SATELLITE-DERIVED BATHYMETRY USING RANDOM FOREST ALGORITHM AND WORLDVIEW-2 IMAGERY

M. D. Manessa, A. Kanno, M. Sekine, Muhammad Haidar, Koichi Yamamoto, T. Imai, T. higuchi
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引用次数: 49

Abstract

In empirical approach, the satellite-derived bathymetry (SDB) is usually derived from a linear regression. However, the depth variable in surface reflectance has a more complex relation. In this paper, a methodology was introduced using a nonlinear regression of Random Forest (RF) algorithm for SDB in shallow coral reef water. Worldview-2 satellite images and water depth measurement samples using single beam echo sounder were utilized. Furthermore, the surface reflectance of six visible bands and their logarithms were used as an input in RF and then compared with conventional methods of Multiple Linear Regression (MLR) at ten times cross validation. Moreover, the performance of each possible pair from six visible bands was also tested. Then, the estimated depth from two methods and each possible pairs were evaluated in two sites in Indonesia: Gili Mantra Island and Panggang Island, using the measured bathymetry data. As a result, for the case of all bands used the RF in compared with MLR showed better fitting ensemble, -0.14 and -1.27m of RMSE and 0.16 and 0.47 of R 2 improvement for Gili Mantra Islands and Panggang Island, respectively. Therefore, the RF algorithm demonstrated better performance and accuracy compared with the conventional method. While for best pair identification, all bands pair wound did not give the best result. Surprisingly, the usage of green, yellow, and red bands showed good water depth estimation accuracy.
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使用随机森林算法和世界观-2图像的卫星衍生测深
在经验方法中,卫星测深(SDB)通常是由线性回归得到的。然而,地表反射率的深度变量之间的关系更为复杂。本文介绍了一种基于随机森林非线性回归算法的浅层珊瑚礁水SDB反演方法。利用Worldview-2卫星图像和单波束测深仪水深测量样本。以6个可见光波段的表面反射率及其对数作为射频输入,并与传统的多元线性回归(MLR)方法进行10次交叉验证。此外,还测试了六个可见波段中每个可能对的性能。然后,利用实测测深数据,在印度尼西亚的Gili Mantra岛和Panggang岛两个地点对两种方法和每种可能组合的估计深度进行了评估。结果表明,与MLR相比,使用RF的所有波段的拟合效果更好,吉利曼陀罗岛和Panggang岛的RMSE分别提高了-0.14和-1.27m, r2分别提高了0.16和0.47 m。因此,与传统方法相比,射频算法具有更好的性能和精度。而对于最佳对鉴定,并非所有条带对缠绕都能得到最佳结果。令人惊讶的是,使用绿色、黄色和红色波段显示出良好的水深估计精度。
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来源期刊
Geoplanning Journal of Geomatics and Planning
Geoplanning Journal of Geomatics and Planning Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
1.00
自引率
0.00%
发文量
5
审稿时长
4 weeks
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