Stage 4 validation of the Satellite Image Automatic Mapper lightweight computer program for Earth observation Level 2 product generation, Part 1 Theory
Andrea Baraldi, Michael Laurence Humber, Dirk Tiede, Stefan Lang

TL;DR
This paper discusses the theoretical foundations of color naming in cognitive science and introduces a hybrid guideline for harmonizing land cover and color dictionaries, supporting the validation of the SIAM program for Earth observation data.
Contribution
It presents a novel hybrid guideline for aligning land cover and color name dictionaries and introduces a quantitative measure for their association, enhancing EO product validation.
Findings
SIAM maps produce a Level 2 SCM product with a 4-class taxonomy.
The hybrid guideline effectively harmonizes land cover and color dictionaries.
Quantitative measure of categorical variable association is introduced.
Abstract
The European Space Agency (ESA) defines an Earth Observation (EO) Level 2 product as a multispectral (MS) image corrected for geometric, atmospheric, adjacency and topographic effects, stacked with its 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 information gap from EO big data to the ESA EO Level 2 product, an original Stage 4 validation (Val) of the Satellite Image Automatic Mapper (SIAM) lightweight computer program was conducted by independent means on an annual Web-Enabled Landsat Data (WELD) image composite time-series of the conterminous U.S. The core of SIAM is a one pass prior knowledge based decision tree for MS reflectance space hyperpolyhedralization into static color names presented in literature in…
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Taxonomy
TopicsRemote-Sensing Image Classification · Remote Sensing in Agriculture · Geochemistry and Geologic Mapping
