Alcantara, Enner [UNESP]Andrade, Caroline Pilfer de [UNESP]Gomes, Ana Carolina [UNESP]Bernardo, Nariane [UNESP]Carmo, Alisson Fernando [UNESP]Rodrigues, ThananWatanabe, Fernanda [UNESP]IEEE2019-10-042019-10-042018-01-01Igarss 2018 - 2018 Ieee International Geoscience And Remote Sensing Symposium. New York: Ieee, p. 9300-9303, 2018.2153-6996http://hdl.handle.net/11449/185095Remote sensing can be a powerful tool for long-teen spatial and temporal water quality monitoring if proper sets of algorithms are available. To estimate optically significant substances (OSS) by satellite images the water-leaving reflectance (pw) must be accurately estimated because it is directly related to the inherent optical properties (IOPs). For an accurate pw an effective atmospheric correction method must be used to remote the contribution of the atmospheric path radiance. The C2RCC processor has a set of algorithms capable of reduce the atmospheric path radiance, estimate the IOPs and then the OSS concentrations. But, the C2RCC was only tested using OL Cl/Sentine1-3 images for coastal areas, therefore, is of huge importance to know about their accuracy for inland waters. The results showed that the pw (with errors from 26.57 to 97.48%), IOPs (with errors from 39.77 to 99.90%) and OSS concentrations (with errors from 49.29 to 148.40%) estimated by C2RCC have no correlation with in situ data. For a long-teen use of OL Cl/Sentine1-3 images researchers must try to use another atmospheric correction and IOPs estimation methods when studying inland waters.9300-9303engSentinel-3C2RCCinland waterIOPsPERFORMANCE ANALYSIS OF THE C2RCC PROCESSOR IN ESTIMATE THE WATER QUALITY PARAMETERS IN INLAND WATERS USING OLCl/SENTINEL-3A IMAGESTrabalho apresentado em eventoWOS:000451039808214Acesso aberto66913103944104900000-0002-8077-2865