Comparison of Six Empirical Methods for Multispectral Satellite-derived Bathymetry

IF 2 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS Marine Geodesy Pub Date : 2022-10-07 DOI:10.1080/01490419.2022.2132327
Sensen Chu, Liang Cheng, J. Cheng, Xuedong Zhang, Jin-Ming Liu
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引用次数: 2

Abstract

Abstract Satellite-derived bathymetry (SDB), an important technology in marine geodesy, is advantageous because of its wide coverage, low cost, and short revisit cycle. At present, several different kinds of SDB methods exist, and their inversion accuracy is affected by algorithm performance, band selection, and sample distribution, among other factors. But these factors have not been adequately quantified and compared. In the present study, we evaluate the performances and highlight the best scenarios for applying the six classical empirical methods including the log-transformed single band, band ratio (BR), Lyzenga polynomial (LP), support vector regression, third-order polynomial (TOP), and back propagation (BP) neural network. The results reveal that the number of training samples is important for the empirical SDB methods, and the TOP and BP methods need more training samples than other methods. Compared to the robust BR and LP methods, the TOP and BP methods can obtain high accuracy but are severely influenced by incomplete samples. In addition, experiments that prove the local minimum (poor robustness) problem of the BP method exist and cannot be ignored in the bathymetry field. The present study highlights the most suitable method for obtaining reliable SDB results and their applicability.
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多光谱卫星测深的六种经验方法比较
摘要卫星水深测量技术(SDB)是海洋大地测量中的一项重要技术,具有覆盖范围广、成本低、重访周期短等优点。目前存在多种不同的SDB方法,其反演精度受到算法性能、波段选择、样本分布等因素的影响。但这些因素还没有得到充分的量化和比较。在本研究中,我们评估了六种经典经验方法的性能,并重点介绍了应用对数变换单波段、频带比(BR)、Lyzenga多项式(LP)、支持向量回归、三阶多项式(TOP)和反向传播(BP)神经网络的最佳场景。结果表明,对于经验SDB方法来说,训练样本的数量很重要,TOP和BP方法比其他方法需要更多的训练样本。与鲁棒的BR和LP方法相比,TOP和BP方法可以获得较高的精度,但受不完整样本的影响较大。此外,实验证明BP方法存在局部最小值(鲁棒性较差)问题,在测深领域不容忽视。本研究强调了获得可靠SDB结果的最合适方法及其适用性。
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来源期刊
Marine Geodesy
Marine Geodesy 地学-地球化学与地球物理
CiteScore
4.10
自引率
6.20%
发文量
27
审稿时长
>12 weeks
期刊介绍: The aim of Marine Geodesy is to stimulate progress in ocean surveys, mapping, and remote sensing by promoting problem-oriented research in the marine and coastal environment. The journal will consider articles on the following topics: topography and mapping; satellite altimetry; bathymetry; positioning; precise navigation; boundary demarcation and determination; tsunamis; plate/tectonics; geoid determination; hydrographic and oceanographic observations; acoustics and space instrumentation; ground truth; system calibration and validation; geographic information systems.
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