Data di Pubblicazione:
2021
Abstract:
Retrieval of aquatic biogeochemical variables, such as the near-surface concentration of
chlorophyll-a (Chla) in inland and coastal waters via remote observations, has long been
regarded as a challenging task. This manuscript applies Mixture Density Networks (MDN)
that use the visible spectral bands available by the Operational Land Imager (OLI) aboard
Landsat-8 to estimate Chla. We utilize a database of co-located in situ radiometric and
Chla measurements (N 4,354), referred to as Type A data, to train and test an MDN
model (MDNA). This algorithm's performance, having been proven for other satellite
missions, is further evaluated against other widely used machine learning models (e.g.,
support vector machines), as well as other domain-specific solutions (OC3), and shown to
offer significant advancements in the field. Our performance assessment using a held-out
test data set suggests that a 49% (median) accuracy with near-zero bias can be achieved
via the MDNA model, offering improvements of 20 to 100% in retrievals with respect to
other models. The sensitivity of the MDNA model and benchmarking methods to
uncertainties from atmospheric correction (AC) methods, is further quantified through a
semi-global matchup dataset (N 3,337), referred to as Type B data. To tackle the
increased uncertainties, alternative MDN models (MDNB) are developed through various
features of the Type B data (e.g., Rayleigh-corrected reflectance spectra ?s). Using heldout data, along with spatial and temporal analyses, we demonstrate that these alternative
models show promise in enhancing the retrieval accuracy adversely influenced by the AC
process. Results lend support for the adoption of MDNB models for regional and potentially
global processing of OLI imagery, until a more robust AC method is developed. Index
Terms--Chlorophyll-a, coastal water, inland water, Landsat-8, machine learning, ocean
color, aquatic remote sensing.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Landsat; machin learning; aquatic remote sensing; coastal; lakes; Chlorophyll-a
Elenco autori:
Giardino, Claudia; Bresciani, Mariano
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