Phytoplankton pigment absorption data from algal-bloom-dominated waters are highly desirable to better understand the primary productivity and carbon uptake by algal biomass in a regional scale. However, retrieving phytoplankton pigment absorption coefficients, in turbid and hypereutrophic waters, from above-surface remote sensing reflectance
is often challenging because of the optical complexity of the water body. In this paper, a quasi-analytical algorithm has been parameterized using in situ data to retrieve inherent optical properties from
in highly turbid productive aquaculture ponds, where the phytoplankton absorption coefficient (3.44–37.67
) contributes
54
of the total absorption at 443 nm (4.99–47.21
). The model was validated using an independent data set by comparing the model-derived optical parameters with in situ measured values. The absolute percentage error (assuming no error in the in situ measurements) of the estimated total absorption coefficient
varied from 15.22
to 24.13
within 413–665 nm, and the overall average error was 19.87
. Maximum and minimum errors occurred at 443 and 665 nm, respectively. Similarly, the percentage error for the phytoplankton absorption coeffi- ient
varied from 15.9
to 41.27
within the 413–665-nm range, and the average error was 27.24
. The spectral shape of modeled
matched very well
with the measured
. A supplementary method was also developed to retrieve first-order estimates of colored detrital matter absorption coefficients
from subsurface remote sensing reflectance
using an empirical approach. Results reveal that the retrieval accuracy of
improved after incorporating the first-order estimates of
in the algorithm.