一种从大气顶测量中检索光学浅水底深的便携式算法

遥感学报 Pub Date : 2022-02-03 DOI:10.34133/2022/9831947
Wendian Lai, Z. Lee, Junwei Wang, Yongchao Wang, Rodrigo A. Garcia, Huaguo Zhang
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引用次数: 14

摘要

光学浅水的底部深度(H)可以从多波段图像中检索,其中遥感反射率(Rs)通常用作输入。由于难以消除沿海地区的大气影响,通常情况下,卫星上没有有效的R来检索H。更重要的是,H的经验算法很难移植到新的测量中。在这项研究中,以陆地卫星8号和ICESat-2号的数据为例,我们提出了一种直接从大气层顶部(TOA)数据中检索H的方法。它不仅绕过了纠正气溶胶影响的要求,而且在算法开发中未包括的领域也显示出了很好的可移植性。具体而言,我们在443–2300中使用瑞利校正TOA反射率(ρrc) nm范围作为输入,以及多层感知器(MLPHρrc),用于检索H。ρrc和H(0–25)的匹配点超过78000个 m) 用于训练MLPHρrc,其导致8.8%的平均绝对百分比差(MARD)和0.96的决定系数(R2)。该MLPHρrc进一步应用于未包括在训练阶段的六个区域的Landsat-8数据,生成的MARD和R2值分别为8.3%和0.98。相反,以Rs为输入的传统双波段比值算法产生了31.6%和0.68的MARD和R2值,并且由于大气校正失败,H反演显著减少。这些结果表明MLPHρrc在光学浅水感测H方面的算法可移植性取得了突破。
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A Portable Algorithm to Retrieve Bottom Depth of Optically Shallow Waters from Top-Of-Atmosphere Measurements
Bottom depth (H) of optically shallow waters can be retrieved from multiband imagery, where remote sensing reflectance (Rrs) are commonly used as the input. Because of the difficulties of removing the atmospheric effects in coastal areas, quite often, there are no valid Rrs from satellites for the retrieval of H. More importantly, the empirical algorithms for H are hardly portable to new measurements. In this study, using data from Landsat-8 and ICESat-2 as examples, we present an approach to retrieve H directly from the top-of-atmosphere (TOA) data. It not only bypasses the requirement to correct the effects of aerosols but also shows promising portability to areas not included in algorithm development. Specifically, we use Rayleigh-corrected TOA reflectance (ρrc) in the 443–2300 nm range as input, along with a multilayer perceptron (MLPHρrc), for the retrieval of H. More than 78,000 matchup points of ρrc and H (0–25 m) were used to train MLPHρrc, which resulted in a Mean Absolute Percentage Difference (MARD) of 8.8% and a coefficient of determination (R2) of 0.96. This MLPHρrc was further applied to Landsat-8 data of six regions not included in the training phase, generating MARD and R2 values of 8.3% and 0.98, respectively. In contrast, a conventional two-band ratio algorithm with Rrs as the input generated MARD and R2 values of 31.6% and 0.68 and significantly fewer H retrievals due to failures in atmospheric correction. These results indicate a breakthrough of algorithm portability of MLPHρrc in sensing H of optically shallow waters.
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遥感学报
遥感学报 Social Sciences-Geography, Planning and Development
CiteScore
3.60
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0.00%
发文量
3200
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