.54%。 系数测定R〜2达到0.97; 在0-10米和15-20米的水深范围内,榆树的反转是最好的; 在10-15米水深的范围内,RF具有更好的反转效果。

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