Stage 4 validation of the Satellite Image Automatic Mapper lightweight computer program for Earth observation Level 2 product generation, Part 2 Validation

The European Space Agency (ESA) defines an Earth Observation (EO) Level 2 product as a multi-spectral (MS) image corrected for geometric, atmospheric, adjacency and topographic effects, stacked with its data-derived scene classification map (SCM) whose legend includes quality layers such as cloud and cloud-shadow. No ESA EO Level 2 product has ever been systematically generated at the ground segment. To contribute toward filling an analytic and pragmatic information gap from EO big sensory data to the ESA EO Level 2 product, a Stage 4 validation (Val) of an off-the-shelf Satellite Image Automatic Mapper (SIAM) lightweight computer program for prior knowledge-based MS color naming was conducted by independent means. A time-series of annual Web-Enabled Landsat Data (WELD) image composites of the conterminous U.S. (CONUS) was selected as input dataset. The annual SIAM-WELD maps of the CONUS were validated in comparison with the U.S. National Land Cover Data (NLCD) 2006 map. These test and reference maps share the same spatial resolution and spatial extent, but their map legends are not the same and must be harmonized. For the sake of readability this paper is split into two. The previous Part 1 – Theory provided the multidisciplinary background of a priori color naming and proposed, first, an original guideline to identify a categorical variable-pair relationship based on a hybrid (combined deductive and inductive) inference approach; second, an original measure of categorical variable-pair association. The present Part 2 – Validation presents and discusses Stage 4 Val results collected from the test SIAM-WELD map time-series and the reference NLCD map by an original protocol for wall-to-wall thematic map quality assessment without sampling, where the test and reference map legends can differ in agreement with the Part 1. Conclusions are that the SIAM-WELD maps instantiate a Level 2 SCM product whose legend is the Food and Agriculture Organization of the United Nations – Land Cover Classification System (LCCS) taxonomy at the Dichotomous Phase (DP) Level 1 (vegetation/non-vegetation), Level 2 (terrestrial/aquatic) or superior LCCS level.

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