Karthick Murugan, Shanmugam Palanisamy, He Xianqiang
Opt Express. 2024 Feb 26;32(5):7659-7681. doi: 10.1364/OE.504088.
Accurate retrieval of the water-leaving radiance from hyperspectral/multispectral remote sensing data in optically complex inland and coastal waters remains a challenge due to the excessive concentrations of phytoplankton and suspended sediments as well as the inaccurate estimation and extrapolation of aerosol radiance over the visible wavelengths. In recent years, reasonably accurate methods were established to estimate the enhanced contribution of suspended sediments in the near-infrared (NIR) and shortwave infrared (SWIR) bands to enable atmospheric correction in coastal waters, but solutions to derive the dominant phytoplankton contribution in the NIR and SWIR bands are less generalizable and subject to large uncertainties in the remotely-derived water color products. These issues are not only associated with the standard atmospheric correction algorithm in the SeaDAS processing system but with the non-traditional algorithms such as POLYMER (POLYnomial-based approach established for the atmospheric correction of MERIS data). This study attempts to enhance the POLYMER algorithm to enable atmospheric correction of hyperspectral and multispectral remote sensing data over a wide range of inland and ocean waters. The original POLYMER algorithm is less suitable owing to its complete reliance on a polynomial approach to model the atmospheric reflectance as a function of the wavelength and retrieve the water-leaving reflectance using two semi-analytical models (MM01 and PR05). The polynomial functions calculate the bulk atmospheric contribution instead of using an explicit method to estimate aerosol radiance separately, resulting the erroneous water color products in inland and coastal waters. The modified POLYMER algorithm (mPOLYMER) employs more realistic approaches to estimate aerosol contributions with a combination of UV and Visible-NIR bands and enables accurate retrievals of water-leaving radiance from both hyperspectral and multispectral remote sensing data. To assess the relative performance and wider applicability of mPOLYMER, the original and enhanced algorithms were tested on a variety of HICO, MSI and MODIS-Aqua data and the retrieved L products were compared with AERONET-OC and OOIL-regional in-situ data. Expectedly, the mPOLYMER algorithm greatly improved the accuracy of L (in terms of magnitude and spectral shape) when applied to MODIS-Aqua and HICO data in highly turbid productive waters (with higher concentrations of phytoplankton or with dense algal blooms) in Muttukadu Lagoon, Lake Erie, Yangtze River Estuary, Baltic Sea and Arabian Sea. In contrast, the original POLYMER algorithm overestimated L in the visible and NIR bands and produced unphysical negative L or distorted L spectra in turbid productive waters. The mPOLYMER yielded a relative mean error reduction of more than 50% (i.e., from 79% to 34%) in L for a large number of matchup data. The improved accuracy and data quality is because the mPOLYMER algorithm's funio and coefficients sufficiently accounted for the enhanced backscattering contribution of phytoplankton and suspended sediments in optically complex waters.
在光学性质复杂的内陆和沿海水域,从高光谱/多光谱遥感数据中准确反演离水辐射率仍然是一项挑战,这是由于浮游植物和悬浮沉积物浓度过高,以及在可见波长范围内气溶胶辐射率的估计和外推不准确所致。近年来,人们建立了合理准确的方法来估算悬浮沉积物在近红外(NIR)和短波红外(SWIR)波段的增强贡献,以便在沿海水域进行大气校正,但在NIR和SWIR波段推导浮游植物主要贡献的解决方案通用性较差,并且在遥感得出的水色产品中存在很大的不确定性。这些问题不仅与SeaDAS处理系统中的标准大气校正算法有关,还与非传统算法(如POLYMER,为MERIS数据的大气校正建立的基于多项式的方法)有关。本研究试图改进POLYMER算法,以便在广泛的内陆和海洋水域对高光谱和多光谱遥感数据进行大气校正。原始的POLYMER算法不太适用,因为它完全依赖多项式方法来模拟大气反射率作为波长的函数,并使用两个半解析模型(MM01和PR05)反演离水反射率。多项式函数计算的是大气的总体贡献,而不是使用明确的方法分别估算气溶胶辐射率,这导致在内陆和沿海水域产生错误的水色产品。改进后的POLYMER算法(mPOLYMER)采用了更现实的方法,结合紫外和可见-近红外波段来估算气溶胶贡献,并能够从高光谱和多光谱遥感数据中准确反演离水辐射率。为了评估mPOLYMER的相对性能和更广泛的适用性,对原始算法和改进算法在各种HICO、MSI和MODIS-Aqua数据上进行了测试,并将反演得到的L产品与AERONET-OC和OOIL区域现场数据进行了比较。不出所料,当mPOLYMER算法应用于穆图卡杜泻湖、伊利湖、长江河口、波罗的海和阿拉伯海等浮游植物浓度较高或有密集藻华的高浑浊富产水域的MODIS-Aqua和HICO数据时,大大提高了L(在量级和光谱形状方面)的准确性。相比之下,原始的POLYMER算法在可见和近红外波段高估了L,并在浑浊富产水域产生了不符合物理规律的负L或扭曲的L光谱。对于大量匹配数据,mPOLYMER使L的相对平均误差降低了50%以上(即从79%降至34%)。精度和数据质量的提高是因为mPOLYMER算法的函数和系数充分考虑了光学性质复杂水域中浮游植物和悬浮沉积物增强的后向散射贡献。