Lee Z, Carder K L, Mobley C D, Steward R G, Patch J S
Department of Marine Science, University of South Florida, St. Petersburg, Florida 33701, USA.
Appl Opt. 1999 Jun 20;38(18):3831-43. doi: 10.1364/ao.38.003831.
In earlier studies of passive remote sensing of shallow-water bathymetry, bottom depths were usually derived by empirical regression. This approach provides rapid data processing, but it requires knowledge of a few true depths for the regression parameters to be determined, and it cannot reveal in-water constituents. In this study a newly developed hyperspectral, remote-sensing reflectance model for shallow water is applied to data from computer simulations and field measurements. In the process, a remote-sensing reflectance spectrum is modeled by a set of values of absorption, backscattering, bottom albedo, and bottom depth; then it is compared with the spectrum from measurements. The difference between the two spectral curves is minimized by adjusting the model values in a predictor-corrector scheme. No information in addition to the measured reflectance is required. When the difference reaches a minimum, or the set of variables is optimized, absorption coefficients and bottom depths along with other properties are derived simultaneously. For computer-simulated data at a wind speed of 5 m/s the retrieval error was 5.3% for depths ranging from 2.0 to 20.0 m and 7.0% for total absorption coefficients at 440 nm ranging from 0.04 to 0.24 m(-1). At a wind speed of 10 m/s the errors were 5.1% for depth and 6.3% for total absorption at 440 nm. For field data with depths ranging from 0.8 to 25.0 m the difference was 10.9% (R2 = 0.96, N = 37) between inversion-derived and field-measured depth values and just 8.1% (N = 33) for depths greater than 2.0 m. These results suggest that the model and the method used in this study, which do not require in situ calibration measurements, perform very well in retrieving in-water optical properties and bottom depths from above-surface hyperspectral measurements.
在早期对浅水测深的被动遥感研究中,海底深度通常通过经验回归得出。这种方法能实现快速的数据处理,但它需要一些真实深度的信息来确定回归参数,并且无法揭示水中成分。在本研究中,一种新开发的用于浅水的高光谱遥感反射率模型被应用于计算机模拟数据和实地测量数据。在此过程中,遥感反射率光谱由一组吸收、后向散射、海底反照率和海底深度值进行建模;然后将其与测量光谱进行比较。通过在预测 - 校正方案中调整模型值,使两条光谱曲线之间的差异最小化。除了测量的反射率外,不需要其他信息。当差异达到最小值或变量集被优化时,吸收系数、海底深度以及其他属性会同时得出。对于风速为5米/秒的计算机模拟数据,深度在2.0至20.0米范围内时,反演误差为5.3%;440纳米处总吸收系数在0.04至0.24米⁻¹范围内时,误差为7.0%。风速为10米/秒时,深度误差为5.1%,440纳米处总吸收误差为6.3%。对于深度在0.8至25.0米的实地数据,反演得出的深度值与实地测量深度值之间的差异为10.9%(R² = 0.96,N = 37);对于深度大于2.0米的数据,差异仅为8.1%(N = 33)。这些结果表明,本研究中使用且无需现场校准测量的模型和方法,在从水面以上高光谱测量中反演水中光学属性和海底深度方面表现良好。